frontiers in Oncology
Check for updates
OPEN ACCESS
Edited by: Gelina Kopeina, Lomonosov Moscow State University, Russia
Reviewed by:
Mantang Qiu, Peking University People’s Hospital, China Yongsong Chen, Shantou University, China
*Correspondence: Xiangqing Kong xiangqing_kong@sina.com
Jing Shi shijing5499@jsph.org.cn +These authors have contributed equally to this work
Specialty section:
This article was submitted to Molecular and Cellular Oncology, a section of the journal Frontiers in Oncology Received: 17 November 2020 Accepted: 07 April 2021 Published: 19 May 2021
Citation:
Yang C, Wu T, Zhang J, Liu J, Zhao K, Sun W, Zhou X, Kong X and Shi J (2021) Prognostic and Immunological Role of mRNA ac4C Regulator NAT10 in Pan-Cancer: New Territory for Cancer Research? Front. Oncol. 11:630417.
doi: 10.3389/fonc.2021.630417
Prognostic and Immunological Role of mRNA ac4C Regulator NAT10 in Pan-Cancer: New Territory for Cancer Research?
Chuanxi Yang1,21, Tingting Wu11, Jing Zhang11, Jinhui Liu3, Kun Zhao1, Wei Sun1, Xin Zhou4, Xiangqing Kong1* and Jing Shi1*
1 Department of Cardiology, The First Affiliated Hospital of Nanjing Medical University, Nanjing, China, 2 Department of Cardiology, Yangpu Hospital, Tongji University School of Medicine, Shanghai, China, 3 Department of Gynecology, The First Affiliated Hospital of Nanjing Medical University, Nanjing, China, 4 Department of Oncology, The First Affiliated Hospital of Nanjing Medical University, Nanjing, China
Background: NAT10 (also known as human N-acetyltransferase-like protein) is a critical gene that regulates N4-acetylcytidine formation in RNA, similar to the multiple regulators of N6-methyladenosine. However, the underlying functions and mechanisms of NAT10 in tumor progression and immunology are unclear.
Methods: In this study, we systematically analyzed the pan-cancer expression and correlations of NAT10, using databases including Oncomine, PrognoScan, GEPIA2, and Kaplan-Meier Plotter. The potential correlations of NAT10 with immune infiltration stages and gene marker sets were analyzed using the Tumor Immune Estimation Resource and GEPIA2.
Results: Compared with normal tissues, NAT10 showed higher expression in most cancers based on combined data from TCGA and GTEx. In different datasets, high NAT10 expression was significantly correlated with poor prognosis in adrenocortical carcinoma, head and neck squamous cell carcinoma, liver hepatocellular carcinoma, kidney renal papillary cell carcinoma, and pheochromocytoma and paraganglioma. Moreover, there were significant positive correlations between NAT10 expression and immune infiltrates, including B cells, CD8+ T cells, CD4+ T cells, neutrophils, macrophages, dendritic cells, endothelial cells, and fibroblasts in LIHC. NAT10 expression showed strong correlations with diverse immune marker gene sets in LIHC.
Conclusion: NAT10 expression affects the prognosis of pan-cancer patients and is significantly correlated with tumor immune infiltration. Furthermore, it represents a potential target for cancer therapy.
Keywords: NAT10, prognosis, pan-cancer, tumor infiltration, N4-acetylcytidine
BACKGROUND
RNA modification was first discovered in 1956 by Cohn et al. (1) and Davis et al. (2). In recent years, extensive research in RNA biology has revealed diverse modifications of RNA at the post- transcription stage. More than 100 RNA modifications have been shown to have important roles in regulating RNA stability (3), localization (4), transport, shearing (5), and translation (6). N4- acetylcytidine (ac4C) is considered to be a conservative chemically modified nucleoside on tRNA and rRNA (7). Recently, several studies proved that the presence of ac4C on tRNA, rRNA and mRNA is important for increasing and maintaining the fidelity of protein translation (8-11). Furthermore, studies by Thomale et al. (12) and Liebich et al. (13) found significant increases in modified nucleosides (including ac4C) in the urine of tumor mice and cancer patients. Besides, increased levels of ac4C in urine were observed in colorectal cancer (14), urogenital cancer (15), ovarian epithelial cancer (16), and breast cancer (17). These findings suggest that ac4C is a potential biomarker for cancer.
NAT10 (also known as hALP, human N-acetyltransferase- like protein), which was first reported in 2003, is a protein with histone acetylation activity that can enhance telomerase activity by stimulating transcription of hTERT (18). NAT10 or a homologous enzyme in other species increased the formation of ac4C on tRNA, rRNA, and mRNA, thereby maintaining the accuracy of protein translation and stabilizing the mRNA (11). Tuan et al. first showed that NAT10 was associated with cancer by demonstrating that it could significantly promote cell growth in epithelial ovarian cancer and breast cancer (19, 20). NAT10 also has a potential role in increasing melanogenesis and melanoma growth (21). In addition, high NAT10 expression was found to be related to poor survival in human hepatocellular carcinoma (22) (23), acute myeloid leukemia (24) and to promote colorectal cancer progression by increasing micronuclei (25). These findings suggest that NAT10 has multifaceted functional roles in cancers. Several studies have also shown that levels of ac4C are associated with inflammatory responses (26, 27). However, the underlying functions and
Abbreviations: ACC, adrenalcortical carcinoma; BLCA, bladder urothelial carcinoma; BRCA, breast invasive carcinoma; CCLE, Cancer Cell Line Encyclopedia; CHOL, cholangiocarcinoma; COAD, colon adenocarcinoma; DFI, disease-free interval; DLBC, lymphoid neoplasm diffuse large B-cell lymphoma; DSS, disease-specific survival; ESCA, esophageal carcinoma; GBM, glioblastoma multiforme; GTEx, The Genotype- Tissue Expression; International Cancer Genome Consortium; HNSC, Head and Neck squamous cell carcinoma; KICH, kidney chromophobe; KIRC, kidney renal clear cell carcinoma; KIRP, kidney renal papillary cell carcinoma; LAML, acute myeloid leukemia; LGG, brain lower grade glioma; LIHC, liver hepatocellular carcinoma; LUAD, lung adenocarcinoma; LUSC, lung squamous cell carcinoma; MESO, mesothelioma; MSI, microsatellite instability; OS, overall survival; OV, ovarian serous cystadenocarcinoma; PAAD, pancreatic adenocarcinoma; PCPG, pheochromocytoma and paraganglioma; PD-1, programmed cell death protein 1s; PRAD, prostate adenocarcinoma; READ, rectum adenocarcinoma; ROC, Receive Operating Characteristic; SARC, sarcoma; SKCM, skin cutaneous melanoma; STAD, stomach adenocarcinoma; TCGA, The Cancer Genome Atlas; TGCT, testicular germ cell tumor; THYM, thymoma; TIMER2, Tumor IMmune Estimation Resource; TMB, tumor mutation burden; UCEC, uterine corpus endometrial carcinoma; UVM, uveal melanoma.
mechanisms of NAT10 in tumor progression and tumor immunology remain unclear.
In the current study, we systematically analyzed the pan- cancer expression of NAT10 and its correlations, using databases including Oncomine, PrognoScan, GEPIA2, and Kaplan-Meier Plotter. We then investigated the potential correlations of NAT10 with immune infiltration stages using the Tumor Immune Estimation Resource2 (TIMER2) and GEPIA2. The findings from our study indicate that NAT10 expression affects the prognosis of pan-cancer patients as well as being significantly correlated with tumor-immune infiltration. Furthermore, it may serve as a potential target for cancer therapies.
MATERIALS AND METHODS
Ethics Approval
Ten paired human para-tumor and tumor tissue samples were obtained from newly diagnosed Liver hepatocellular carcinoma in the First Affiliated Hospital of Nanjing Medical University (Nanjing, China). The tissues were stored in the fridge at -80℃. The study was conducted with the approval of the Institutional Review Board and the Ethics Committee of the First Affiliated Hospital of Nanjing Medical University (ID: 2017-SRFA-104).
Data Mining for NAT10 in Public Databases
First, to investigate the pan-cancer differential expression of NAT10 mRNA, several databases were mined, including: Oncomine (http://www.oncomine.org/resource/login.html) with thresholds of P-value 0.05 and fold change 1.5; The Cancer Genome Atlas (TCGA); the Broad Institute Cancer Cell Line Encyclopedia (CCLE); and GEPIA2 (http://GEPIA2.cancer- pku.cn/). Simply, we search the different expression of NAT10 between tumor and adjacent normal tissues for the TCGA project at “Gene_DE” module of TIMER2 (tumor immune estimation resource, version 2) web (http://TIMER2.cistrome. org). GBM (Glioblastoma multiforme), LAML (Acutemyeloid leukemia), etc., which without normal or with highly limited normal tissues, are using the “Expression analysis -Box Plots” module of the GEPIA2 (Gene Expression Profiling Interactive Analysis, version 2) to get box plots about NAT10 expression between these tumor tissues and the corresponding normal tissues of the GTEx (Genotype -Tissue Expression) database (setting with P-value cutoff = 0.01, log2FC (fold change) cutoff =1, and “Match TCGA normal and GTEx data).
Then, HPA (Human protein atlas) database (http://www. proteinatlas.org/humanproteome/pathology) were used to get the expression of NAT10 in different cells and tissues under physiological conditions. The detailed information about low specificity of NAT10 was stated by “NX (Normalized expression) ≥ 1 in at least one tissue/region/cell type but not elevated in any tissue/region/cell type” which can be found at the link http:// proteinatlas.org//search/NAT10.
In addition, the NAT10 expression transformed to log2 [TPM (Transcripts per million) +1] in different pathological stage
(stage I, stage II, stage III and stage IV) of tumors was showed in violin plots at the “Pathological Stage Plot” module of GEPIA2. Furthermore, the UALCAN portal (http://ualcan.path.uab.edu/ analysis-prot.html) was used to process protein expression analysis of the CPTAC (clinical proteomic tumor analysis consortium) dataset. The expression level of total protein of NAT10 between primary tumor and normal tissues (breast cancer, ovarian cancer, colon cancer, clear cell renal cell carcinoma, uterine corpus endometrial carcinoma and lung adenocarcinoma) was explored by entering “NAT10”.
Survival Analysis in GEPIA2, PrognoScan, and Kaplan-Meier Plotter
Cox regression analysis was performed to test the correlations between NAT10 expression and patients’ overall survival (OS), disease-free survival (DFS), disease-specific survival (DSS), and progression-free survival (PFS) in each cancer type using TCGA in the R environment. PrognoScan (http://dna00.bio.kyutech.ac. jp/PrognoScan-cgi/PrognoScan.cgi) microarray datasets were used to examine the relationships of NAT10 expression levels with prognosis. The threshold was adjusted to Cox P-value < 0.05. GEPIA2, an interactive online platform with information from TCGA and GTEx, was used to assess the effects of NAT10 expression on OS and DFS in each available cancer type (total number = 34). Kaplan-Meier Plotter is a relatively comprehensive online tool that can be used to analyze the effects of 54,675 genes on survival in 21 cancer types. We analyzed the relationships of NAT10 with OS and relapse-free survival (RFS) in liver hepatocellular carcinoma (LIHC), Head and neck squamous cell carcinoma (HNSC), adrenocortical carcinoma (ACC), kidney renal papillary cell carcinoma (KIRP), and pheochromocytoma and paraganglioma (PCPG). Hazard ratios (HRs) with 95% confidence intervals (CIs) and log-rank P-values were calculated.
Correlation Between NAT10 Expression and Immune Status in TIMER2 and GEPIA2
TIMER2, a powerful online platform for the systematic analysis of immune infiltration in abundant cancer types, contains 10,897 samples spanning 32 cancer types from the TCGA database, which can be used to evaluate the diversity of immune infiltration. Therefore, we analyzed NAT10 expression with all six types of immune infiltrates: B cells, CD4+ T cells, CD8+ T cells, neutrophils, macrophages, and dendritic cells (DCs). Correlations between expression levels of NAT10 and tumor purity were also analyzed by using the “Immune- Gene” module.
Furthermore, the correlations between immune cell markers and NAT10 expression were identified using correlation modules in GEPIA2. The gene markers included markers of B cells, CD8+ T cells, follicular helper T cells (Tfh), T-helper 1 (Th1) cells, T-helper 2 (Th2) cells, T-helper 9 (Th9) cells, T-helper 17 (Th17) cells, T-helper 22 (Th22) cells, regulatory T cells (Tregs), exhausted T cells, M1 macrophages, M2 macrophages, tumor- associated macrophages (TAMs), monocytes, natural killer (NK) cells, neutrophils, and DCs. Immune gene markers from R&D systems (https://www.rndsystems.com/cn/resources/cell-
markers/immune-cells) was selected for analyzing. The gene expression level was adjusted with log2 RSEM with x-axis representing NAT10 and y-axis representing immune gene markers. Correlation scores were calculated for LIHC, HNSC, ACC, KIRP, and PCPG with the Spearman method by using scatterplots.
NAT10-Related Gene Enrichment Analysis
To explore the proteins potentially interacting with NAT10, the STRING database (http://string-db.org) which was searched by a single protein name (“NAT10”) and organism (“Homo sapiens”). Furthermore, the following main parameters: meaning of network edges (“evidence”), minimum required interaction score [“Low confluence (0.150)”], max number of interactors to show (“no more than 50 interactors”) and active interaction sources (“experiments”) was set to obtain the available experimentally determined NAT10-binding proteins. Then, by using GEPIA2 with the module of “Similar Gene Detection”, we get the top 100 NAT10-correlated genes which was conducted by all TCGA tumor and normal tissues. Particularly, “correlation analysis” in GEPIA2 was used to perform the Pearson correlation between NAT10 with the top 5 selected genes, and “Gene_Corr” module in TIMER2 was used to supply the heatmap data of the top 5 selected genes. Then, the 100 NAT10-correlated genes and the 50 interactors were subjected to network analyses (https://portal.genego.com) as previous described (28). Pearson correlation analysis was used to determine the associations of proteins with NAT10.
RNA Analysis and Real-Time Quantitative PCR (qRT-PCR)
Total RNA isolation from tissue samples were performed using the RNazol B method and a Qiagen RNeasy kit, according to the manufacturer’s instructions. RNA was reverse transcribed (Applied Biosystems) using random hexamer priming. Real- time qRT-PCR was performed using SYBR Green reagent (Applied Biosystems) and rat-specific primers on the ABI Prism 7500 Sequence Detection system. GAPDH was used as an internal control. The relative gene expression levels were calculated using the 2-A/Ct method (n=10).
Primers for real-time PCR:
NAT10 forward: 5’-ATAGCAGCCACAAACATTCGC-3’,
NAT10 reverse: 5’-ACACACATGCCGAAGGTATTG-3’; GAPDH forward: 5’-GAACGGGAAGCTCACTGG-3’,
GAPDH reverse: 5’-GCCTGCTTCACCACCTTCT-3’.
Immunohistochemistry Staining
Para-tumor and tumor tissue samples were embedded in formalin. Each tissue was cut to 4-um thick and mounted on a glass slide. Dewaxing sections were performed as previously described (29). Endogenous peroxidase activity was inhibited and blocked with 5% bovine serum albumin for 30 min at 37℃. The slices were incubated in anti-NAT10 (1:1000 dilution, 13365-1-AP, Proteintech) overnight at 4℃, washed three times with PBS for 5 min, and then incubated with secondary anti-horseradish peroxide at 37℃ for 30 min. After three more washes with PBS, the slices were visualized in diaminobenzidine
chromogenic solution. Microscopic images were obtained by light microscopy (Carl Zeiss, Oberkochen, Germany).
Statistical Analysis
Low and high NAT10 expression groups were established using normalized NAT10 mRNA expression values from the various datasets, based on P-values determined by t-tests. The Spearman correlation test was used to assess the correlations between NAT10 expression and targets of interest, including neoantigens, tumor mutational burden (TMB), and microsatellite instability (MSI). We used log-rank tests to calculate HRs and log-rank P-values in Kaplan-Meier Plotter, PrognoScan, and GEPIA2. P-values less than 0.05 were considered significant. All graphs were produced using the R software (version 4.0.2, www.r-project.org) with the ggplot2 and forestplot packages.
RESULTS
NAT10 Expression Analysis Data
In our study, by using integrated datasets [HPA (Human protein atlas), GTEx, FANTOM5 (Function annotation of the mammalian genome 5), Monaco and Schmiedel], we first assessed the expression of NAT10 in different cells and normal tissues. As shown in Figure 1A, expression of NAT10 showed low RNA blood cell type specificity in different blood cells. NAT10 showed highest expression in the Tonsil, Parathyroid gland and Testis (Figure 1B). However, NAT10 can be expressed in all tissues (all consensus normalized expression value >1) showing low RNA tissue specificity.
Then, the mRNA expression levels of NAT10 were analyzed in Oncomine over a cancer-wide range. NAT10 expression was higher in cancer groups compared with the respective normal groups, including bladder, breast, colorectal, esophageal, gastric, liver, lung, kidney, and prostate cancers, as well as leukemia and myeloma. Interestingly, lower expression of NAT10 was found in one leukemia dataset (Figure 1C). The NAT10 expression data for multiple cancers from Oncomine are summarized in Supplementary Table 1.
Furthermore, the pan-cancer expression of NAT10 was examined based on RNA sequencing data from TCGA using TIMER2. As shown in Figure 1D, the expression of NAT10 in tumor tissues of BLCA, BRCA, CHOL, COAD, ESCA, HNSC, KICH, KIRC, LIHC, LUAD, LUSC, READ, SKCM, STAD and THCA is higher than the corresponding normal tissues. After using the GTEx dataset as controls, similarly increasing level of NAT10 expression was found in DLBC and THYM (Supplementary Figure 1). However, we did not obtain a significant difference for other tumors. We also used the “Pathological Stage Plot” module in GEPIA2 to get the correlation between NAT10 expression and the pathological stages of cancers, including KIRP, LIHC, LUAD and PAAD (Figure 1E, all p <0.05) but not others (Supplementary Figure 1).
Moreover, using the CPTAC dataset, the total protein of NAT10 is higher expressed in the primary tumor of clear cell
RCC, breast cancer, colon cancer, LUAD, ovarian cancer and UCEC than in normal tissues (Figure 1F). Also, in different stages of these six types of cancer, the total protein of NAT10 showed higher expression in the primary tumor except ovarian cancer (Supplementary Figure 1). The immunohistochemical findings from HPA database showed positive in prostate, lung, liver, breast and colorectal cancer than normal tissues (Supplementary Figure 2). Especially, the immuno histochemical and mRNA results in LIHC from 10 patients showed higher expression of NAT10 compared with Paracancerous tissues.
Analysis of the Pan-Cancer Link Between NAT10 Expression and Multifaceted Prognostic Value
We assessed the correlation between the respective expression levels of NAT10 and OS, PFS, DFS, and DSS in different cancer types using a single-variate Cox regression analysis based on TCGA. The results are summarized in Figures 2A-D. Nine of the 33 cancer types showed significant relationships between NAT10 expression levels and OS, seven showed significant relationships with PFS, five with DFS, and seven with DSS. Overall, the HRs for NAT10 were significant for LIHC, HNSC, ACC, KIRP, and PCPG with respect to OS, PFS, DFS, and DSS. In addition, survival curves comparing high and low expression of NAT10 in different types of cancer in the TCGA database were shown in Supplementary Figure 3.
Using Kaplan-Meier Plotter and GEPIA2, high expression of NAT10 in HNSC, KIRP, LIHC and PCPG had worse outcomes from Kaplan-Meier Plotter in OS and RFS (Figures 3A-H). For ACC, HNSC, KIRP and LIHC, NAT10 significantly decreased the OS in GEPIA2 (Figures 3I-M). In addition, compared with low expression levels, high expression levels of NAT10 were correlated with poorer DFS in ACC, HNSC and LIHC, but not in KIRP and PCPG in GEPIA2 (Figures 3N-R). Using PrognoScan, we analyzed the role of NAT10 in each cancer type (number of cancer types = 12) and the relationships between NAT10 expression and prognosis in different cancers. The results are shown in Supplementary Table 2. Therefore, these results suggest that NAT10 expression is an independent risk factor for poor prognosis in these cancers.
High NAT10 Expression Affects the Prognosis of LIHC With Different Clinicopathological Features
In order to determine the relevance and underlying mechanisms of NAT10 expression in LIHC, we first analyzed NAT10 expression at different stages of LIHC, ACC, KIRP, and HNSC using TIMER2. The expression of NAT10 at stage III showed a significant increase compared with stage I (Figures 4A-D). The relationships between NAT10 expression and clinico pathological features were investigated by combining clinical and pathological data in Kaplan-Meier Plotter. With respect to OS and PFS, almost all characteristics showed a detrimental role of NAT10 in patients with LIHC, except for grade 2 (N =174, HR = 1.92, 95% CI = 0.97 to 3.97, P = 0.0564),
A
T-cells
C
Dendritic cells
NAT 10
Normalized expression (NX)
Cancer VS. Normal
14
-
3
Monocytes
B-cells
Analysis Type by Cancer
-
0
Granulocytes
Bladder Cancer
2
Brain and CNS Cancer
1
Breast Cancer
7
Basophil
Eosinophil
Neutrophil
Classical monocyte
Non-classical monocyte
Intermediate monocyte
T-reg
GdT-cell
MAIT T-cell
Memory CD4 T-cell
Naive CD4 T-cell
Memory CD8 T-cell
Naive CD8 T-cell
Memory B-cell ’
Naive B-cell
Plasmacytoid DC
Myeloid DC
NK-cell
Total PBMC
Cervical Cancer
Colorectal Cancer
17
Esophageal Cancer
2
Gastric Cancer
3
Head and Neck Cancer
B
Kidney Cancer
3
Consensus normalized expression (NX)
Leukemia
4
1
40
I
Liver Cancer
2
2
w
Lung Cancer
3
0
Lymphoma
4
Melanoma
20
Myeloma
2
Other Cancer
1
1
Ovarian Cancer
10
Pancreatic Cancer
Prostate Cancer
1
0
Cerebral cortex
Cerebellum
Olfactory region
Hippocampal formation
Amygdala Basal ganglia
halamus
Hypothalamus
Midbrain
Pons and medulla
Corpus callosum
Spinal cord
Retina
Thyroid gland
Parathyroid gland
Adrenal gland
Pituitary gland
Lung
Salivary gland
Esophagus
Tongue
Stomach
Duodenum
Small intestine
Colon
Rectum
Liver
Gallbladder
Pancreas
Kidney
Urinary bladder
Testis
Epididymis
Seminal vesicle
Prostata
Ductus deferens
Vagina
Ovary
Fallopian tube
Endometrium
Cervix, uterine
lacenta
Breast
Heart muscle
antooth muscle
Skeletal muscle
Adipose tissue
Skin
Thymus
Appendix
Spleen
Lymph node
Tonsil
Bone marrow
Granulocytes
Monocytes
-Colle
B-cells NK-cells
Dendritic cells
Total PBMC
Sarcoma
1
Significant Unique Analyses
52
3
Total Unique Analyses
266
1
5
10
5
1
%
D
Gene rank percentile(%)
8
NAT 10 Expression Level (log2 TPM)
A
*
*
3
+
1
A
..
.
:
2
·
ACC.Tumor
BLCA.Tumor
BLCA.Normal
BRCA.Tumor
BRCA.Normal
BRCA-Basal.Tumor
BRCA-Her2.Tumor
BRCA-LumA.Tumor
BRCA-LumB.Tumor
CESC.Tumor
CESC.Normal
CHOL.Tumor
CHOL.Normal
COAD.Tumor
COAD.Normal
DLBC.Tumor
ESCA.Tumor
ESCA.Normal
GBM.Tumor
GBM.Normal
HNSC.Tumor
HNSC.Normal
HNSC-HPV+.Tumor
HNSC-HPV -. Tumor
KICH.Tumor
KICH.Normal
KIRC.Tumor
KIRC.Normal
KIRP.Tumor
KIRP.Normal
LAML.Tumor
LGG.Tumor
LIHC.Tumor
LIHC.Normal
LUAD.Tumor
LUAD.Normal
LUSC.Tumor
LUSC.Normal
MESO.Tumor
OV.Tumor
PAAD. Tumor
PAAD.Normal
PCPG.Tumor
PCPG.Normal
PRAD.Tumor
PRAD.Normal
READ.Tumor
READ.Normal
SARC.Tumor
SKCM.Tumor
SKCM.Metastasis
STAD.Tumor
STAD.Normal
TGCT.Tumor
THCA.Tumor
THCA.Normal
THYM.Tumor
UCEC.Tumor
UCEC.Normal
UCS.Tumor
UVM.Tumor
E
5.5
KIRP
F value = 3.32 Pr(>F) = 0.0204
LIHC
F value = 4.29 Pr(>F) = 0.00542
F value = 3.76
F value = 3.33 Pr(>F) = 0.0211
0
LUAD
Pr(>F) = 0.0109
0
PAAD
NAT10 expression Log2 (TPM+1)
5.0
OD
10
4.5
«
5
D
៛
-
I
4
3.5
3
5
3.0
es
Stage I
Stage II
Stage III
Stage IV
Stage I
Stage II
Stage III
Stage IV
Stage I
Stage II
Stage III
Stage IV
Stage I
Stage II
Stage III
Stage IV
F
Protein expression of NAT 10 (z-value)
Clear cell RCC p=2.53E-50
1-
Breast cancer
4ª
Colon cancer
3-
LUAD p=1.54E-36
a
Ovarian cancer p=0.002158988
34
UCEC
p=4.11E-58
5
2-
p=6.95E-09
2
2
p=1.38E-12
2-
1
1
1
1
0-
0-
1
4
#
0-
8
4
2-
4-
9
2-
-4
2ª
4-
4-
-2
-2
5
Normal (N=84)
Primary Tumor (N=110)
4
Normal (N=18)
Primary Tumor (N=125)
$
Normal (N=100)
Primary Tumor (N=97)
4
Normal (N=111)
Primary Tumor (N=111)
-
Normal (N=111)
Primary Tumor (N=111)
4
Normal (N=31)
Primary Tumor (N=100)
A
OS
B
PFS
ACC BLCA
pvalue
Hazard ratio
0.021
2.864(1.172-6.995)
ACC
pvalue
Hazard ratio
3.255(1.603-6.610)
BRCA
0.418
0.896(0.688-1.168)
BLCA
0.001
CESC
0.818
0.169
0.967(0.725-1.290)
1.478(0.847-2.580)
BRCA
0.802
0.967(0.747-1.254)
CESC
0.330
0.052
0.866(0.649-1.156)
CHOL
COAD
0.370
1.690(0.996-2.870)
DLBC
0.024 0.983
0.609(0.206-1.802)
1.613(1.064-2.445)
CHOL
0.274
0.727 0.411-1.287
ESCA
0.243 0.098
0.983(0.213-4.545)
COAD
DLBC
0.413
0.136
1.138(0.835-1.550)
0.110
2.529(0.746-8.580)
GBM
1.370(0.807-2.325)
ESCA
1.419(0.924-2.181)
HNSC
KICH
0.001 0.006
1.422(0.937-2.159)
1.510(1.180-1.933)
GBM
HNSC
0.892
32.336(2.705-386.524)
KICH
0.004
0.971(0.635-1.485)
0.043
0.164
1.414(1.114-1.794)
KIRC KIRP
2.666(0.671-10.593)
LAML LGG LIHC
0.003
1.751(1.019-3.010)
4.783(1.682-13.599)
KIRC
1.255(0.783-2.010)
0.299
1.305(0.790-2.158)
KIRP
0.346
4.321(1.776-10.514)
0.592
0.868(0.517-1.456)
LGG
0.001
<0.001
2.360(1.638-3.399
LIHC
0.483
<0.001
0.858(0.560-1.316)
LUAD
1.725(1.311-2.269)
LUAD LUSC
1.240(0.908-1.695)
LUSC
0.381
0.947
1.125(0.864-1.464)
0.992(0.774-1.271)
MESO OV
0.176 0.213
0.876 0.797
0.857(0.672-1.093
1.063(0.492-2.297
MESO
OV
0.263
0.066
1.693(0.673-4.257
0.828(0.677-1.013)
PAAD
0.078
1.029(0.827-1.280)
PCPG
1.666(0.944-2.939)
PAAD PCPG
0.008
0.009
2.020(1.205-3.386)
PRAD
0.011
0.458
10.461(1.695-64.555)
2.113(0.293-15.221)
PRAD
READ
0.033
3.999(1.418-11.281)
2.110(1.063-4.188)
READ SARC
0.019
SARC SKCM
0.966
0.538
0.987 0.530-1.837)
0.903(0.653-1.249)
SKCM
0.671
0.379(0.168-0.852)
1.081(0.755-1.546)
0.706
1.053(0.806-1.374)
STAD
0.542
1.105(0.801-1.525)
0.897 0.652-1.233)
STAD
0.369
0.868(0.636-1.183)
TGCT
0.502
THCA
0.573
0.813
1.883(0.208-17.039)
TGCT
0.688
1.162(0.558-2.421 1.936(0.554-6.773)
THYM
UCEC
0.974
0.756(0.074-7.683)
THCA
0.957(0.067-13.663)
THYM
0.301
1.038(0.644-1.672)
UCEC
0.911
0.878
UVM
0.123
2.292(0.800-6.569)
UCS
0.110
0.911(0.174-4.753)
1.386(0.929-2.068)
UCS
0.140
1.805(0.824-3.956)
UVM
0.202
0.132
1.614(0.774-3.367
2.020(0.810-5.037)
0.062 1e+00 2e+01 3e+02 Hazard ratio
0.25
1.0 2.0 4.0 8.0
Hazard ratio
C
DFS
D
DSS
ACC
pvalue
Hazard ratio
10.020(1.949-51.516)
ACC
pvalue
Hazard ratio
0.006
2.609(1.021-6.668)
0.866(0.417-1.798)
BLCA
0.045
BLCA
0.700
BRCA
0.495
0.894(0.647-1.234)
BRCA
0.720(0.493-1.052)
CESC
0.654
0.089
CHOL
0.536
1.092(0.744-1.602)
1.343(0.528-3.417)
CESC
0.711
CHOL
0.152
1.165(0.518-2.622)
COAD
0.472
1.577(0.845-2.944)
0.605
0.799(0.434-1.472)
COAD
0.009
2.463(1.253-4.843)
DLBC
0.825
1.120(0.729-1.721)
DLBC
ESCA
0.454
0.194(0.003-14.113)
ESCA
0.229
1.251(0.172-9.121)
GBM
1.455(0.790-2.681)
HNSC
0.634
KICH
0.110
1.230(0.524-2.886)
0.064
1.597 0.973-2.620)
0.315
1.833(0.872-3.852)
HNSC
KICH
0.021
1.404(1.052-1.874)
KIRC
0.247(0.016-3.788)
0.362
0.537(0.141-2.043)
KIRC KIRP
0.052
0.065
6.376(0.985-41.286)
11.302(2.982-42.836)
0.002
1.773(0.964-3.260)
KIRP
<0.001
6.170(1.934-19.677
LGG
LIHC
0.159
2.583(0.690-9.676)
LGG LIHC
0.826
LUAD
0.005
0.007
0.936(0.518-1.691)
1.546(1.138-2.100)
LUAD
1.758(1.165-2.653)
0.125
1.382(0.914-2.091)
LUSC
0.376
0.416
1.170(0.826-1.656)
0.874(0.632-1.208)
LUSC
MESO
0.945
0.646
1.014(0.688-1.493)
MESO
0.338(0.003-34.480)
OV
0.355
0.881
1.605(0.590-4.367
PAAD
0.046
1.018(0.807-1.284)
OV
PAAD
0.003
0.666(0.508-0.875)
0.223
PCPG
0.006
1.915(1.010-3.629)
PCPG
1.884(0.681-5.214)
23.115(2.488-214.791)
PRAD
0.093
9.736(0.683-138.695)
PRAD
0.021
32.544(1.708-620.059)
0.171
READ
0.175
0.557(0.239-1.298)
READ SARC
2.426(0.682-8.620)
0.681
0.711(0.139-3.623)
SARC
SKCM
0.996
0.587
0.999(0.666-1.499)
STAD
1.070(0.700-1.635)
STAD
0.940
1.101(0.778-1.558)
0.754
0.986(0.685-1.421)
0.120
0.657(0.387-1.116)
TGCT
THCA
0.390
0.097
3.393(0.209-54.983)
TGCT
THCA
0.523
1.325(0.558-3.146)
THYM
0.808
15.338(0.613-384.026)
0.718
1.398(0.227-8.626)
1.639(0.031-87.416)
UCEC
UCS
0.829
1.070(0.576-1.988)
UCEC
UCS
0.555
0.473
2.010(0.298-13.557)
UVM
0.138
1.191(0.667-2.126)
0.107
1.817(0.825-4.001)
2.475(0.821-7.458)
0.004 0.125 4e+00 1e+02 Hazard ratio
0.031 0.5008e+00 1e+02 Hazard ratio
FIGURE 2 | Association between NAT10 expression levels and patient prognosis based on multiple tumors from TCGA database. (A) Relationship of NAT10 expression with OS. (B) Relationship of NAT10 expression with progression-free interval (PFI). (C) Relationship of NAT10 expression with disease-free interval (DFI). (D) Relationship of NAT10 expression with DSS. Cox regression analysis; P < 0.05 was considered significant.
AJCC_T 1 (N= 180, HR = 1.6, 95% CI = 0.89 to 2.89, P=0.1146), and micro-vascular invasion (N = 90, HR =2.02, 95% CI =0.9 to 4.57, P =0.0833) for OS; and stage 2 (N = 84, HR = 1.87, 95% CI = 0.99 to 3.54, P = 0.0501), grade 2 (N = 175, HR =1.51, 95% CI = 0.98 to 2.35, P = 0.0619), non-vascular invasion (N = 204, HR = 1.54, 95% CI = 0.96 to 2.49, P = 0.0721), and micro- vascular invasion (N = 91, HR = 1.76, 95% CI = 0.97 to 3.19, P = 0.0583) for PFS (Supplementary Table 3). Therefore, the expression of NAT10 seems to be an independent risk factor in prognosis of LIHC.
NAT10 Expression Is Correlated With Pan-Cancer Immune Infiltration Levels
Previous studies have proved that tumor-infiltrating lymphocytes can affect patient survival (30), and the above results demonstrate a powerful pan-cancer effect of NAT10 on prognosis. Thus, we explored the relationships between inflammatory infiltration and NAT10 expression. Using TIMER2 datasets, we calculated the coefficients of NAT10 expression and immune infiltration levels in 40 cancer types. The results show that NAT10 expression has significant positive
A
HNSC, OS
NAT10
B
KIRP, OS
NAT10
C
LIHC, OS
NAT10
D
PGPC, OS
NAT10
1.0
HR = 1.7 (1.29 - 2.23)
o ~
HR = 2.76 (1.52 - 5.02)
0;
-
HR = 2.57 (1.8-3.67)
9
-
************** *** HR =551601643.93 (0 - Inf)
logrank P = 0.00013
logrank P = 0.00051
logrank P = 8.8e-08
logrank P = 0.023
0.8
0.8
0.8
8
0
Probability
0.6
Probability
0.6
Probability
0.6
Probability
0.6
0.4
0.4
0.4
0.4
2
0
2
Expression
0.
Expression
0
Expression
0.2
Expression
low
low
low
low
0.0
high
0.0
high
0
high
0.0
high
O
0
50
100
150
200
0
50
100
150
200
0
20
40
60
80
100
120
0
50
100
150
200
250
300
Number at risk 328
Time (months)
Number at risk 187
Time (months)
Time (months)
Time (months)
Number at risk
low
68
13 3
Y
Number at risk
0
low
48
9
100
25
3
1
0
low
266
153
71
13
37
15
3
4 2
1 0
86
20 18
Y
high
171
18
0
high
high
104
29
5
high
92
”
0
1
0
1
0
1
0 4
E
HNSC, RFS
NAT10
F
KIRP, RFS
NAT10
G
LIHC, RFS
NAT10
H
PGPC, RFS
NAT10
0.
O
-
HR = 2.54 (1.12 - 5.74)
0,
o,
~
++
HR = 3.15 (1.46 - 6.8)
-
HR = 1.89 (1.35 - 2.64)
-
HA #872742923.7910 - Int)
logrank P = 0.021
logrank P = 0.0021
logrank P = 0.00017
logrank P = 0.019
0.8
00
+
HH H
0
00 0
8
0
Probability
0.6
Probability
0.6
Probability
00
Probability
0.6
0.4
0.4
0.4
0.4
0.2
Expression
0.2
Expression
Expression
0.2
Expression
low
low
low
low
0.0
high
0.0
high
0
0
high
0.0
high
0
50
100
150
0
20
40
60
80
100
120
0
20
40
60
80
100
120
0
20
40
60
80
100
120
Number at risk 92
Time (months)
Time (months)
Time (months)
Time (months)
Number at risk
Number at risk
low
18 0
5
0
2
0
136
83
43
13
23 9
13
2
7
1
1 0
low
201
115
81 24
35 12
17
3
6 1
2
Number at risk 85
high
32
high
47
27
high
1
1
0
high
74
51 43
28
16
16 9
10 4
7
1
I
ACC Overall Survival
J
HNSC Overall Survival
K
KIRP
Overall Survival
L
LIHC
Overall Survival
M
PGPC Overall Survival
1.0
Low NAT10 TPM
High NAT10 TPM
+
Low NAT10 TPM
1.0
High NAT10 TPM
Low NAT10 TPM
0
2 ¢
High NAT10 TPM
Low NAT10 TPM
High NAT10 TPM
Low NAT10 TPM
High NAT10 TPM
Logrank p=0.025
Logrank p=0.00013
Logrank p=0.026
Logrank p=0.00076
Logrank p=0.58
0.8
HR(high)=2.4
p(HR)=0.03
0.8
HR(high)=1.7
0.8
HR(high)=2
0.8
HR(high)=1.8
p(HR)=0.00015
p[HR)=0.029
p(HR)=0.00092
0.8
HR(high)=1.6
p(HR)=0.58
Percent survival
n(high)=38
Percent survival
n(high)=259
n(high)=141
n(low)=259
Percent survival
n(low)=141
Percent survival
n[high)=182 n(low)=182
Percent survival
n[high)=91
0.6
n(low)=38
0.6
0.6
0.6
0.6
n(low)=91
0.4
0.4
0.4
0.4
0.4
0.2
0.2
0.2
0.2
0.2
0.0
0.0
0.0
0.0
0.0
0
50
100
150
0
50
100
150
200
0
50
100
150
200
0
20
40
60
80
100
120
0
50
100
150
200
250
300
Months
Months
Months
Months
Months
N
Disease Free Survival
O
HNSC Disease Free Survival
P
KIRP Disease Free Survival
Q
LIHC Disease Free Survival
R
PGPC Disease Free Survival
1.0
Low NAT10 TPM
1.0
High NAT10 TPM
Low NAT10 TPM
1.0
Low NAT10 TPM
1.0
High NAT10 TPM
High NAT10 TPM
Low NAT10 TPM
Q
High NAT10 TPM
-
Low NAT10 TPM
Logrank p=0.0072
High NAT10 TPM
Logrank p=0.017
Logrank p=0.67
Logrank p=0.00092
Logrank p=0.22
0.8
HR(high)=2.5
HR(high)=1.5
HR(high)=1.1
HR(high)=1.7
HR(high)=1.8
p[HR)=0.0096
0.8
p(HR)=0.018
0.8
p(HR)=0.67
0.8
p(HR)=0.001
0.8
p(HR)=0.23
Percent survival
n(high)=38
Percent survival
n(high)=259
Percent survival
n(high)=258
Percent survival
n[high)=182
Percent survival
n(high)=91
0.6
n|low)=38
0.6
n(low)=259
0.6
n(low)=258
0.6
n(low)=182
0.6
n|low)=9
0.4
0.4
0.4
H
0.4
0.4
0.2
0.2
0.2
0.2
0.2
0.0
0.0
0.0
0.0
0.0
0
50
100
150
0
50
100
150
200
0
20
40
60
80
100
120
140
0
20
40
60
80
100
120
0
50
100
150
200
Months
Months
Months
Months
Months
Cancer: ACC
Cancer: HNSC
A
Stage
Stage I
Stage II
Stage III
Stage IV
B
Stage
Stage I
Stage II
Stage III
Stage IV
0.74
10-
0.97
6
0.9
0.95
0.68
1
0.015
8
0.42
NAT10 expression
5
0.027
NAT10 expression
0.47
0.081
0.43
6
4
4
3
2
Stage I
Stage II
Stage III
Stage IV
Stage I
Stage II
Stage III
Stage IV
Stage
Stage
Cancer: KIRP
Cancer: LIHC
C
Stage
Stage I
Stage II
Stage III
Stage IV
D
Stage
Stage I
Stage II
Stage III
Stage IV
0.6
7
0.15
0.13
0.29
0.11
0.34
5
0.051
6
0.58
NAT10 expression
0.025
0.51
NAT10 expression
0.012
5
0.17
4
4
3
3
2
..
Stage I
Stage II
Stage III
Stage IV
Stage I
Stage II
Stage III
Stage IV
Stage
Stage
correlations with tumor purity in 15 types of cancer. In addition, NAT10 expression had significant correlations with infiltrating levels of B cells in 15 types of cancer, CD8+ T cells in 17 types of cancer, CD4+ T cells in 20 types of cancer, macrophages in 13 types of cancer, neutrophils in 23 types of cancer, and DCs in 19 types of cancer (Supplementary Table 4).
Overall, in five types of cancer (ACC, HNSC, LIHC, KIRP and PCPG), NAT10 expression showed most relevant to immune infiltration levels. Furthermore, we first assessed the relationships between NAT10 expression and tumor purity in the above five types of cancer. Two types (ACC and HNSC) of the five showed significant positive correlations with tumor purity in TIMER2. In addition, consistent positive correlations with different types of infiltrating immune cells were seen in LIHC: neutrophils (R = 0.162, P = 0.009) and DCs (R = 0.129, P = 0.039) in KIRP; B cells (R = 0.243, P = 0.002) and macrophages (R = 0.221, P = 0.004) in PCPG; B cells, CD4+ T cells, neutrophils, and DCs in ACC; and CD8+ T cells, neutrophils and DCs in HNSC showed positive correlations with NAT10 expression (Figures 5A-E). These findings strongly
suggest that NAT10 affects patient survival via interactions with immune cell infiltration in cancers including LIHC.
Relationships Between NAT10 Expression and Immune Markers
To further investigate the correlations between NAT10 and different types of infiltrating immune cells, we analyzed the relationships between NAT10 and immune cell markers using TIMER2 and GEPIA2. In TIMER2, after adjustments for tumor purity, NAT10 expression was significantly associated with 42 of 45 immune cell markers in LIHC; however, it was significantly correlated with only 22 gene markers in KIRP, eight gene markers in ACC, 28 gene markers in HNSC and 21 gene markers in PCPG (Table 1).
As shown in Figure 5, B cells, CD4+ T cells, and macrophages were the three immune cell types most strongly correlated with NAT10 expression in LIHC. However, these correlations were not found in KIRP. The relationships between NAT10 expression and B cells, CD4+ T cells, and macrophage markers also showed differences between LIHC and KIRP. First, as for B
A
NAT10 Expression Level (log2 TPM)
Purity
B Cell
CD8+ T Cell
CD4+ T Cell
Macrophage
Neutrophil
Dendritic Cell
8
cor = 0.243
p = 3.69e-02
partial.cor = 0.422
p = 2.04e-04
partial.cor = 0.245
p = 3.64e-02
partial.cor = - 0.118
p = 3.21e-01
partial.cor = 0.094
p = 4.28e-01
partial.cor = 0.326
p = 4.83e-03
partial.cor = 0.336
p = 3.71e-03
6
ACC
4-
0.2
0.4
0.6
0.8
1.0
0.11
0.12
0.13
0.20
0.25
0.30
0.35 0.07
0.09
0.11
0.13
0.15
0.08
0.12
0.16
0.12
0.14
0.16
0.18
0.49
0.50
0.51
0.52
0.53
B
Infiltration Level
NAT10 Expression Level (log2 TPM)
8
Purity
B Cell
CD8+ T Cell
CD4+ T Cell
Macrophage
Neutrophil
Dendritic Cell
cor = 0.151
7
p = 7.66e-04
partial.cor = - 0.083
p = 6.91e-02
partial.cor = - 0.066
p = 1.53e-01
partial.cor = 0.227
p = 4.978-07
partial.cor = 0.079
p = 8.39e-02
partial.cor = 0.127
p = 5.29e-03
partial.cor = 0.107
p = 1.90e-02
6
HNSC
4
3
0.25
0.50
0.75
1.00 0.0
0.1
0.2
0.3
0.4
0.5
0.0
0.2
0.4
0.6
0.0
0.1
0.2
0.3
0.4
0.5 0.0
0.1
0.2
0.3
0.4
0.0
0.1
0.2
0.3
0.25
0.50
0.75
1.00
1.25
C
Infiltration Level
NAT10 Expression Level (log2 TPM)
Purity
B Cell
CD8+ T Cell
CD4+ T Cell
Macrophage
Neutrophil
Dendritic Cell
5.5.
cor 0.018
p = 7.68e-01
partial.cor = 0.085
p = 1.77e-01
partial.cor = - 0.007
p = 9.16e-01
partial.cor = 0.058
p = 3.51e-01
partial.cor = - 0.068
p = 2.87e-01
partial.cor = 0.162
p = 8.96e-03
partial.cor = 0.129
p = 3.90e-02
5.0
?
4.5
KIRP
4.0
3.5
3.0
0.25
0.50
0.75
1.00 0.0
0.1
0.2
0.3
0.4
0.5
0.1
0.2
0.3
0.4
0.1
0.2
0.3
0.4
0.0
0.1
0.2
0.3
0.4
0.1
0.2
0.2
0.4
0.6
0.8
1.0
D
Infiltration Level
NAT10 Expression Level (log2 TPM)
Purity
B Cell
CD8+ T Cell
CD4+ T Cell
Macrophage
Neutrophil
Dendritic Cell
6
cor = 0.082
p = 1.26e-01
partial.cos = 0.364
p = 3.18e-12
partial.cor = 0.226
p = 2.51€-05
.partial.cor = 0.417
p = 6.65€-16
partial.cor = 0.453
p = 1.20c-18
partial.cor = 0.445
p = 3.36e-18
partial.cor = 0.355
p = 1.61e-11
5
A
LIHC
3-
2.
0.25
0.50
0.75
1.00
0.1
0.2
0.3
0.4
0.2
0.4
0.6
0.0
0.1
0.2
0.3
0.4
0.0
0.1
0.2
0.3
0.05
0.10
0.15
0.20
0.25
0.50
0.75
1.00
E
Infiltration Level
NAT10 Expression Level (log2 TPM)
Purity
B Cell
CD8+ T Cell
CD4+ T Cell
Macrophage
Neutrophil
Dendritic Cell
cor= 0.073
.partial.cor = 0.243
p = 1.55e-03
partial.cor = - 0.008
p = 9.21e-01
partial.cor = 0.03
partial.cor = 0.221
partial.cor = 0.142
p = 3.46e-01
p = 7.04e-01
· p = 4.20e-03
p = 6.71e-02
partial.cor = 0.026
p = 7.37e-01
4
PCPG
3.
0.25
0.50
0.75
1.000.00
0.05
0.10
0.15
0.20
0.15
0.20
0.25
0.30
0.10
0.15
0.20
0.25
0.30
0.00
0.05
0.10
0.15
0.20
0.10
0.15
0.20
0.25
0.3
0.4
0.5
0.6
0.7
Infiltration Level
FIGURE 5 | Correlation of NAT10 expression with immune infiltration levels in ACC, HNSC, KIRP, LIHC, and PCPG. (A) Correlations of NAT10 expression with immune infiltration levels in ACC (A), HNSC (B), KIRP (C), LIHC (D), and PCPG (E).
cells and macrophage markers, we analyzed the correlations of NAT10 expression in tumor and normal tissues for LIHC and KIRP based on the GEPIA2 database. Notably, the correlations between NAT10 and TAMs were similar to those found using TIMER2, suggesting that NAT10 is correlated with TAM infiltration in LIHC. Second, NAT10 expression in LIHC and KIRP showed partial difference in its relationships with CD8+ T cells, Tfh cells, Th2 cells, Th9 cells, Th17 cells, Th22 cells, neutrophils, and NK cells. In addition, NAT10 in LIHC had significant correlations with T cell exhaustion markers including PD-1 and CTLA4, and monocyte markers including CD14 and CD16, whereas NAT10 in KIRP showed no such relationships. We also used MCPcounter datasets to analyze the correlations between NAT10 expression and other immune cells; the results,
shown in Supplementary Figure 4, revealed strong positive correlations of endothelial cells and fibroblasts with NAT10 expression in KIRP and LIHC. Therefore, these results further confirm the findings that NAT10 is specifically correlated with immune infiltrating cells in LIHC, demonstrating that NAT10 has a vital role in immune escape in LIHC.
Pan-Cancer Correlation of NAT10 Expression With Expression of Immune Checkpoint Genes
Tumor immunotherapy is a novel treatment that involves restarting and maintaining the tumor-immune cycle to restore the body’s normal anti-tumor immune response. Immune checkpoint genes are the main direction for monoclonal antibody inhibitors, cancer
vaccines, cell therapies, and small-molecule inhibitors (31). Thus, we analyzed the relationships between NAT10 expression and 47 immune checkpoint genes in the above five types of cancer. Figure 6 shows the most significant positive correlations in KIRP (15 of 47) and LIHC (31 of 47); no such strong relationships were found in HNSC (three of 47), ACC (three of 47), or PCPG (seven of 47), but there were positive correlations. Therefore, these results further suggest that NAT10 expression has a vital role related to immune checkpoint genes in KIRP and LIHC (Figure 6A).
Relationships Between NAT10 Expression and Immune Neoantigens, TMB and MSI
Neoantigens are new unnatural proteins encoded by mutated genes in tumor cells, which can be used to synthesize new antigen
vaccines to activate immunity and achieve a therapeutic effect (32). Hence, we counted the number of new antigens in the above five types of cancer and analyzed the relationships between NAT10 expression and these antigens. The results are shown in Figure 6B. Surprisingly, there was no relationship between NAT10 expression and antigens.
Tumor mutation load (or TMB) (33), a quantifiable biomarker used to reflect the number of mutations contained in tumor cells, and MSI (34), the emergence of a new microsatellite allele in the tumor, are valid prognostic biomarkers and indicators of immune therapy response in many tumor types. Therefore, we analyzed the correlations of NAT10 expression with TMB and MSI in the above five types of cancer, using Person correlation. As shown in Figure 6C, NAT10
A
ADORA2A
BTLA
BTNL2
CD160
CD200
CD200R1
CD244
CD27
CD274
CD276
CD28
CD40
(
CD40LG
CD44
-log10(p value)
2
2
CD48
CD70
5
CD80
.75
CD86
CTLA4
HAVCR2
0
HHLA2
ICOS
ICOSLG
5
IDO1
0
IDO2
correlation
0
KIR3DL1
5
LAG3
LAIR1
9
LGALS9
i
NRP1
PDCD1
PDCD1LG2 TIGIT
TMIGD2
TNFRSF14
TNFRSF18
TNFRSF25
TNFRSF4
TNFRSF8
TNFRSF9
TNFSF14
TNFSF15
TNFSF18
TNFSF4
TNFSF9
VSIR
VTCN1
KIRP
LIHC
HNSC
ACC
PCPG
B
KIRP,P=0.56
C
KIRP,P=0.0061
D
KIRP,P=0.73
0.05
0.16
0.14
0
0-
0
PCPG,P=0.65
LIHC,P=0.4
PCPG,P=0.61
LIHC,P=0.0092
-0.05
-0.16
-0.14
LIHC,P=0.8
HNSC.P=0.48
ACC,P=0.31
HNSC,P=0.39
ACC,P=0.23
HNSC,P=0.31
Immune neoantigen
TMB
MSI
FIGURE 6 | Relationship between NAT10 expression and immune checkpoint gene expression, immune neoantigens, TMB, and MSI in ACC, HNSC, KIRP, LIHC, and PCPG. (A) Correlations of NAT10 expression with immune checkpoint gene expression. The lower triangle in each tile indicates coefficients calculated by Pearson’s correlation test, and the upper triangle indicates the log10-transformed P-value. (B) Correlations between immune neoantigens and NAT10 expression. (C) Correlations between TMB and NAT10 expression. (D) Correlations between MSI and NAT10 expression. * P < 0.05, ** P < 0.01, *** P < 0.001.
| Cell type | Gene marker | LIHC (n=371) | KIRP (n=290) | ACC (n= 79) | HNSC (n= 522) | PCPG (n= 181) | |||||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| None | Purity | None | Purity | None | Purity | None | Purity | None | Purity | ||||||||||||
| Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | ||
| B cell | CD19 | 1.43E- | ** | 1.77E- | *** | -9.62E- | * | 5.20E- | 4.05E- | 0.05779408 | 0.61291247 | 0.05882736 | 0.62104169 | -0.0069951 | 0.87332439 | 0.04889072 | 0.27910258 | 0.07620166 | 0.30793286 | 0.06411072 | 0.41044115 |
| 01 | 01 | 02 | 02 | 01 | |||||||||||||||||
| CD20 | 5.60E- | 2.80E- | 1.17E- | * | 1.20E- | 8.40E- | 7.00E- | 9.11E- | -0.1439917 | 0.20549999 | 0.00478008 | 0.96798446 | -0.0235238 | 0.59179136 | 0.03722091 | 0.41006156 | 0.116231 | 0.11919049 | 0.12091378 | 0.11958194 | |
| 02 | 01 | 01 | 02 | 01 | 03 | 01 | |||||||||||||||
| CD38 | 1.62E- | ** | 2.29E- | **** | 1.54E- | *** | 1.68E- | *** | 0.0635848 | 0.57772573 | 0.26625501 | * | 0.20620227 | **** | 0.22776931 | **** | 0.20534102 | ** | 0.20784791 | ** | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| CD8+ T Cell | CD8A | 1.22E- | * | 1.95E- | *** | -2.00E- | 9.71E- | 1.50E- | 8.12E- | -0.1210078 | 0.28809634 | 0.01697631 | 0.88664367 | -0.0331563 | 0.44969504 | 0.02873404 | 0.52486642 | 0.34676621 | **** | 0.34579678 | **** |
| 01 | 01 | 03 | 01 | 02 | 01 | ||||||||||||||||
| CD8B | 5.20E- | 3.21E- | 1.20E- | * | -7.60E- | 2.00E- | -5.90E- | 3.43E- | -0.1348848 | 0.23593908 | 0.00756078 | 0.94938014 | -0.0727428 | 0.09687526 | -0.0226237 | 0.61664917 | 0.16943357 | * | 0.20526366 | ** | |
| 02 | 01 | 01 | 02 | 01 | 02 | 01 | |||||||||||||||
| Tfh | CXCR5 | 2.56E- | **** | 1.81E- | *** | 7.10E- | 2.27E- | 4.00E- | 5.21E- | 0.05242389 | 0.64634728 | 0.12503271 | 0.29189005 | -0.051506 | 0.24010152 | 0.01629981 | 0.71835985 | 0.12976506 | 0.08166878 | 0.12686479 | 0.10231163 |
| 01 | 01 | 02 | 01 | 02 | 01 | ||||||||||||||||
| ICOS | 1.95E- | *** | 2.81E- | **** | 6.10E- | 2.98E- | 1.38E- | ** | -0.0643495 | 0.5731498 | 0.12417061 | 0.29525634 | 0.04110205 | 0.3486472 | 0.09967326 | * | 0.20163799 | ** | 0.22623221 | ** | |
| 01 | 01 | 02 | 01 | 01 | |||||||||||||||||
| BCL-6 | 4.09E- | **** | 4.00E- | **** | 3.79E- | **** | 2.95E- | **** | 0.47370983 | **** | 0.47178104 | **** | 0.27113488 | **** | 0.24528851 | **** | 0.06808735 | 0.36243625 | 0.07963587 | 0.30629919 | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| Th1 | IL12RB2 | 2.50E- | **** | 2.71E- | **** | 9.60E- | 1.03E- | 1.07E- | 8.60E- | 0.15152769 | 0.18251461 | 0.22188914 | 0.05920167 | 0.07954056 | 0.06939957 | 0.10426452 | * | 0.16002304 | * | 0.18438766 | * |
| 01 | 01 | 02 | 01 | 01 | 02 | ||||||||||||||||
| WSX-1 | 3.96E- | **** | 4.53E- | **** | 3.38E- | **** | 1.90E- | **** | 0.17629017 | 0.12015458 | 0.22334105 | 0.05751734 | 0.20896131 | **** | 0.22182227 | **** | 0.14587254 | 0.0500646 | 0.1782193 | * | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| T-BET | 4.50E- | 3.91E- | 1.10E- | * | -3.00E- | 9.60E- | -3.00E- | 9.64E- | -0.0675107 | 0.55441419 | 0.12361806 | 0.29742722 | 0.00481907 | 0.91253661 | 0.07051442 | 0.11827577 | 0.12143995 | 0.10341441 | 0.16061212 | * | |
| 02 | 01 | 01 | 03 | 01 | 03 | 01 | |||||||||||||||
| Th2 | CCR3 | 3.12E- | **** | 3.72E- | **** | 8.10E- | 1.97E- | 8.00E- | 1.77E- | -0.2634941 | * | -0.220227 | 0.06117884 | 0.00205114 | 0.96271192 | 0.03922147 | 0.38534207 | 0.07084056 | 0.3433074 | 0.06462517 | 0.40668787 |
| 01 | 01 | 02 | 01 | 02 | 01 | ||||||||||||||||
| STAT6 | 3.93E- | **** | 3.83E- | **** | 4.38E- | **** | 4.40E- | **** | 0.17558423 | 0.12166974 | 0.14145406 | 0.23258066 | 0.3274151 | **** | 0.31710451 | **** | 0.11600793 | 0.11990568 | 0.07627538 | 0.32722448 | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| GATA-3 | 1.78E- | *** | 2.79E- | **** | 1.29E- | * | 1.43E- | * | 0.25350536 | * | 0.22120658 | 0.06000723 | -0.0266636 | 0.54329384 | 0.00221573 | 0.96090158 | 0.39382754 | **** | 0.36768489 | **** | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| Th9 | TGFBR2 | 4.17E- | **** | 4.48E- | **** | 5.74E- | **** | 5.81E- | **** | 0.09352483 | 0.41232091 | 0.2027046 | 0.08544679 | 0.23470935 | **** | 0.29722585 | **** | 0.23068423 | ** | 0.33824744 | **** |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| IRF4 | 1.83E- | *** | 2.67E- | **** | 8.70E- | 1.40E- | 9.50E- | 1.30E- | 0.05046857 | 0.65870184 | 0.26458911 | * | 0.0461258 | 0.29285262 | 0.11859115 | ** | 0.17356966 | * | 0.20374218 | ** | |
| 01 | 01 | 02 | 01 | 02 | 01 | ||||||||||||||||
| PU.1 | 2.86E- | **** | 4.02E- | **** | -5.90E- | 3.21E- | -8.90E- | 1.54E- | -0.240482 | * | -0.1344732 | 0.25668139 | 0.02794067 | 0.52414872 | 0.09947565 | * | 0.05395948 | 0.47063456 | 0.05754715 | 0.46008926 | |
| 01 | 01 | 02 | 01 | 02 | 01 | ||||||||||||||||
| Th17 | IL-21R | 2.34E- | **** | 3.29E- | **** | 1.59E- | ** | 1.51E- | * | 0.10225198 | 0.36987757 | 0.15659228 | 0.18583167 | -0.0150174 | 0.73212261 | 0.04869283 | 0.28105543 | -0.0507984 | 0.4970578 | -0.0504797 | 0.51707903 |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| IL-23R | 2.79E- | **** | 2.88E- | **** | 1.93E- | *** | 1.77E- | ** | 0.28712054 | * | 0.23731782 | * | 0.12680544 | ** | 0.13453352 | ** | 0.07739565 | 0.30039236 | 0.08906749 | 0.25235957 | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| STAT3 | 3.68E- | **** | 4.05E- | **** | 6.26E- | **** | 6.33E- | **** | 0.43062317 | **** | 0.44841214 | **** | 0.27642249 | **** | 0.28223771 | **** | 0.2708093 | *** | 0.2661371 | *** | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| Th22 | CCR10 | 3.56E- | **** | 3.86E- | **** | 7.50E- | 2.01E- | 4.50E- | 4.72E- | 0.14849075 | 0.19154182 | 0.1656466 | 0.16134747 | 0.11972348 | ** | 0.11561832 | * | 0.11633376 | 0.11886214 | 0.11231932 | 0.14841281 |
| 01 | 01 | 02 | 01 | 02 | 01 | ||||||||||||||||
| AHR | 3.72E- | **** | 3.90E- | **** | 3.62E- | **** | 4.03E- | **** | 0.19410906 | 0.08650592 | 0.25659853 | * | 0.334679 | **** | 0.33426283 | **** | 0.1303321 | 0.08033288 | 0.21327457 | ** | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| Treg | FOXP3 | 1.53E- | ** | 1.89E- | *** | 2.31E- | **** | 2.22E- | *** | 0.13412853 | 0.23860039 | 0.134337 | 0.25716786 | 0.10742879 | * | 0.16560909 | *** | 0.45138729 | **** | 0.4374526 | **** |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| CCR8 | 3.64E- | **** | 4.44E- | **** | 1.58E- | ** | 1.75E- | ** | 0.05551354 | 0.62702001 | 0.13921472 | 0.24013409 | 0.18501258 | **** | 0.23649006 | **** | 0.20990708 | ** | 0.24182654 | ** | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| CD25 | 2.48E- | **** | 3.42E- | **** | 2.08E- | *** | 1.97E- | ** | 0.14682024 | 0.1966425 | 0.31443993 | ** | 0.14642496 | *** | 0.22127487 | **** | 0.13443426 | 0.07118479 | 0.16780586 | * | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| T cell | PD-1 | 2.30E- | **** | 3.08E- | **** | -1.70E- | 7.02E- | -4.50E- | 3.31E- | -0.0770204 | 0.49988903 | 0.00086799 | 0.99418501 | 0.12554469 | ** | 0.13635659 | ** | 0.04247263 | 0.57023309 | 0.05434399 | 0.48547745 |
| exhaustion | 01 | 01 | 02 | 01 | 02 | 01 | |||||||||||||||
| CTLA4 | 1.82E- | *** | 2.59E- | **** | -5.80E- | 3.28E- | -6.20E- | 3.19E- | -0.0821567 | 0.4716461 | 0.05809356 | 0.62541006 | 0.01037741 | 0.81301841 | 0.07278058 | 0.10687844 | 0.05182194 | 0.48841729 | 0.04216808 | 0.58845274 | |
| 01 | 01 | 02 | 01 | 02 | 01 | ||||||||||||||||
| Macrophage | CD68 | 2.23E- | **** | 2.84E- | **** | 2.00E- | 7.29E- | 3.60E- | 5.64E- | -0.0556475 | 0.62618744 | 0.10318644 | 0.3849944 | 0.10119248 | * | 0.14927373 | *** | 0.0988505 | 0.18552671 | 0.09572105 | 0.21850046 |
| 01 | 01 | 02 | 01 | 02 | 01 | ||||||||||||||||
| CD11b | 2.71E- | **** | 3.29E- | **** | 1.23E- | * | 9.70E- | 1.19E- | -0.0995618 | 0.3826676 | 0.04868925 | 0.68249282 | 0.09386498 | * | 0.12810879 | ** | 0.20477516 | ** | 0.22566575 | ** | |
| 01 | 01 | 01 | 02 | 01 | |||||||||||||||||
| M1 | NOS2 | 1.43E- | ** | 1.54E- | ** | 2.10E- | *** | 2.31E- | *** | 0.11161421 | 0.32743153 | 0.17231631 | 0.14489864 | 0.16362206 | *** | 0.15766382 | *** | 0.30284556 | **** | 0.27522138 | *** |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| ROS | * | * | ** | ** | 0.11315899 | 0.32073843 | 0.24617754 | * | 0.14626064 | *** | 0.17242222 | *** | 0.08824225 | 0.23749987 | 0.08387463 | 0.28118635 | |||||
| (Continued) | |||||||||||||||||||||
| TABLE 1 | Continued | |||||||||||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Cell type | Gene marker | LIHC (n=371) | KIRP (n=290) | ACC (n= 79) | HNSC (n= 522) | PCPG (n= 181) | |||||||||||||||
| None | Purity | None | Purity | None | Purity | None | Purity | None | Purity | ||||||||||||
| Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | Cor | P | ||
| 1.33E- | 1.29E- | 1.66E- | 1.63E- | ||||||||||||||||||
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| M2 | ARG1 | -2.62E- | **** | -2.72E- | **** | 1.17E- | * | 1.17E- | 6.00E- | 0.14142076 | 0.21379449 | 0.15715121 | 0.18424652 | -0.0656845 | 0.13394232 | -0.0512549 | 0.25648263 | 0.07751927 | 0.29961872 | 0.08116498 | 0.29707519 |
| 01 | 01 | 01 | 01 | 02 | |||||||||||||||||
| MRC1 | -3.30E- | 5.31E- | 5.00E- | 9.33E- | 1.34E- | * | 1.28E- | * | -0.0117575 | 0.91808902 | 0.13149297 | 0.26746961 | 0.1655064 | *** | 0.2373637 | **** | 0.19055309 | * | 0.25344635 | *** | |
| 02 | 01 | 03 | 01 | 01 | 01 | ||||||||||||||||
| TAM | HLA-G | 1.07E- | * | 1.18E- | * | -9.20E- | 1.17E- | -5.20E- | 4.06E- | 0.15963973 | 0.1599252 | 0.20024343 | 0.08939423 | 0.0905184 | * | 0.11910112 | ** | 0.05640823 | 0.45070618 | 0.0395455 | 0.61187369 |
| 01 | 01 | 02 | 01 | 02 | 01 | ||||||||||||||||
| CD80 | 3.14E- | **** | 4.04E- | **** | 1.91E- | ** | 1.78E- | ** | -0.0350787 | 0.75891111 | 0.01386519 | 0.90731564 | 0.09485578 | * | 0.14797968 | *** | 0.01826356 | 0.80720824 | 0.02665436 | 0.73240816 | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| CD86 | 2.51E- | **** | 3.59E- | **** | -2.94E- | 6.18E- | -4.41E- | 4.80E- | -0.2231256 | * | -0.1166732 | 0.32560102 | 0.0818514 | 0.06165918 | 0.14779467 | ** | 0.07931921 | 0.28850321 | 0.09038293 | 0.2453934 | |
| 01 | 01 | 02 | 01 | 02 | 01 | ||||||||||||||||
| Monocyte | CD14 | -3.26E- | **** | -3.17E- | **** | -7.30E- | 9.01E- | -3.83E- | 5.40E- | -0.1328384 | 0.24318839 | -0.0107557 | 0.92803864 | -0.003942 | 0.92840688 | 0.05890325 | 0.19211542 | 0.10699411 | 0.1516852 | 0.09844765 | 0.20560418 |
| 01 | 01 | 03 | 01 | 02 | 01 | ||||||||||||||||
| CD16 | 2.10E- | **** | 2.76E- | **** | 1.35E- | * | 1.01E- | 1.05E- | -0.0831061 | 0.46652131 | 0.03230162 | 0.78616605 | 0.10422137 | * | 0.16355297 | *** | 0.03651873 | 0.62550149 | 0.03354334 | 0.66694776 | |
| 01 | 01 | 01 | 01 | 01 | |||||||||||||||||
| NK | XCL1 | 2.32E- | **** | 1.91E- | *** | 7.72E- | 9.90E- | 9.11E- | 8.77E- | 0.02284159 | 0.84788697 | -0.1067507 | 0.3490793 | -0.0260368 | 0.56451126 | -0.0333934 | 0.44645776 | 0.12868947 | 0.09743003 | 0.14941162 | * |
| 01 | 01 | 04 | 01 | 03 | 01 | ||||||||||||||||
| KIR3DL1 | 5.61E- | 2.80E- | 8.78E- | 1.03E- | 6.03E- | 3.07E- | 5.48E- | 3.80E- | -0.1080133 | 0.34337567 | -0.0231396 | 0.84592659 | -0.0285347 | 0.51536293 | 0.00454382 | 0.91992279 | 0.00124888 | 0.98668743 | 0.00453482 | 0.95361888 | |
| 02 | 01 | 02 | 01 | 02 | 01 | 02 | 01 | ||||||||||||||
| CD7 | 1.31E- | * | 1.89E- | *** | -4.34E- | 4.61E- | -4.16E- | 5.05E- | -0.0596154 | 0.60174559 | 0.14536563 | 0.21978575 | -0.064338 | 0.14211828 | -0.0050205 | 0.91155445 | 0.0425212 | 0.56979187 | 0.04823681 | 0.53589303 | |
| 01 | 01 | 02 | 01 | 02 | 01 | ||||||||||||||||
| Neutrophil | CD15 | 4.23E- | **** | 4.56E- | **** | 3.19E- | **** | 3.30E- | **** | 0.46251217 | **** | 0.46438564 | **** | 0.37948184 | **** | 0.38474495 | **** | 0.42227551 | **** | 0.43137235 | **** |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| MPO | 7.95E- | 1.26E- | 1.04E- | 5.50E- | -1.01E- | 8.60E- | -1.23E- | * | -0.1038527 | 0.36239205 | -0.041902 | 0.72484874 | 0.1186357 | ** | 0.16703874 | *** | 0.01973147 | 0.79205248 | -0.0302399 | 0.69806127 | |
| 02 | 01 | 01 | 02 | 01 | 02 | 01 | |||||||||||||||
| DC | CD1C | 1.91E- | *** | 1.91E- | *** | 1.52E- | ** | 1.52E- | ** | 0.02211034 | 0.84663617 | 0.02211034 | 0.84663617 | -0.1013037 | * | -0.1013037 | * | 0.205807 | ** | 0.205807 | ** |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
| CD141 | 1.19E- | * | 1.67E- | ** | 3.96E- | **** | 4.06E- | **** | -0.0938169 | 0.41085604 | 0.0238002 | 0.84158423 | -0.0592202 | 0.17670668 | -0.0481172 | 0.2867881 | -0.1068383 | 0.15228572 | -0.0509426 | 0.51323863 | |
| 01 | 01 | 01 | 01 | ||||||||||||||||||
Tfh, follicular helper T cell; Th, T helper cell; Treg, regulatory T cell; TAM, tumor-associated-macrophage; NK, natural killer cell; DC, dendritic cell; None, correlation without adjustment; Purity, correlation adjusted for tumor purity; Cor, R value of Spearman’s correlation. * P< 0.01; ** P < 0.001; *** P < 0.0001, **** P < 0.0001.
expression was positively correlated with low TMB in KIRP (P = 0.0061). In addition, the coefficient values for MSI indicated that NAT10 expression is positively correlated with high MSI in LIHC (P = 0.0092, Figure 6D). Overall, these results show that the relationships of NAT10 expression with TMB and MSI are diverse among these five types of cancer.
Interactions and Correlations of Predicted Proteins With NAT10
NAT10, the only confirmed regulator of mRNA acetyltransferase, shows remarkable correlation with most cancers in immune infiltration. However, as in the case of m6A RNA methylation regulators which change the levels of m6A in immune infiltration of cancers (35, 36), the details of the molecular mechanism of NAT10 involved in the acetylation of mRNA are not clear. We tried to screen out the targeting NAT10-binging proteins and the NAT10-correlated genes for in-depth pathway enrichment analyses. By using STRING tool and GEPIA2, we get total 50 NAT10-binding proteins (Figure 7A) and top 100 genes that correlated with NAT10 expression. Also, we found two common genes, namely, BMS1 and NOL10, between the above two groups (Figure 7B). As shown in Figure 7C, the NAT10 expression level was positively correlated with that of CAPRIN1 (Cell Cycle Associated Protein 1) (R=0.68), EIF3M (Eukaryotic translation initiation factor 3, subunit M) (R=0.56), NCL (Nucleolin) (R=0.55), PDCD11 (Programmed Cell Death 11) (R=0.54), ANAPC1 (Anaphase Promoting Complex Subunit 1) (R=0.54) genes (all p <0.001). Then, the corresponding heatmap showed a strong positive relationship between NAT10 and the above five genes in the most types of cancers (Figure 7D).
In addition, by using Metacore system, pathway maps analysis results showed that the two datasets were significantly enriched in metabolism of RNA (including GTP-XTP metabolism, CTP/UTP metabolism and ATP/ITP metabolism). GO process results showed these genes were significantly enriched in ribonucleoprotein complex biogenesis, rRNA processing and rRNA metabolic process. And, translation initiation and mRNA processing were enriched in process networks (Figure 7E).
DISCUSSION
NAT10 was the first acetylation regulator to be proved to maintain effective translation and stabilize mRNA by forming ac4C on mRNA (11). Although studies of NAT10 have been limited, increased levels of ac4C in urine are known to be correlated with four types of cancer (14-17). In addition, several studies have shown that overexpression of NAT10 could promote tumor progression in cancers including colorectal cancer, epithelial ovarian cancer, and melanoma (20, 21, 26). Here, we report that a higher level of NAT10 mRNA and protein was comprehensively found in multiple cancers according to several different databases. Meanwhile, using OS, PFS, DFS, and DSS data from TCGA, we discovered that three of 33 cancers (ACC, KIRP, LIHC) showed consistent correlations
between unfavorable prognosis wtih NAT10 expression; NAT10 expression in HNSC and PCPG showed significant correlations with OS, PFS, and DSS but not DFS. in particular, there were significant correlations with NAT10 expression in LIHC and KIRP. Prognosis can vary according to characteristics such as gender, race, tumor grade, and tumor stage. First, we found significant increased NAT10 expression at stage III compared with stage I in LICH, KIRP, and ACC. Second, high levels of NAT10 expression were shown to be almost consistently correlated with poor prognosis in liver cancer across gender, race, alcohol consumption, hepatitis virus, tumor stage, tumor grade and AJCC_T, with the highest HRs for poor OS and PFS. In KIRP and HNSC, these correlations were found in our study. Together, these findings strongly suggest that NAT10 represents an independent prognostic biomarker for liver cancer.
The tumor microenvironment (TME) contains various cells including a large proportion of infiltrating immune cells (37). Conventionally, the infiltration of immune cells in the TME is a component of an antitumor strategy to avoid tumor cells being killed (31, 38). Furthermore, in two (ACC and HNSC) of the above five types of cancer, NAT10 expression showed a significant positive correlation with tumor purity in TIMER2 and a significant correlation with prognosis in GEPIA2, whereas KIRP, LIHC, and PCPG had no correlation of NAT10 with tumor purity in TIMER2. In addition, the types of infiltrating immune cells in five types of cancer were as follows: B cells, CD8+ T cells, CD4+ T cells, macrophages, neutrophils, and DCs in LIHC; B cells, CD4+ T cells, neutrophils, and DCs in ACC; CD8+ T cells, neutrophils, and DCs in HNSC; neutrophils and DCs in KIRP; B cells and macrophages in PCPG. Moreover, the relationships between NAT10 expression and immune cell markers reveal the role of NAT10 in regulating tumor immunology in the above five cancers. In particular, NAT10 expression was significantly associated with 42 of 45 immune cell markers in LIHC, that is, all markers except MRC1 for M2 macrophages, KIR3DL1 for NK cells, and MPO for neutrophils. However, only 20 gene markers in PCPG, 22 gene markers in KIRP, 28 gene markers in HNSC, and eight gene markers in ACC showed significant correlations with high NAT10 expression. Interestingly, most gene markers in these five types of cancer were involved in B cell, T cell exhaustion, and TAM. Otherwise, endothelial cells and fibroblasts were strongly positively correlated with NAT10 expression in KIRP and LIHC, whereas moderate or weak correlations with NAT10 expression were found in ACC, HNSC, and PCPG using MCPcounter datasets. These results reveal that NAT10 plays an important part in recruitment and regulation of immune infiltrating cells in LIHC.
Systematic analysis of the correlations between NAT10 expression and immune checkpoint genes (31), immune neoantigens (32), TMB (33), and MSI (34) is conducive to a more comprehensive understanding of TME, which could be used to synthesize new antigen vaccines for antitumor therapies. First, in our study of immune checkpoint genes, we found the most significant positive correlations with NAT10
A
BMS1
NOL6
B
RPS5
RPS14
UTP18
NOP56
RPS8
RPS13
NAT10
RPS24
NOL 10
Correlated
Interacted
RPS4X
RPS6
DCAF13
SNU13
IMP4
WDR3
UTP4
FBL
HEATR1
KRR1
WDR75
IMP3
RCL1
RPS11
RPS16
NOP58
98
2
48
UTP20
NAT10
DNTTIP2
RPS28
MPHOSPH10
RPS15A
RRP9
UTP11
UTP3
PNO1
TBL3
UTP6
WDR36
NOCAL
UTP15
EMG1
BMS1
NOL10
WDR46
FCF1
C
RSL10
RPS9
NOP14
RPS23
유
p-value = 0
.
M
0
R = 0.68
p-value = 0
R=0,55
*
:
p-value = 0
R = 0.55
p-value = 0
R=0.54
p-value = 0
=
4
R = 0.54
log2(CAPRINI TPM)
·
log2(EIF3M TPM)
-
log2(NCL TPM)
log2(PDCD11 TPM)
>
log2(ANAPCI TPM)
0
.
·
4
*
-
·
+
₼
.
0
%
₦
-
-
0
.
0
-
0
.
0
-
0
*
0
2
4
6
0
2
4
6
0
2
4
8
0
2
4
6
0
2
4
6
log2(NAT10 TPM)
log2(NAT10 TPM)
log2(NAT10 TPM)
log2(NAT10 TPM)
log2(NAT10 TPM)
Spearman_Cor
1
D
0
8 p>0.05
-1
p … 0.05
UVM (n=80)
UCS (n=57)
UCEC (n=545)
THYM (n=120)
THCA (n=509)
TGCT (n=150)
STAD (n=415)
SKCM-Primary (n=103)
SKCM-Metastasis (n=368)
SKCM (n=471)
SARC (n=260)
READ (n=166)
PRAD (n=498)
PCPG (n=181)
PAAD (n=179)
OV (n=303)
MESO (n=87)
LUSC (n=501)
LUAD (n=515)
LIHC (n=371)
LGG (n=516)
KIRP (n=290)
KIRC (n=533)
KICH (n=66)
HNSC-HPV+ (n=98)
HNSC-HPV-(n=422)
HNSC (n=522)
GBM (n=153)
ESCA (n=185)
DLBC (n=48)
COAD (n=458)
CHOL (n=36)
CESC (n=306)
BRCA-LumB (n=219)
BRCA-LumA (n=568)
BRCA-Her2 (n=82)
BRCA-Basal (n=191)
BRCA (n=1100)
BLCA (n=408)
ACC (n=79)
ANAPC1
CAPRIN1
EIF3M
X
NCL
PDCD11
E
Pathway Maps
GO Processes
Process Networks
1
2
3
-log(pValue)
15
30
45
60
75
3
6
9
12
15
-log(pValue)
1
1. GTP-XTP metabolism
-log(pValue)
2
2. CTP/UTP metabolism
1. ribonucleoprotein complex biogenesis
1
1. Translation_Translation
3
3.ATP/ITP metabolism
1
initiation
2
4
4.Cell cycle_Nucleocytoplasmic
2. Transcription_mRNA processing
transport of CDK/Cyclins
2
2.rRNA processing
3
3. Translation_Elongation-
5
5. DNA damage_p53 activation by DNA damage
3
3.rRNA metabolic process
Termination
4
4
4. ribosome biogenesis
4.Cell cycle_Mitosis
6
6. Transport_RAN regulation
pathway
5
7. Cell cycle_Chromosome
5
5.RNA processing
5.Cell cycle_G2-M
7
6
6. Protein folding_Protein folding nucleus
condensation in prometaphase
6
6.RNA metabolic process
8
8. Translation_Role of Retinoic
acid signaling in the initiation of translation
7
7.ncRNA processing
7
7.Cell cycle_G1-S
8
9.CFTR folding and maturation (normal and CF)
8
8. nucleic acid metabolic process
8.Cytoskeleton_Spindle microtubules
9
10.Apoptosis and survival_Role
9
9. gene expression
9
9.DNA damage_DBS repair
10
of nuclear PI3K in NGF/ TrkA signaling
10
10.ncRNA metabolic process
10
10.Protein folding_Folding in normal condition
-
Maps
Processes
Networks
FIGURE 7 | NAT10-related gene enrichment analysis. (A) We obtained the available experimentally determined top 50 NAT10-binding proteins using the STRING database. (B) An intersection analysis of the NAT10-binding and correlated genes was applied. (C) Top five (including ANAPC1, CAPRIN1, EIF3M, NCL and PDCD11) most NAT10-correlated genes in TCGA projects was analyzed by using the GEPIA2. (D) The corresponding heatmap data between NAT10 with these five genes in the detailed cancer types was displayed. (E) Pathway maps analysis (left), GO process analysis (middle) and Process networks analysis (right) of NAT10- binding and correlated genes.
expression in KIRP (15 of 47) and LIHC (31 of 47), whereas HNSC (three of 47), ACC (three of 47), and PCPG (seven of 47) did not show these strong relationships, although there were still positive correlations. Second, no relationship was found between NAT10 expression and antigens. Third, NAT10 expression was positively correlated with low TMB in KIRP (P = 0.0061), and with high MSI in LIHC (P =0.0092). Overall, these results show that the relationships of NAT10 expression with TMB and MSI are diverse in these five types of cancer.
As in the case of m6A RNA methylation regulators, it has been reported that m6A regulators play independent role of immune infiltration in several types of cancers (35, 36, 39). In this study, we first presented the evidence of the potential correlation between NAT10, RNA acetylation regulator, with immune infiltration. Furthermore, we assessed the 50 NAT10- binding proteins and top 100 NAT10-correlated genes across all tumors to get a series of pathway maps, GO processes and process networks and identified the potential enrichment of “metabolism of RNA”, “rRNA metabolic process” and “mRNA
processing” in the etiology or pathogenesis of cancers. Because of the extensive role of NAT10 in post-transcriptional modification (11, 40), we therefore have reason to believe NAT10 may play an important role about immune infiltration in tumors. While, this hypothesis still needs further verification.
However, there were limitations to our study. First, systematic bias may have been generated because of the large proportion of microarray and sequencing data used in our study; higher- resolution methods such as single-cell RNA sequencing could be used to overcome this issue in future studies. Second, although NAT10 plays an important part in ac4C formation in mRNA, there was no information in the databases about the detailed changes in ac4C in these cancers. Third, this study only conducted a bioinformatics analysis of NAT10 expression and patient survival across several databases; further experiments in vivo and in vitro should be performed in future studies.
CONCLUSION
In summary, increased NAT10 expression was correlated with poor prognosis in 12 types of cancer, especially ACC, KIRP, LIHC, HNSC, and PCPG, and with increased immune infiltration levels of CD8+ T cells, CD4+ T cells, macrophages, neutrophils, and DCs in various cancers. In addition, NAT10 expression may contribute to regulation of TAMs, B cells, exhausted T cells, and other immune cells in LIHC. Therefore, NAT10 is likely to have an independent role in immune cell infiltration and could represent a unique prognostic biomarker in patients with liver cancers.
DATA AVAILABILITY STATEMENT
The datasets presented in this study can be found in online repositories. The names of the repository/repositories and accession number(s) can be found in the article/ Supplementary Material.
ETHICS STATEMENT
All the data included in the analysis are from public databases without the need of permissions from local ethical committees. Written informed consent for participation was not required for this study in accordance with the national legislation and the institutional requirements.
AUTHOR CONTRIBUTIONS
CY and TW designed this study. JZ, JL, KZ, and WS extracted the information from the databases. CY and JZ analyzed the data. XK and JS supervised the entire study. CY and TW wrote the
manuscript. XZ provided the tissues. All authors contributed to the article and approved the submitted version.
FUNDING
This work is Supported by the Youth Program of National Natural Science Foundation of China (Grant No. 81800313) and the Youth Program of Natural Science Foundation of Jiangsu Province (Grant No. BK20181084).
SUPPLEMENTARY MATERIAL
The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fonc.2021. 630417/full#supplementary-material
Supplementary Figure 1 | Expression of the NAT10 gene in different tumors and pathological stages. (A) The expression statuses of the NAT10 gene in ACC, CESC, DLBC, GBM, LAML, LGG, OV, PAAD, SKCM, TGCT, THYM and UCS in TCGA project were compared with the corresponding normal tissues of the GTEx databases. (B-E) Expression of the NAT10 gene by different pathological stages of ACC, BLCA, BRCA, CESC (B), CHOL, COAD, DLBC, HNSC, KICH (C), KIRC, LUSC, OV, READ, SKCM (D), STAD, TGCT, THCA, UCEC and UCS (E). (E-G) Expression of the NAT10 total protein by different pathological stages of breast cancer, clear cell RCC, colon cancer (F), LUAD, ovarian cancer and UCEC (G).
Supplementary Figure 2 | The immunohistochemical staining from HPA database. (A-E) The immunohistochemical results from HPA database between prostate (A), lung (B), liver (C), breast (D) and colorectal cancer (E) with normal tissues.
Supplementary Figure 3 | NAT10 expression in LIHC and Paracancerous tissues from 10 patients. (A, B) The immunohistochemical (A) and mean % NAT10- positive cells results (B) in LIHC and Paracancerous tissues from 10 patients. (C) The NAT10 mRNA relevant expression in LIHC and Paracancerous tissues from 10 patients.
Supplementary Figure 4 | Kaplan-Meier survival curves comparing high and low expression of NAT10 in different types of cancer in the TCGA database. (A-F) Survival curves for OS in six different cancers. (G-J) Survival curves for progression-free interval (PFI) in four different cancers. (K-O) Survival curves for disease-free interval (DFI) in five different cancers. (P-S) Survival curves for DSS in four different cancers. Red curve represents patients with high expression of NAT10.
Supplementary Figure 5 | Correlation between NAT10 expression with immune infiltration level in MCPcounter. The lower triangle in each tile indicates coefficients calculated by Pearson’s correlation test, and the upper triangle indicates log10- transformed P-values.
Supplementary Table 1 | NAT10 expression in cancers versus normal tissue in Oncomine database.
Supplementary Table 2 | Correlation between NAT10 expression and patient prognosis for different cancers in PrognoScan database.
Supplementary Table 3 | Short bars are due to limited sample size for parameters; HR values could not be calculated. Bold values indicate P < 0.05.
Supplementary Table 4 | The overview about significant correlation between inflammatory cell types with pan-cancer.
REFERENCES
1. Cohn WE. Pseudouridine, a Carbon-Carbon Linked Ribonucleoside in Ribonucleic Acids: Isolation, Structure, and Chemical Characteristics. J Biol Chem (1960) 235:1488-98. doi: 10.1016/S0021-9258(18)69432-3
2. Davis FF, Allen FW. Ribonucleic Acids From Yeast Which Contain a Fifth Nucleotide. J Biol Chem (1957) 227(2):907-15. doi: 10.1016/S0021-9258(18) 70770-9
3. Wang X, Lu Z, Gomez A, Hon GC, Yue Y, Han D, et al. N6-Methyladenosine- Dependent Regulation of Messenger Rna Stability. Nature (2014) 505 (7481):117-20. doi: 10.1038/nature12730
4. Fustin JM, Doi M, Yamaguchi Y, Hida H, Nishimura S, Yoshida M, et al. Rna-Methylation-Dependent RNA Processing Controls the Speed of the Circadian Clock. Cell (2013) 155(4):793-806. doi: 10.1016/ j.cell.2013.10.026
5. Molinie B, Wang J, Lim KS, Hillebrand R, Lu ZX, Van Wittenberghe N, et al. M(6)a-LAIC-Seq Reveals the Census and Complexity of the M(6)a Epitranscriptome. Nat Methods (2016) 13(8):692-8. doi: 10.1038/nmeth.3898
6. Meyer KD, Patil DP, Zhou J, Zinoviev A, Skabkin MA, Elemento O, et al. 5’ UTR M(6)a Promotes Cap-Independent Translation. Cell (2015) 163(4):999- 1010. doi: 10.1016/j.cell.2015.10.012
7. Zachau HG, Dutting D, Feldmann H. The Structures of Two Serine Transfer Ribonucleic Acids. Hoppe Seylers Z Physiol Chem (1966) 347(4):212-35. doi: 10.1515/bchm2.1966.347.1.212
8. Kawai G, Hashizume T, Miyazawa T, McCloskey JA, Yokoyama S. Conformational Characteristics of 4-Acetylcytidine Found in Trna. Nucleic Acids Symp Ser (1989) 21):61-2.
9. Sharma S, Langhendries JL, Watzinger P, Kotter P, Entian KD, Lafontaine DL. Yeast Kre33 and Human NAT10 are Conserved 18s Rrna Cytosine Acetyltransferases That Modify Trnas Assisted by the Adaptor Tan1/ Thumpd1. Nucleic Acids Res (2015) 43(4):2242-58. doi: 10.1093/nar/gkv075
10. Arango D, Sturgill D, Alhusaini N, Dillman AA, Sweet TJ, Hanson G, et al. Acetylation of Cytidine in Mrna Promotes Translation Efficiency. Cell (2018) 175(7):1872-86.e24. doi: 10.1016/j.cell.2018.10.030
11. Dominissini D, Rechavi G. N(4)-Acetylation of Cytidine in mRNA by NAT10 Regulates Stability and Translation. Cell (2018) 175(7):1725-7. doi: 10.1016/ j.cell.2018.11.037
12. Thomale J, Nass G. Elevated Urinary Excretion of RNA Catabolites as an Early Signal of Tumor Development in Mice. Cancer Lett (1982) 15(2):149-59. doi: 10.1016/0304-3835(82)90045-3
13. Liebich HM, Lehmann R, Xu G, Wahl HG, Haring HU. Application of Capillary Electrophoresis in Clinical Chemistry: The Clinical Value of Urinary Modified Nucleosides. J Chromatogr B BioMed Sci Appl (2000) 745(1):189-96. doi: 10.1016/S0378-4347(00)00263-2
14. Feng B, Zheng MH, Zheng YF, Lu AG, Li JW, Wang ML, et al. [Application of Urinary Nucleosides in the Diagnosis and Surgical Monitoring of Colorectal Cancer]. Zhonghua Wai Ke Za Zhi (2005) 43(9):564-8.
15. Szymanska E, Markuszewski MJ, Markuszewski M, Kaliszan R. Altered Levels of Nucleoside Metabolite Profiles in Urogenital Tract Cancer Measured by Capillary Electrophoresis. J Pharm BioMed Anal (2010) 53(5):1305-12. doi: 10.1016/j.jpba.2010.07.031
16. Zhang T, Wu X, Ke C, Yin M, Li Z, Fan L, et al. Identification of Potential Biomarkers for Ovarian Cancer by Urinary Metabolomic Profiling. J Proteome Res (2013) 12(1):505-12. doi: 10.1021/pr3009572
17. Li H, Qin Q, Shi X, He J, Xu G. Modified Metabolites Mapping by Liquid Chromatography-High Resolution Mass Spectrometry Using Full Scan/All Ion Fragmentation/Neutral Loss Acquisition. J Chromatogr A (2019) 1583:80-7. doi: 10.1016/j.chroma.2018.11.014
18. Lv J, Liu H, Wang Q, Tang Z, Hou L, Zhang B. Molecular Cloning of a Novel Human Gene Encoding Histone Acetyltransferase-Like Protein Involved in Transcriptional Activation of Htert. Biochem Biophys Res Commun (2003) 311(2):506-13. doi: 10.1016/j.bbrc.2003.09.235
19. Liu HY, Liu YY, Yang F, Zhang L, Zhang FL, Hu X, et al. Acetylation of MORC2 by NAT10 Regulates Cell-Cycle Checkpoint Control and Resistance to DNA-damaging Chemotherapy and Radiotherapy in Breast Cancer. Nucleic Acids Res (2020) 48(7):3638-56. doi: 10.1093/nar/gkaa130
20. Tan TZ, Miow QH, Huang RY, Wong MK, Ye J, Lau JA, et al. Functional Genomics Identifies Five Distinct Molecular Subtypes With Clinical
Relevance and Pathways for Growth Control in Epithelial Ovarian Cancer. EMBO Mol Med (2013) 5(7):1051-66. doi: 10.1002/emmm.201201823
21. Oh TI, Lee YM, Lim BO, Lim JH. Inhibition of NAT10 Suppresses Melanogenesis and Melanoma Growth by Attenuating Microphthalmia- Associated Transcription Factor (Mitf) Expression. Int J Mol Sci (2017) 18 (9):1924. doi: 10.3390/ijms18091924
22. Tschida BR, Temiz NA, Kuka TP, Lee LA, Riordan JD, Tierrablanca CA, et al. Sleeping Beauty Insertional Mutagenesis in Mice Identifies Drivers of Steatosis-Associated Hepatic Tumors. Cancer Res (2017) 77(23):6576-88. doi: 10.1158/0008-5472.CAN-17-2281
23. Li Q, Liu X, Jin K, Lu M, Zhang C, Du X, et al. NAT10 is Upregulated in Hepatocellular Carcinoma and Enhances Mutant p53 Activity. BMC Cancer (2017) 17(1):605. doi: 10.1186/s12885-017-3570-4
24. Liang P, Hu R, Liu Z, Miao M, Jiang H, Li C. Nat10 Upregulation Indicates a Poor Prognosis in Acute Myeloid Leukemia. Curr Probl Cancer (2020) 44 (2):100491. doi: 10.1016/j.currproblcancer.2019.06.006
25. Cao Y, Yao M, Wu Y, Ma N, Liu H, Zhang B. N-Acetyltransferase 10 Promotes Micronuclei Formation to Activate the Senescence-Associated Secretory Phenotype Machinery in Colorectal Cancer Cells. Transl Oncol (2020) 13(8):100783. doi: 10.1016/j.tranon.2020.100783
26. Duan J, Zhang Q, Hu X, Lu D, Yu W, Bai H. N(4)-Acetylcytidine is Required for Sustained Nlrp3 Inflammasome Activation Via Hmgb1 Pathway in Microglia. Cell Signal (2019) 58:44-52. doi: 10.1016/j.cellsig.2019.03.007
27. Doskocil J, Holy A. Inhibition of Nucleoside-Binding Sites by Nucleoside Analogues in Escherichia Coli. Nucleic Acids Res (1974) 1(3):491-502. doi: 10.1093/nar/1.3.491
28. Schuierer S, Tranchevent LC, Dengler U, Moreau Y. Large-Scale Benchmark of Endeavour Using MetaCore Maps. Bioinformatics (2010) 26(15):1922-3. doi: 10.1093/bioinformatics/btq307
29. Kawaguchi Y, Cooper B, Gannon M, Ray M, MacDonald RJ, Wright CV. The Role of the Transcriptional Regulator Ptf1a in Converting Intestinal to Pancreatic Progenitors. Nat Genet (2002) 32(1):128-34. doi: 10.1038/ng959
30. June CH. Adoptive T Cell Therapy for Cancer in the Clinic. J Clin Invest (2007) 117(6):1466-76. doi: 10.1172/JCI32446
31. Topalian SL, Drake CG, Pardoll DM. Immune Checkpoint Blockade: A Common Denominator Approach to Cancer Therapy. Cancer Cell (2015) 27(4):450-61. doi: 10.1016/j.ccell.2015.03.001
32. Yamamoto TN, Kishton RJ, Restifo NP. Developing Neoantigen-Targeted T Cell-Based Treatments for Solid Tumors. Nat Med (2019) 25(10):1488-99. doi: 10.1038/s41591-019-0596-y
33. Nikanjam M, Cohen PR, Kato S, Sicklick JK, Kurzrock R. Advanced Basal Cell Cancer: Concise Review of Molecular Characteristics and Novel Targeted and Immune Therapeutics. Ann Oncol (2018) 29(11):2192-9. doi: 10.1093/ annonc/mdy412
34. Srinivas PR, Kramer BS, Srivastava S. Trends in Biomarker Research for Cancer Detection. Lancet Oncol (2001) 2(11):698-704. doi: 10.1016/S1470- 2045(01)00560-5
35. Zhang B, Wu Q, Li B, Wang D, Wang L, Zhou YL. M(6)a Regulator-Mediated Methylation Modification Patterns and Tumor Microenvironment Infiltration Characterization in Gastric Cancer. Mol Cancer (2020) 19(1):53. doi: 10.1186/ s12943-020-01170-0
36. Du J, Ji H, Ma S, Jin J, Mi S, Hou K, et al. M6a Regulator-Mediated Methylation Modification Patterns and Characteristics of Immunity and Stemness in Low-Grade Glioma. Brief Bioinform (2021) bbab013. doi: 10.1093/bib/bbab013
37. Bindea G, Mlecnik B, Tosolini M, Kirilovsky A, Waldner M, Obenauf AC, et al. Spatiotemporal Dynamics of Intratumoral Immune Cells Reveal the Immune Landscape in Human Cancer. Immunity (2013) 39(4):782-95. doi: 10.1016/j.immuni.2013.10.003
38. Gajewski TF, Schreiber H, Fu YX. Innate and Adaptive Immune Cells in the Tumor Microenvironment. Nat Immunol (2013) 14(10):1014-22. doi: 10.1038/ni.2703
39. Chong W, Shang L, Liu J, Fang Z, Du F, Wu H, et al. M(6)a Regulator-Based Methylation Modification Patterns Characterized by Distinct Tumor Microenvironment Immune Profiles in Colon Cancer. Theranostics (2021) 11(5):2201-17. doi: 10.7150/thno.52717
40. Tsai K, Jaguva Vasudevan AA, Martinez Campos C, Emery A, Swanstrom R, Cullen BR. Acetylation of Cytidine Residues Boosts Hiv-1 Gene Expression by
Increasing Viral RNA Stability. Cell Host Microbe (2020) 28(2):306-12.e6. doi: 10.1016/j.chom.2020.05.011
Conflict of Interest: The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Copyright @ 2021 Yang, Wu, Zhang, Liu, Zhao, Sun, Zhou, Kong and Shi. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.