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The value of WNT5A as prognostic and immunological biomarker in pan-cancer

Yingtong Feng1,2*, Yuanyong Wang1*, Kai Guo34, Junjun Feng4, Changjian Shao1, Minghong Pan1, Peng Ding1, Honggang Liu1, Hongtao Duan1, Di Lu5, Zhaoyang Wang1, Yimeng Zhang6, Yujing Zhang2, Jing Han6, Xiaofei Li1, Xiaolong Yan1

1Department of Thoracic Surgery, Tangdu Hospital, The Air Force Military Medical University, Xi’an, China; 2Department of Cardiothoracic Surgery, The 71st Group Army Hospital of PLA/The Affiliated Huaihai Hospital of Xuzhou Medical University, Xuzhou, China; 3Department of Thoracic Surgery, Shaanxi Provincial People’s Hospital, Xi’an, China; +Department of Human Resource Management, The 71st Group Army Hospital of PLA/The Affiliated Huaihai Hospital of Xuzhou Medical University, Xuzhou, China; ‘Department of Medical Oncology, Senior Department of Oncology, The Fifth Medical Center of PLA General Hospital, Beijing, China; ‘Department of Ophthalmology, Tangdu Hospital, The Air Force Military Medical University, Xi’an, China

Contributions: (I) Conception and design: Y Feng, Y Wang, K Guo, J Feng; (II) Administrative support: J Han, X Li, X Yan; (III) Provision of study materials or patients: X Yan, M Pan, H Liu, H Duan, D Lu, Y Zhang; (IV) Collection and assembly of data: J Han, Y Feng, Y Wang, J Feng, P Ding, Y Zhang; (V) Data analysis and interpretation: X Li, Y Feng, Y Wang, K Guo, C Shao, Z Wang; (VI) Manuscript writing: All authors; (VII) Final approval of manuscript: All authors.

*These authors contributed equally to this work.

Correspondence to: Jing Han. Department of Ophthalmology, Tangdu Hospital, The Air Force Military Medical University, 1 Xinsi Road, Xi’an 710038, China. Email: hanjing.cn@163.com; Xiaofei Li; Xiaolong Yan. Department of Thoracic Surgery, Tangdu Hospital, The Air Force Military Medical University, 1 Xinsi Road, Xi’an 710038, China. Email: lxfchest@fmmu.edu.cn; yanxiaolong@fmmu.edu.cn.

Background: Finding new immune-related biomarkers is one of the promising research directions for tumor immunotherapy. The WNT5A gene could stimulate the WNT pathway and regulate the progression of various tumors. Recent studies have partially revealed the relationship between WNT5A and tumor immunity, but the correlation and underlying mechanisms in pan-cancer remain obscure. Thus, we conducted this study aiming to characterize the prognostic value and immunological portrait of WNT5A in cancer.

Methods: The data obtained from The Cancer Genome Atlas (TCGA), Genotype-Tissue Expression (GTEx), and Cancer Cell Line Encyclopedia (CCLE) databases was utilized to analyze WNT5A expression levels by Kruskal-Wallis test and correlation to prognosis by Cox regression test and Kaplan- Meier test, while the data was also used to study the association between WNT5A expression and immune microenvironment, immune neoantigens, immune checkpoints, tumor mutational burden (TMB), and microsatellite instability (MSI) in pan-cancer. Gene set enrichment analysis (GSEA) was used to clarify the relevant signaling pathways. The R package was used for data analysis and to create the plots.

Results: The pan-cancer analysis revealed that the expression level of WNT5A is generally elevated in most tumors (19/34, 55.88%), and high WNT5A expression was correlated with poor prognosis in esophageal carcinoma (ESCA, P<0.05), low-grade glioma (LGG, P<0.01), adrenocortical carcinoma (ACC, P<0.01), pancreatic adenocarcinoma (PAAD, P<0.01), and head and neck squamous cell carcinoma (HNSC, P<0.05). In addition, WNT5A expression was positively associated with immune infiltration, stromal score, and immune checkpoints in most cancers, and correlated to immune neoantigens, TMB, and MSI. Finally, GSEA indicated that WNT5A is implicated in the transforming growth factor ß (TGF), Notch, and Hedgehog signaling pathways, which may be related to tumor immunity.

Conclusions: The expression of WNT5A is elevated in most tumors and associated with tumor prognosis. Furthermore, WNT5A is associated with tumor immunity and may be an immunological biomarker in cancer.

Keywords: WNT5A; pan-cancer analysis; prognosis; immunity

Submitted Feb 18, 2022. Accepted for publication Apr 13, 2022. doi: 10.21037/atm-22-1317

View this article at: https://dx.doi.org/10.21037/atm-22-1317

Introduction

Cancer is a widespread disease and is the leading cause of death worldwide (1). Despite the rapid development of various treatment approaches for cancers in recent years, prognosis, especially in advanced cancers, remains poor (2,3). Excitingly, the advent of immunotherapy has revolutionized the clinical practice of oncology. At present, the expression level of PD-L1 in tumor cells and tumor mutational burden (TMB) are commonly used as biomarkers. However, how to successfully identify patients benefitting from immunotherapy is still the major challenge for clinicians. Hence, seeking novel targets and prognostic biomarkers, especially those related to immunotherapy, is of profound significance. With the improvement of R package (https://www.r-project.org/; The R Foundation for Statistical Computing, Vienna, Austria) and public databases such as The Cancer Genome Atlas (TCGA), more and more therapeutic targets of cancer are being discovered by performing pan-cancer expression analysis through bioinformatic analysis (4).

The WNT proteins are a large family of secreted glycoprotein signaling molecules rich in cysteine which play an important role in tumor progression, including proliferation, differentiation, apoptosis, and migration (5). At least 19 members of the WNT family have been identified and divided into 2 types: classical WNT/ß-catenin signal molecules and non-classical signal molecules, according to their different biological functions (5,6). The WNT5A gene belongs to non-classical signaling molecules binding to different receptor complexes, and although its role in tumorigenesis is generally considered to be carcinogenic activities, controversy exists regarding its specific role (7). Several studies have reported that WNT5A has carcinogenic effects in lung cancer (8), gastric cancer (9), breast cancer (10), melanoma (11), and pancreatic cancer (12). But it has shown tumor suppressive effects in colon cancer (13), neuroblastoma (14), and thyroid cancer (15). Furthermore, conflicting effects have been recorded in the same tumor type. For example, Wu et al. found that WNT5A was highly expressed and has a carcinogenic effect in invasive

esophageal squamous cell carcinoma (ESCC) (16). However, Li et al. reported that WNT5A is often silenced by promoter methylation and shows tumor inhibition characteristics in ESCC (17). Therefore, the role of WNT5A in cancer needs to be further elucidated and systematic bioinformatics analysis of WNT5A in pan-cancer is the preferred option.

To date, immune checkpoint blockade therapy has altered the treatment scheme of various tumors (18). However, the low response rate in some tumor types is mainly due to the highly immunosuppressive microenvironment and the absence of T cell infiltration, which is an urgent problem to be solved in immunotherapy (19). In addition, accumulating evidence has revealed a novel role of WNT5A in immunomodulation. The evidence suggests that WNT5A has a double effect on the tumor microenvironment. On one side, it can activate the ROR1/Akt/p65 pathway to promote inflammation and chemotaxis of immune cells (19,20); on the other side, it can activate TLR/MyD88/p50 to promote the synthesis of the anti-inflammatory cytokine interleukin 10 (IL-10) and immune tolerance (19,21). More importantly, inhibition of WNT5A signaling has been shown to increase the expression of programmed death-ligand 1 (PD-L1) in tumor tissues, and enhance the activity of anti-programmed cell death protein 1 (PD-1) and anti-cytotoxic T-lymphocyte- associated protein 4 (CTLA-4) antibodies, improving the response to checkpoint inhibitor therapy (22,23). For these reasons, it is of great significance to provide insight into the relationship of WNT5A and tumor immunity. We present the following article in accordance with the REMARK reporting checklist (available at https://atm.amegroups.com/article/ view/10.21037/atm-22-1317/rc).

Methods

In this study, we revealed the expression of WNT5A and its potential prognostic value in pan-cancer using TCGA, Genotype-Tissue Expression (GTEx), and Cancer Cell Line Encyclopedia (CCLE) datasets. We then performed correlation analysis between WNT5A expression level and immune checkpoints, tumor-infiltrating immune cells, TMB, and microsatellite instability (MSI), which are closely

Table 1 Abbreviations of the tumors
AbbreviationsTumor name
ACCAdrenocortical carcinoma
BLCABladder cancer
BRCABreast cancer
CESCCervical squamous cell carcinoma and endocervical adenocarcinoma
CHOLCholangiocarcinoma
COADColon adenocarcinoma
COADREADColon and rectal cancer
DLBCLymphoid neoplasm diffuse large B-cell lymphoma
ESCAEsophageal carcinoma
GBMGlioblastoma multiforme
GBMLGGGlioblastoma multiforme low-grade glioma
HNSCHead and neck squamous cell carcinoma
KICHKidney chromophobe
KIPANPan-kidney cohort (KICH+KIRC+KIRP)
KIRCKidney renal clear cell carcinoma
KIRPKidney renal papillary cell carcinoma
LAMLAcute myeloid leukemia
LGGLower grade glioma
LIHCLiver hepatocellular carcinoma
LUADLung adenocarcinoma
LUSCLung squamous cell carcinoma
MESOMesothelioma
OVOvarian cancer
PAADPancreatic adenocarcinoma
PCPGPheochromocytoma and paraganglioma
PRADProstate adenocarcinoma
READRectum adenocarcinoma
SARCSarcoma
STADStomach adenocarcinoma
SKCMSkin cutaneous melanoma
STESStomach and esophageal carcinoma
TGCTTesticular germ cell tumors
THCAThyroid carcinoma
Table 1 (continued) Table 1 (continued)
AbbreviationsTumor name
THYMThymoma
UCECUterine corpus endometrial carcinoma
UCSUterine carcinosarcoma
UVMUveal melanoma
OSOsteosarcoma
ALLAcute lymphoblastic leukemia
NBNeuroblastoma
WTHigh-risk Wilms tumor

related to immunotherapy. Finally, we performed gene set enrichment analysis (GSEA) to identify the signaling pathways linked to WNT5A. Taken together, our pan- cancer analyses provide insights into the prognostic and immunotherapy role of WNT5A in various cancers.

Data acquisition

We downloaded WNT5A expression data of tumor and normal samples coupled with clinical information from TCGA (https://portal.gdc.cancer.gov) and GTEx dataset (https://commonfund.nih.gov/GTEx/). The WNT5A expression data of tumor cell lines were obtained from CCLE dataset (https://portals.broadinstitute.org/ccle). Moreover, cancer immune infiltration scores were analyzed with data from the Tumor Immune Estimation Resource (TIMER) database. The R package was used to analyze the data. The study was conducted in accordance with the Declaration of Helsinki (as revised in 2013). The full name and abbreviation of all the tumors are listed in Table 1.

Analysis of WNT5A expression levels

Kruskal-Wallis test line analysis of the WNT5A expression data was conducted to compare WNT5A messenger RNA (mRNA) expression in 31 different normal tissues and 21 various cancer cell lines. Then, the WNT5A expression levels compared between cancer and normal samples were evaluated with data solely from TCGA database. In addition, considering the small size of non-cancerous tissues in TCGA, the WNT5A expression data of the GTEx and TCGA databases was further analyzed.

Correlation analysis of WNT5A expression level and prognosis in pan-cancer

Survival analysis of the expression and survival data obtained from TCGA in pan-cancer was conducted to confirm the prognostic role of WNT5A in pan-cancer. For the predictive analysis, a one-way Cox regression test was used to reveal the correlation between WNT5A expression and patient survival. Furthermore, the Kaplan-Meier (K-M) test was used to analyze patient survival. Prognostic indicators consisted of overall survival (OS), disease-specific survival (DSS), disease- free interval (DFI), and progression-free interval (PFI). The results were presented in the form of forest plots (Cox regression test) and survival curves (K-M test).

Correlation analysis of the role of WNT5A in immune infiltration and tumor microenvironment

To evaluate the performance of WNT5A in immune infiltration, Spearman’s rank correlation coefficient was utilized to distinguish the role of WNT5A in immune cell infiltration, including B cells, CD4+ T cells, CD8+ T cells, macrophages, neutrophils, and dendritic cells (DCs). Furthermore, we implemented an Estimation of Stromal and Immune Cells in Malignant Tumors Using Expression data (ESTIMATE) algorithm to assess the tumor microenvironment-related scores obtained from the above mentioned databases.

Correlation analysis of WNT5A expression level and immune checkpoints and neoantigens

To further clarify the correlation between WNT5A and tumor immune activity, immune checkpoints and neoantigens were analyzed. Spearman’s rank correlation coefficient was performed to analyze the relationship between the expression of WNT5A and immune checkpoints, which were segregated into inhibitory and stimulatory groups. In addition, the number of neoantigens in every sample was detected and counted using a scanner, and the analysis mentioned above was applied to evaluate the correlation of WNT5A expression and the neoantigens number.

Correlation analysis of WNT5A expression level and TMB and MSI

The TMB is a quantifiable biomarker reflecting the mutational number of a tumor cell; MSI refers to the

occurrence of a new microsatellite allele phenomenon compared with normal tissue (24). Correlation of WNT5A expression with TMB and MSI was analyzed utilizing Pearson’s correlation coefficient. Bubble charts were used to present the results.

GSEA

It is common for GSEA to be utilized to analyze and explain changes in the level of coordination pathways (25). The signaling pathway of WNT5A was analyzed by GSEA analysis with the R package clusterProfiler. The Kyoto Encyclopedia of Genes and Genomes (KEGG database; KEGG; https://www.kegg.jp.) and hallmark gene sets from the Molecular Signature Database (MsigDB) were applied. Pathways with normalized enrichment score |NES| >1.5, false discovery rate (FDR) <0.25, and P<0.01 were considered significantly enriched.

Statistical analysis

Statistical analysis methods were described in the above parts. A value of P<0.05 (two-side) was considered significant.

Results

WNT5A is highly expressed in most cancers

Data from the CCLE database, GTEx dataset, and TCGA database were analyzed to evaluate the WNT5A expression in normal and tumor tissues. Data from the GTEx dataset showed WNT5A was normally expressed in 31 normal tissues, with higher expression levels present in the bladder, uterus, and vagina, and lower expression levels in blood and bone marrow (Figure 1A). The CCLE analysis demonstrated that WNT5A is more highly expressed in bone, soft tissue, and the thyroid, while more lowly expressed in biliary tract, intestine, pancreas, and stomach (Figure 1B). In order to explore the expression level of WNT5A in tumor and matched normal tissues, we first analyzed the data from TCGA database separately (Figure 1C), and then analyzed the data from both TCGA and GTEx datasets. These results showed that WNT5A expression was elevated (19/34, 55.88%) in lung squamous cell carcinoma (LUSC), lung adenocarcinoma (LUAD), esophageal carcinoma (ESCA), glioblastoma multiforme (GBM), glioblastoma multiforme low-grade glioma (GBMLGG), low-grade glioma (LGG), breast cancer (BRCA), stomach and esophageal carcinoma (STES), kidney renal papillary cell

@ Annals of Translational Medicine. All rights reserved.

Genome Atlas.

GBMLGG (T=662, N=1,157) LGG (T=509, N=1,157) UCEC (T=180, N=23) CH 2 GBM (T=153, N=1,157) A BRCA (T=1,092, N=292) A 5 CESC (T=304, N=13) A 0 LUAD (T=513, N=397) S ESCA (T=181, N=668) 10 5 Normal STES (T=595, N=879) KIRP (T=288, N=168) KIPAN (T=884, N=168) -10 COAD (T=288, N=349) COADREAD (T=380, N=359) A PRAD (T=495, N=152) -15 STAD (T=414, N=211) K HNSC (T=518, N=44) Group KIRC (T=530, N=168) Expression LUSC (T=498, N=397) LIHC (T=369, N=160) WT (T=120, N=168) SKCM (T=102, N=558) BLCA (T=407, N=28) THCA (T=504, N=338) A READ (T=92, N=10) OV (T=419, N=88) PAAD (T=178, N=171) TGCT (T=148, N=165) UCS (T=57, N=78) ALL (T=132, N=337) Figure 1 Expression levels of WNT5A. (A) WNT5A expression levels in normal tissues based on GTEx database. (B) WNT5A expression HET ACC (T=77, N=128) KICH (T=66, N=168) CHOL (T=36, N=9) levels in tumor cell lines with data from CCLE database. (C) WNT5A expression levels in tumor and normal tissues using data from TCGA EL Tumor – – – database. (D) WNT5A expression levels in tumor and normal tissues based on the consolidated data of GTEx and TCGA databases. * P<0.05, LAML (T=173, N=337) PCPG (T=177, N=3) ** P<0.01, *** P<0.001, **** P<0.0001. GTEx, Genotype-Tissue Expression; CCLE, Cancer Cell Line Encyclopedia; TCGA, The Cancer –

15





**






*


**



*









**

**


Expression

-15

-10

5

0

5

10

15

GBM (T=153, N=5)

GBMLGG (T=662, N=5)

LGG (T=509, N=5)

CESC (T=304, N=3)

LUAD (T=513, N=109)

COAD (T=288, N=41)

COADREAD (T=380, N=51)

BRCA (T=1,092, N=113)

ESCA (T=181, N=13)

STES (T=595, N=49)

KIRP (T=288, N=129)

KIPAN (T=884, N=129)

STAD (T=414, N=36)

PRAD (T=495, N=52)

UCEC (T=180, N=23)

HNSC (T=518, N=44)

KIRC (T=530, N=129)

LUSC (T=498, N=109)

LIHC (T=369, N=50)

THCA (T=504, N=59)

READ (T=92, N=10)

PAAD (T=178, N=4)

PCPG (T=177, N=3)

BLCA (T=407, N=19)

KICH (T=66, N=129)

CHOL (T=36, N=9)

Normal

Tumor

Group

Adipose tissue (N=515)

Adrenal gland (N=128)

Bladder (N=9)

Blood vessel (N=606)

Blood (N=444)

Bone marrow (N=70)

Brain (N=1,152)

Breast (N=179)

Cervix uteri (N=10)

Colon (N=308)

Esophagus (N=653)

Fallopian tube (N=5)

Heart (N=377)

Kidney (N=28)

Liver (N=110)

Lung (N=288)

Muscle (N=396)

Nerve (N=278)

Ovary (N=88)

Pancreas (N=167)

Pituitary (N=107)

Prostate (N=100)

Salivary gland (N=55)

Skin (N=812)

Small intestine (N=92)

Spleen (N=100)

Stomach (N=174)

Testis (N=165)

Thyroid (N=279)

Uterus (N=78)

Vagina (N=85)

Gene expression

B

5.0

7.5

10.0

Biliary tract (N=7)

Kruskal-Wallis test P=5.7e-28

Bone (N=29)

Breast (N=60)

Central nervous system (N=103)

Haematopoietic and lymphoid (N=146)

U

Intestine (N=61)

Kidney (N=36)

Liver (N=108)

Lung (N=107)

Oesophagus (N=26)

Ovary (N=52)

Pancreas (N=52)

Pleura (N=11)

Salivary gland (N=2)

Skin (N=62)

Soft tissue (N=21)

Stomach (N=38)

Thyroid (N=12)

Upper aerodigestive tract (N=32)

Urinary tract (N=27)

Uterus (N=27)

Kruskal-Wallis test P=0

A

Log2 (TPM+1)

0

2

4

6

8

C


,

**

*

NY

.

N

H



P





K


8






C

-

*

E



K

A

9

I

1


A

C

D

A Cancer Codep valueHazard Ratio(95%CI)
TCGA-GBMLGG(N=619)1.8e-91.40(1.25,1.57)
TCGA-LGG(N=474)3.6e-51.39(1.19,1.63)
TCGA-ACC(N=77)2.3e-4F- A1.45(1.19,1.76)
TCGA-PAAD(N=172)1.7e-31.27(1.09.1.47)
TCGA-KIRC(N=515)0.021.16(1.02.1.31)
TCGA-SKCM-P(N=97)0.0511.25(0.99,1.57)
TCGA-SARC(N=254)0.11F-1.08(0.98.1.18)
TCGA-STES(N=547)0.131--41.07(0.98,1.17)
TCGA-BLCA(N=398)0.141:-|1.06(0.98.1.14)
TCGA-CHOL(N=33)0.1511.33(0.90,1.96)
TCGA-CESC(N=273)0.20-1.10(0.95.1.27)
TCGA-STAD(N=372)0.22++1.08(0.96,1.21)
TCGA-DLBC(N=44)0.33-11.23(0.81.1.86)
TCGA-UVM(N=74)0.35I-I1.12(0.88,1.42)
TCGA-LAML(N=144)0.42--11.03(0.96,1.10)
TOGA-LIHC(N=341)0.44I--11.03(0.95,1.11)
TCGA-PCPG(N=170)0.45F11.17(0.77,1.78)
TCGA-ESCA(N=175)0.561.05(0.90,1.22)
TCGA-KIPAN(N=855)0.69F41.01(0.94,1.09)
TCGA-KICH(N=64)0.80+11.05(0.71,1.55)
TCGA-SKCM(N=444)0.8441.01(0.94,1.07)
TCGA-COADREAD(N=368)0.02-4:0.86(0.76,0.98)
TCGA-READ(N=90)0.02F0.70(0.52,0.95)
TCGA-LUSC(N=468)0.13I-HI0.94(0.87,1.02)
TCGA-KIRP(N=276)0.160.88(0.74,1.05)
TCGA-COAD(N=278)0.16H0.90(0.79,1.04)
TCGA-BRCA(N=1044)0.17F-10.93(0.85,1.03)
TCGA-UCS(N=55)0.36Hl0.88(0.68,1.15)
TCGA-MESO(N=84)0.400.93(0.79,1.10)
TCGA-PRAD(N=492)0.44I--10.86(0.59,1.26)
TCGA-SKCM-M(N=347)0.47F10.98(0.91.1.04)
TCGA-LUAD(N=490)0.49-10.96(0.86.1.08)
TCGA-HNSC(N=509)0.51-0.97(0.89.1.06)
TOGA-THYM(N=117)0.65I-40.93(0.70.1.25)
TCGA-TGCT(N=128)0.661--I0.87(0.47.1.61)
TCGA-THCA(N=501)0.68F--10.92(0.63.1.35)
TCGA-GBM(N=144)0.830.98(0.82,1.17)
TOGA-OV(N=407)0.84I--|0.99(0.92,1.07)
TCGA-UCEC(N=166)0.870.98(0.81.1.19)
Figure 2 Associations between WNT5A expression and OS. (A) Cox analysis of WNT5A expression with OS in pan-cancer. (B-E) K-M analysis of WNT5A expression and OS in LGG, ACC, PAAD, and KIRC. OS, overall survival; K-M, Kaplan-Meier; LGG, low-grade glioma; ACC, adrenocortical carcinoma; PAAD, pancreatic adenocarcinoma; KIRC, kidney renal clear cell carcinoma.

B

C

1.00

WNT5A in LGG Exp

1.00

WNT5A in ACC Exp

High

High

Survival probability

Low

Survival probability

1

LOW

L

.

0.75

0.75

0.50

0.50

L

1

0.25

P<0.0001

0.25

P<0,0001

WNT5A in LGG Exp

0.00

HR=1.03,

CI (1.02,

1.04)

WNT5A in ACC Exp

0.00

HR=1.04, 95% CI (1.01, 1.06)

High

343

37

6

0

High

4

4

2

1

0

0 0

Low

166

18

6

1

Low

65

42

20

7

2

0

2000

4000

6000

0

1000 2000 3000 4000 5000 Time, days

Time, days

D

1.00

WNT5A in PAAD Exp

E

1.00

WNT5A in KIRC Exp

High

High

Survival probability

Low

Low

0.75

Survival probability

I

0.75

0.50

0.50

1

0.25

P=0.00035

0.25

P<0.0001

WNT5A in

PAAD Exp

0.00

HR=1.02, 95% CI (1, 1.03)

WNT5A in

KIRC Exp

0.00

HR=1.07, 95% CI (1.05, 1.1)

High

33

2

1

0

High

63

26

10

3

0

-1.0 -0.8 -0.6 -0.4 -0.2 0.0 0.2 0.4 0.6 0.8

Low

144

21

5

0

Low

467

281

111

37

3

Log2 (Hazard ratio (95% CI))

0

1000

2000

3000

0

1000

2000

3000

4000

Time, days

Time, days

carcinoma (KIRP), colon adenocarcinoma (COAD), colon and rectal cancer (COADREAD), stomach adenocarcinoma (STAD), head and neck squamous cell carcinoma (HNSC), liver hepatocellular carcinoma (LIHC), high- risk wilms tumor (WT), thyroid cancer (THCA), rectum adenocarcinoma (READ), pancreatic adenocarcinoma (PAAD), and adrenocortical carcinoma (ACC). However, WNT5A expression was lowered (10/34, 29.41%) in uterine corpus endometrial carcinoma (UCEC), KIPAN, prostate adenocarcinoma (PRAD), kidney renal clear cell carcinoma (KIRC), Skin cutaneous melanoma (SKCM), ovarian cancer (OV), testicular germ cell tumors (TGCT), uterine carcinosarcoma (UCS), acute lymphoblastic leukemia (ALL), and kidney chromophobe (KICH) (Figure 1D). These results revealed that the expression level of WNT5A is generally higher in the majority of tumors than that in corresponding normal tissues.

WNT5A is associated with prognosis in pan-cancer

To study the association between WNT5A expression and prognosis, we performed a survival association analysis

for each cancer, including OS, DSS, DFI, and PFI. Cox proportional hazards model analysis showed that WNT5A expression levels were associated with OS in GBMLGG (HR =1.40, P<0.01), LGG (HR =1.39, P<0.01), ACC (HR =1.45, P<0.01), PAAD (HR =1.27, P<0.01), KIRC (HR =1.16, P=0.02), COADREAD (HR =0.86, P=0.02), and READ (HR =0.70, P=0.02) (Figure 2A). The K-M survival analysis revealed high expression of WNT5A was associated with poor OS in LGG (P<0.01, Figure 2B), ACC (P<0.01, Figure 2C), PAAD (P<0.01, Figure 2D), and KIRC (P<0.01, Figure 2E). In addition, Cox analysis results also revealed that WNT5A expression levels were associated with DSS in GBMLGG (HR =1.46, P<0.01), LGG (HR =1.44, P<0.01), ACC (HR =1.52, P<0.01), PAAD (HR =1.30, P<0.01), KIRP (HR =0.75, P<0.01), and LUSC (HR =0.86, P=0.01) (Figure 3A). Similarly, K-M survival analysis revealed that high expression of WNT5A was associated with poor DSS in LGG (P<0.01, Figure 3B), ACC (P<0.01, Figure 3C), PAAD (P<0.01, Figure 3D), and KIRC (P<0.01, Figure 3E), while higher expression level of WNT5A was associated with better DSS in KIRP (P<0.01, Figure 3F).

Moreover, regarding associations between WNT5A

A
Cancer Codep valueHazard Ratio(95%CI)
TCGA-GBMLGG(N=598)2.5e-10I- -11.46(1.30,1.64)
TCGA-LGG(N=466)1.4e-5F-1.44(1.22,1.70)
TCGA-ACC(N=75)7.2e-51.52(1.23,1.87)
TCGA-PAAD(N=166)2.4e-31.30(1.10,1.53)
TCGA-KIRC(N=504)0.05-1.17(1.00,1.37)
TCGA-BLCA(N=385)0.05-11.10(1.00,1.20)
TCGA-SKCM-P(N=97)0.12I-1.23(0.95,1.61)
TCGA-STES(N=524)0.15I-I1.08(0.97,1.21)
TCGA-CESC(N=269)0.20H-11.11(0.94,1.31)
TCGA-STAD(N=351)0.27I--- |1.09(0.94,1.26)
TCGA-CHOL(N=32)0.281.11.25(0.83,1.86)
TCGA-UVM(N=74)0.33F11.13(0.88,1.45)
TCGA-SARC(N=248)0.35-1.05(0.95,1.16)
TCGA-PCPG(N=170)0.64F1. 11.12(0.70,1.81)
TCGA-THCA(N=495)0.65I-11.16(0.60,2.25)
TCGA-DLBC(N=44)0.65F11.13(0.65,1.98)
TCGA-ESCA(N=173)0.66I --1.04(0.86,1.26)
TCGA-UCEC(N=164)0.781.03(0.82,1.30)
TCGA-GBM(N=131)0.89·= |1.01(0.84,1.22)
TCGA-KICH(N=64)0.95111.01(0.66,1.57)
TCGA-KIRP(N=272)5.9e-30.75(0.61,0.92)
TCGA-LUSC(N=418)0.01I- I0.86(0.77,0.97)
TCGA-BRCA(N=1025)0.08FH0.89(0.78,1.01)
TCGA-READ(N=84)0.11I-I0.58(0.29,1.17)
TCGA-THYM(N=117)0.17I- .-|0.74(0.47,1.16)
TCGA-COADREAD(N=347)0.19I ---I0.88(0.73,1.06)
TCGA-MESO(N=64)0.211 ---0.88(0.73,1.07)
TCGA-LUAD(N=457)0.32H0.93(0.81,1.07)
TCGA-UCS(N=53)0.32F-10.87(0.66,1.15)
TCGA-SKCM-M(N=341)0.41--0.97(0.90,1.04)
TCGA-COAD(N=263)0.44-10.92(0.75,1.13)
TCGA-OV(N=378)0.481.- I0.97(0.89,1.05)
TCGA-KIPAN(N=840)0.55+ ·1. 10.97(0.89,1.06)
TCGA-HNSC(N=485)0.641-10.97(0.87,1.09)
TCGA-TGCT(N=128)0.70F10.86(0.41,1.81)
TCGA-SKCM(N=438)0.880.99(0.93,1.07)
TCGA-LIHC(N=333)0.92F11.00(0.91,1.09)
TCGA-PRAD(N=490)0.94I--|0.98(0.58,1.67)
Figure 3 Associations between WNT5A expression and DSS. (A) Cox analysis of WNT5A expression with DSS in pan-cancer. (B-F) K-M analysis of WNT5A expression and DSS in LGG, ACC, PAAD, KIRC, and KIRP. DSS, disease-specific survival; K-M, Kaplan-Meier; LGG, low-grade glioma; ACC, adrenocortical carcinoma; PAAD, pancreatic adenocarcinoma; KIRC, kidney renal clear cell carcinoma; KIRP, kidney renal papillary cell carcinoma.

B

1.00

WNT5A in LGG Exp

C

1.00

WNT5A in ACC Exp

High

High

Survival probability

Low

Survival probability

Low

0.75

0.75

7

0.50

0.50

0.25

P<0.0001

0.25

P<0.0001

WNT5A in

0.00

HR=1.03, 95% CI (1.01,

1.04)

LGG Exp

WNT5A in

0.00

HR=1.04, 95% ‘CI (1.01; 1:06)

ACC Exp

High

282

28

3

0

High

14

4

2

1

0

0

Low

219

25

9

1

Low

63

41

20

7

2

0

0

2000

4000

6000

0

1000

2000

3000

4000

5000

Time, days

Time, days

D

1.00

WNT5A in PAAD Exp

E

1.00

WNT5A in KIRC Exp

High

High

Survival probability

Low

Low

0.75

Survival probability

0.75

L

0.50

0.50

u

T

0.25

P=0.00021

0.25

P<0.0001

HR=1.02, 95% CI (1.01, 1.04)

HR=1.08, 95% CI (1.04, 1.12)

WNT5A in PAAD Exp

0.00

WNT5A in

KIRC Exp

0.00

High

31

2

1

0

High

52

21

6

2

113

0 3

Low

140

20

5

0

Low

467

281

38

0

1000

2000

3000

0

1000

2000

3000

4000

Time, days

Time, days

F

1.00

Survival probability

0.75

0.50

0.25

P=0.00016

WNT5A in KIRP Exp

HR=0.95

High

-1.6

-1.2

-0.8

-0.4

0.0

0.4

0.8

1.2

WNT5A in

KIRP Exp

0.00

95% CI (0.91, 0.99)

Low

Log2 (hazard ratio (95% CI))

High

148

55

20

6

1

1

0

Low

135

50

22

6

0

0

0

Y

T

T

T

1

0

1000 2000 3000 4000 5000 6000 Time, days

expression and DFI, Cox analysis depicted the relationship in PAAD (HR =2.49, P<0.01), COAD (HR =0.59, P<0.01), BRCA (HR =0.88, P=0.04), and COADREAD (HR =0.69, P=0.04) (Figure 4A). The K-M survival analysis revealed that high expression of WNT5A was associated with poor DFI in ESCA (P=0.021, Figure 4B), HNSC (P=0.03, Figure 4C), and PAAD (P<0.01, Figure 4D). Furthermore, Cox analysis found WNT5A expression was associated with PFI in GBMLGG (HR =1.33, P<0.01), LGG (HR =1.28, P<0.01), ACC (HR =1.35, P<0.01), KIRC (HR =1.21, P<0.01), PAAD (HR=1.21, P<0.01), STES (HR=1.11, P=0.02), bladder cancer (BLCA; HR =1.08, P=0.04), and KIRP (HR =0.85, P=0.03) (Figure 5A). The K-M survival analysis showed that high expression of WNT5A was associated with poor PFI in LGG (P<0.01, Figure 5B), ACC (P<0.01, Figure 5C), KIRC (P<0.01, Figure 5D), PAAD

(P<0.01, Figure 5E), and PCPG (P=0.014, Figure 5F).

WNTSA affects tumor immune infiltration and microenvironment in pan-cancer

Tumor immune infiltration refers to the transfer of immune cells from blood to tumor tissues (26). To explore the role of WNT5A in tumor immunity, we first performed correlation analysis of WNT5A expression and various immune cells. Our data revealed the positive correlations between them in most cancers, especially in READ, PAAD, KIRC, LGG, PRAD, GBMLGG, THCA, PCPG, BRCA, COADREAD, and COAD, while negative correlations in TGCT and LUSC. But in thymoma (THYM), positive correlation with macrophages and negative correlation with CD4+ T cells, CD8+ T cells, neutrophils, and DCs

A
Cancer Codep valueHazard Ratio(95%CI)
TCGA-PAAD(N=68)5.2e-52.49(1.61,3.85)
TCGA-STES(N=316)0.07[ -/1.15(0.99,1.34)
TCGA-PCPG(N=152)0.1011.67(0.91,3.07)
TCGA-ESCA(N=84)0.11H-1.25(0.95,1.64)
TCGA-TGCT(N=101)0.18H+1.14(0.94,1.39)
TCGA-PRAD(N=337)0.21-11.15(0.93,1.43)
TCGA-BLCA(N=184)0.21A F.1 -1.12(0.94,1.35)
TCGA-CHOL(N=23)0.21-11.36(0.84,2.21)
TCGA-MESO(N=14)0.211.40(0.82,2.39)
TCGA-ACC(N=44)0.271-+1.20(0.86,1.69)
TCGA-HNSC(N=128)0.401.12(0.86,1.44)
TCGA-KIPAN(N=319)0.52F41.05(0.91,1.21)
TCGA-CESC(N=171)0.541.07(0.85,1.35)
TCGA-GBMLGG(N=127)0.59--- 11.09(0.79,1.50)
TCGA-LGG(N=126)0.74-41.06(0.76,1.48)
TCGA-KIRC(N=113)0.7611.06(0.73,1.54)
TCGA-READ(N=29)0.76I--11.15(0.47,2.85)
TCGA-KICH(N=29)0.90I41.05(0.48,2.30)
TCGA-STAD(N=232)0.991.00(0.81,1.24)
TCGA-COAD(N=103)7.5e-3I - 10.59(0.40,0.87)
TCGA-BRCA(N=904)0.04- {0.88(0.77,0.99)
TCGA-COADREAD(N=132)0.04+1.0.69(0.48,0.98)
TCGA-KIRP(N=177)0.16H0.85(0.67,1.07)
TCGA-UCEC(N=115)0.271-40.88(0.70,1.10)
TCGA-LUSC(N=292)0.391--40.94(0.81,1.09)
TCGA-SARC(N=149)0.491-10.96(0.87,1.07)
TCGA-OV(N=203)0.49-I0.96(0.87,1.07)
TCGA-THCA(N=352)0.510.91(0.70,1.20)
TCGA-LUAD(N=295)0.56I--10.95(0.80,1.13)
TCGA-DLBC(N=26)0.62F-40.74(0.23,2.41)
TCGA-LIHC(N=294)0.72O0.99(0.92,1.06)
TCGA-UCS(N=26)0.75F- O-40.92(0.53,1.57)
Figure 4 Associations between WNT5A expression and DFI. (A) Cox analysis of WNT5A expression with DFI in pan-cancer. (B-D) K-M analysis of WNT5A expression and DFI in ESCA, HNSC, and PAAD. DFI, disease-free interval; K-M, Kaplan-Meier; ESCA, esophageal carcinoma; HNSC, head and neck squamous cell carcinoma; PAAD, pancreatic adenocarcinoma.

B

C

1.00

WNT5A in ESCA Exp

1.00

WNT5A in HNSC Exp

High

High

Low

Low

Survival probability

0.75

L

Survival probability

0.75

-

0.50

0.50

1435

0.25

P=0.021

0.25

P=0.03

HR=1.01, 95% CI (1, 1.01)

HR=1.01, 95% CI (1, 1.02)

WNT5A in

ESCA Exp

0.00

WNT5A in HNSC Exp

0.00

High

48

14

4

0

0

High

14

4

0

0

0

0

Low

25

11

4

3

1

Low

110

34

10

5

3

2

0

500

1000

1500

2000

0

1000

2000

3000

4000

5000

Time, days

Time, days

D

1.00

WNT5A in PAAD Exp

High

Low

Survival probability

0.75

0.50

1

0.25

P<0.0001

7

WNT5A in

PAAD Exp

0.00

HR=1.00

95% CI (1.03,

1.08

-2.0

-1.5

-1.0

-0.5

0.0

0.5

1.0

1.5

2.0

High

19

3

2

1

0

Log2 (Hazard ratio (95% CI))

Low

50

25

11

5

2

T

0

500

1000

1500

2000

Time, days

were found simultaneously. Furthermore, among the data of immune cells, WNT5A expression was found to be positively associated with neutrophils and macrophages in 26 tumors, and DCs in 22 tumors (Figure 6A). In order to explore the effect of WNT5A expression on tumor microenvironment, we used the ESTIMATE algorithm to evaluate the correlation between WNT5A expression and stromal score. Results revealed the WNT5A expression was positively correlated with the stromal score in LUAD, GBMLGG, BRCA, COAD, KIRC, and PAAD (Figure 6B). In conclusion, these results demonstrate that WNT5A may promote immune cell infiltration in the tumor microenvironment (TME).

WNT5A is correlated with immune checkpoints and immune neoantigens in pan-cancer

The data presented above highlight a potential role for WNT5A in tumor immunity. Based on these findings, we performed correlation analysis of WNT5A expression and immune checkpoints, which included 24 immune inhibitors and 36 stimulators. Among the data of immune inhibitors in the 40 tumors, we found that WNT5A expression was positively linked to VEGFA in 23 tumors; to CD274 (PD-

L1) in 20 tumors; to IL10 in 29 tumors; to CD276 in 34 tumors; to EDNRB in 29 tumors; to CTLA4 in 21 tumors; to IL12A in 22 tumors; to VTCN1 in 25 tumors; to TGFB1 in 28 tumors; to HAVCR2 in 26 tumors; to C10orf54 in 27 tumors; and to BTLA in 23 tumors. Additionally, among the data of immune stimulators, WNT5A expression was found to be positively associated with CX3CL1 in 23 tumors; HMGB1 in 28 tumors; ENTPD1 in 30 tumors; TLR4 in 32 tumors; tumor necrosis factor (TNF) SF4 in 33 tumors; BTN3A in 29 tumors; BTN3A2 in 23 tumors; CD40 in 25 tumors; ICAM1 in 26 tumors; IL1A in 29 tumors; IL1B in 27 tumors; TNF in 25 tumors; TNFRSF9 in 24 tumors; CD80 in 27 tumors; IL2RA in 28 tumors; ITGB2 in 23 tumors; CD28 in 27 tumors; and CD40LG in 24 tumors. Moreover, WNT5A expression was positively associated with 19 of 24 immune inhibitors and 29 of 36 immune stimulators in COADERAD; 17 of 24 immune inhibitors and 33 of 36 immune stimulators in neuroblastoma (NB); 18 of 24 immune inhibitors and 32 of 36 immune stimulators in PAAD; 17 of 24 immune inhibitors and 30 of 36 immune stimulators in uveal melanoma (UVM); 18 of 24 immune inhibitors and 28 of 36 immune stimulators in OV; 21 of 24 immune inhibitors and 30 of 36 immune stimulators in PRAD; 17 of 24 immune inhibitors and 31 of 36 immune

Cancer Codep valueHazard Ratio(95%CI)
TCGA-GBMLGG(N=616)3.7e-91.33(1.21,1.46)
TCGA-LGG(N=472)4.7e-51.28(1.13,1.44)
TCGA-ACC(N=76)5.8e-4F 11.35(1.14,1.60)
TCGA-KIRC(N=508)3.4e-3F1.21(1.07,1.38)
TCGA-PAAD(N=171)5.2e-3+ 11.21(1.06,1.38)
TCGA-STES(N=548)0.02-1.11(1.02,1.22)
TCGA-BLCA(N=397)0.041- ·- I1.08(1.00,1.17)
TCGA-PRAD(N=492)0.07P -11.12(0.99,1.27)
TCGA-PCPG(N=168)0.121.11.26(0.94,1.67)
TCGA-TGCT(N=126)0.16F11.13(0.95,1.33)
TCGA-CESC(N=273)0.19I--11.10(0.95,1.26)
TCGA-STAD(N=375)0.20F-11.09(0.96,1.23)
TCGA-SKCM-P(N=96)0.261-11.11(0.92,1.34)
TCGA-UVM(N=73)0.31+11.12(0.90,1.38)
TCGA-ESCA(N=173)0.61F-11.04(0.90,1.20)
TCGA-DLBC(N=43)0.621.11.11(0.74,1.66)
TCGA-KIPAN(N=845)0.70F1.01(0.95,1.09)
TCGA-READ(N=88)0.90FO 41.02(0.73,1.42)
TCGA-SARC(N=250)0.95I-11.00(0.93,1.08)
TCGA-GBM(N=143)0.951-11.01(0.84,1.21)
TCGA-KIRP(N=273)0.03F1.0.85(0.73,0.98)
TCGA-LUSC(N=467)0.05-0.91(0.84,1.00)
TCGA-OV(N=407)0.13F-40.95(0.88,1.02)
TCGA-CHOL(N=33)0.19 I---I0.80(0.57,1.12)
TCGA-UCEC(N=166)0.21I-40.91(0.78,1.06)
TCGA-THYM(N=117)0.23F10.89(0.74,1.08)
TCGA-UCS(N=55)0.33F10.88(0.69,1.14)
TCGA-SKCM-M(N=338)0.35I--I0.97(0.92,1.03)
TCGA-THCA(N=499)0.35I--I0.91(0.74,1.11)
TCGA-BRCA(N=1043)0.38--I0.96(0.87,1.06)
TCGA-COAD(N=275)0.52I--10.95(0.83,1.10)
TCGA-HNSC(N=508)0.56·10.97(0.89,1.07)
TCGA-COADREAD(N=363)0.58F10.96(0.85,1.10)
TCGA-LIHC(N=340)0.58I--10.98(0.93,1.04)
TCGA-LUAD(N=486)0.670.98(0.88,1.09)
TCGA-SKCM(N=434)0.67I-410.99(0.93,1.04)
TCGA-MESO(N=82)0.77I40.97(0.81,1.17)
TCGA-KICH(N=64)0.82F .. 2 10.96(0.68,1.36)
Figure 5 Associations between WNT5A expression and PFI. (A) Cox analysis of WNT5A expression with PFI in pan-cancer. (B-F) K-M analysis of WNT5A expression and PFI in LGG, ACC, KIRC, PAAD, and PCPG. PFI, progression-free interval; K-M, Kaplan-Meier; LGG, low-grade glioma; ACC, adrenocortical carcinoma; PAAD, pancreatic adenocarcinoma; KIRC, kidney renal clear cell carcinoma; PAAD, pancreatic adenocarcinoma; PCPG, pheochromocytoma and paraganglioma.

A

B

C

1.00

WNT5A in LGG Exp

1.00

WNT5A in ACC Exp

High

High

Survival probability

Low

Survival probability

Low

0.75

0.75

0.50

286

0.50

0.25

P<0.0001

0.25

P

10

01

WNT5A in LGG Exp

0.00

95% CI (1.01

03)

T

WNT5A in

ACC Exp

0.00

HR=1.04, 95% CI (1.02, 1.06)

High

416

95

24

8

2

1

High

29

4

3

1

0

0

Low

93

24

6

3

1

0

Low

60

24

13

5

2

0

T

1

0

1000 2000 3000 4000 5000 Time, days

0

1000 2000 3000 4000 5000 Time, days

D

1.00

WNT5A in KIRC Exp

E

1.00

7

WNT5A in PAAD Exp

High

Survival probability

Low

High

Low

0.75

Survival probability

0.75

1

L

0.50

0.50

L

0.25

I

P<0.0001

1

0.25

P=0.0089

WNT5A in

KIRC Exp

0.00

IR=1.06, 95% CI (1.03, 1.09)

0.00

HR=1.02, 95% CI (1, 1.03)

T

WNT5A in

PAAD Exp

High

66

18

8

3

0

144

9

Low

462

247

87

High

1

0

25

1

Low

33

10

2

0

0

1000

2000

3000

4000

0

1000

2000

3000

Time, days

F

Time, days

1.00

WNT5A in PCPG Exp

High

Survival probability

-

Low

0.75

0.50

173

0.25

P=0.014

0.00

95%

CI

11.07, 1.54)

-0.8 -0.6 -0.4 -0.2 0.0 0.2 0.4 0.6 Log2 (Hazard ratio (95% CI))

WNT5A in

PCPG Exp

High

18

1

0

0

Low

61

22

1

1

0

2000

4000

6000

Time, days

stimulators in GBMLGG; and 18 of 24 immune inhibitors and 29 of 36 immune stimulators in LGG. Conversely, WNT5A expression was negatively associated with 10 of 24 immune inhibitors and 19 of 36 immune stimulators in LUSC, and 11 of 24 immune inhibitors and 17 of 36 immune stimulators in TGCT (Figure 7A). Next, results of neoantigens analysis suggested that WNT5A expression was negatively associated with the number of neoantigens in LUAD, LUSC, BRCA, UCEC, and SKCM, while positively associated with KIRP and HNSC (Figure 7B).

WNT5A is associated with TMB and MSI

Tumors are diseases caused by genetic mutations, while TMB and MSI can reflect the change of genomic instability (27). We found that WNT5A expression was positively correlated to TMB in ACC and OV, but negatively correlated to it in

LUSC, ESCA, and READ (Figure 8A). Similarly, WNT5A expression was found to be positively associated with MSI in TGCT and ACC, but negatively associated with it in UCS, lymphoid neoplasm diffuse large B-cell lymphoma (DLBC), and HNSC (Figure 8B).

WNTSA is implicated in the regulation of numerous signaling pathways

In order to clarify the relevant mechanisms, we firstly performed protein-protein interaction (PPI) network analysis to reveal the functional network of WNT5A. The results showed that WNT5A was linked to FZD2, FZD4, FZD5, FZD7, LRP5, LRP6, ROR2, RORA, DVL2, and RYK, most of which have been demonstrated to be related to the WNT signaling pathway (Figure 9A). Then GSEA was used to analyze the data of high and low

Figure 6 Correlations between WNT5A expression and tumor immune infiltration and TME. (A) Correlation analysis of the association between WNT5A expression and B cells, CD4+ T cells, CD8+ T cells, neutrophils, macrophages, and DCs in pan-cancer. (B) Relationship between WNT5A expression and stromal score. * P<0.05, ** P<0.01, *** P<0.001, **** P<0.0001. TME, tumor microenvironment; DCs, dendritic cells.

A

B

0.43


0.49


0.47


0.40

0.44

Correlation coefficient


TCGA-LGG (N=504)

0.42

0.19

0.37

0.37

0.34

0.38






TCGA-PRAD (N=495)

0.33

0.31

0.16

0.46

0.41





0.38



TCGA-GBMLGG (N=656)

-0.5

0.0

0.5

2,000

TCGA-GBMLGG (N=656)

2,000

TCGA-BRCA (N=1,077)

0.37

0.42

0.46

0.45

0.37

Stromal score

Stromal score





TCGA-THCA (N=503)

1,000

=0.38

P=4.7e-24

1,000

r=0.44

0.37

0.28

0.37

0.45

0.38

P=7.4e-




TCGA-PCPG (N=177)

P value

0.20

0.22

0.15

0.36

0.49

0.38

TCGA-KIRC (N=528)

0

0




0.28

0.15

0.37

0.43

0.36

0.50

-1,000

-1,000






TCGA-PAAD (N=177)

*

0.36

0.30

0.24

0.52

0.23

0.50

TCGA-READ (N=91)

0.0

0.5

1.0

1.5

2.0


**

2,000

-2,000

*


*

-0.29

-0.36

-0.26



*

TCGA-TGCT (N=132)

0.09

0.20

0.31

0.28

0.38

0.26

-3,000

-3,000

*



**


TCGA-BRCA (N=1077)

0.15

*

0.23


0.12

0.39


0.17

R.

0.32

TCGA-SKCM-M (N=351)

*

0.09

0.17

0.08

0.21

0.28

0.20

TCGA-KIPAN (N=878)

-4

-2

0

2

4

6

8

4

-2

0

2

4

6

8

*


*



WNT5A expression

WNT5A expression

0.12

0.33

0.22


0.42


0.24



0.38


TCGA-COADREAD (N=373)

*

-0.11

0.19

0.21

0.32

0.11




TCGA-OV (N=417)

*

*

0.18

0.30

0.21

0.26

*

**

-

TCGA-GBM (N=152)

0.10

0.13

**

0.32


0.10

0.22

ICGA-SKCM (N=452)

*

*

TCGA-MESO (N=85)

Stromal score

2,000

TCGA-LUAD (N=500)

2,000

TCGA-COAD (N=282)

-0.30

-0.32

-0.22

0.45

-0.18

1,000

r=0.30

Stromal score

TCGA-THYM (N=118)

P=1.7e-11

1,000

r=0.50

*

P=6.7e-19

*


*

TCGA-UCEC (N=178)

0

0

0.15

0.27

0.25

*

**


TCGA-ESCA (N=181)

-1,000

-1,000

0.26

0.33

*

**

0.48

TCGA-KICH (N=65)

0.34

0.42

0.35

0.44

TCGA-CHOL (N=36)

-2,000

-2,000

*

*

*

0.31

-0.32

0.23




TCGA-KIRP (N=285)

-3,000

-3,000

0.14

0.11

0.17

0.27

0.20

*



TCGA-LUAD (N=500)

*

0.43


0.40

**

0.27

TCGA-UCS (N=56)

-4

-2

0

2

4

6

8

-4

-2

0

2

4

6

8

*

TCGA-BLCA (N=405)

WNT5A expression

WNT5A expression

TCGA-UVM (N=79)

TCGA-CESC (N=291)

0.26

0.13


**

TCGA-STAD (N=388)

-0.26

0.17


**

TCGA-SARC (N=258)

Stromal score

2,000

TCGA-KIRC (N=528)

0.13

0.11

0.20

0.13

**

TCGA-HNSC (N=517)

1,000

r=0.33

Stromal score

2,000

TCGA-PAAD (N=177)

**

*


1,000

r=0.53

TCGA-ACC (N=77)

P=3.5e-15

P=4.6e-14

0.17

0.19

0.15

TCGA-LIHC (N=363)

0

0

**

0.35

0.23

0.42

0.24

0.37

TCGA-COAD (N=282)

-1,000

-1,000




0.50


TCGA-DLBC (N=46)

-2,000

-2,000

0.39


TCGA-SKCM-P (N=101)

0.16

0.30

0.21

-3,000

-3,000




TCGA-STES (N=569)

-0.20

-0.14

-0.21

-0.18


*



TCGA-LUSC (N=491)

B cell

CD4+ T cell

CD8+ T cell

Neutrophil

Macrophage

0

-4

-2

0

2

4

6

8

-4

-2

0

2

4

6

8

WNT5A expression

WNT5A expression

expression groups of WNT5A. The results indicated that the KEGG WNT signaling pathway (Figure 9B), KEGG basal cell carcinoma (Figure 9C), KEGG TGFß signaling pathway (Figure 9D), hallmark epithelial-mesenchymal transition (EMT; Figure 9E), hallmark Hedgehog signaling (Figure 9F), and hallmark Notch signaling (Figure 9G) was highly enriched in the WNT5A high expression group.

Discussion

With the widespread use of immunotherapy and targeted therapy, the prognosis of tumor patients has improved (1). However, due to the heterogeneity of various patients, the OS of cancer patients remains poor (1,28). For this reason, the search for new therapeutic targets related to

immunotherapy has received increasing attention from researchers. From another aspect, a pan-cancer analysis can provide broad insights about the role of a gene from many aspects in various cancers through mining major databases, which is an effective method to search for intriguing targets for tumor therapy (3).

As a non-classical WNT signal molecule, WNT5A is highly conserved between species and plays a key role in embryonic development, pathological disorders, and internal environmental balance (29). Due to its important role in embryonic development, the expression level of WNT5A is high in various organs and tissues during the embryonic stage, but generally decreased in adult tissues (7,30,31). It has been demonstrated that WNT5A expression increases when immune cells are exposed to pathogens (32).

Figure 7 Correlations between WNT5A expression and immune checkpoints and tumor neoantigens. (A) Correlation analysis of the association between WNT5A expression and immune checkpoints (inhibitors and stimulators) in pan-cancer. (B) Correlation analysis of the association between WNT5A expression and the number of tumor neoantigens. * P<0.05.

A

B

Type

VEGFA

Correlation coefficient

density

GBM

spearman correlatiorg

density

0.3

OV

spearman correlation

LUAD

spearman correlation

LUSC

spearman correlation

CD276

R=0.019

R=0.072

density

R =- 0.191

density

0.169

EDNRB

-1.0-0.5 0.0 0.5 1.0

P=0.817

0.0-

=0.325

P=0.0136

0255

VEGFB

..

ARG1

P value

log2(Neoantigen count)

%

log2(Neoantigen count)

8

log2(Neoantigen count)

log2(Neoantigen count)

10.0

ADORA2A IL13

A

6

7.5

7.5

IL4

0.0

0.5

1.0

IDO1

9

.

5.0

5.0

TIGIT

Type

CTLA4 SLAMF7

Inhibitory Stimulatory

2

0 0.20.4

4

0 02 0.4

0 0.10.2

6

0 0204

log2(WNT5A TPM+1)

density

log2(WNT5A TPM+1)

density

log2(WNT5A TPM+1)

density

log2(WNT5A TPM+1)

density

LAG3

PDCD1

density

0.3 3-BRCA

spearman correlation

der &N

0,4-

KIRC

spearman correlation R =- 0.096

density

88.808

KIRP

spearman correlation >

IL12A

R =- 0.104

0.2-

R=0.159

densi

UCEC

0.2

spearman correlation

R =- 0.222 P=0.000468

no .

10.0

P=0.00488

0.0-

P=0.0553

P=0.042

KIR2DL1

0.0-

KIR2DL3

log2(Ncoantigen count)

log?(Necantigen count)

log2(Neoantigen count)

..

S

log?(Nccantigen count)

VTCN1

7.5

7.5

.

TGFB1

5.0

5.0

6

10

HAVCR2

C10orf54

2.5

:

25

4

BTLA

4

CD274

0.0

IL10

C

O

02

log2(WNT5A TPM+1) density

0

log2(WNT5A TPM+1)

0 0.2

8

02 0.4

0 0.1 0.2

CX3CL1

density

log2(WNTSA TPM+1)

density

log2(WNT5A TPM+1)

density

HMGB1

density

COAD

spearman correlation R=0.053

density

READ

spearman correlation R =- 0.059

density

STAD

spearman correlation R=0.104

ENIPD1

density

HNSC

spearman correlation

R=0.119 P=0.0483

TLR4

2

=0.596

0.0-

P=0.669

P=0.109

0.0-

TNFSF4

log2(Neoantigen count)

BTN3A1

log2(Neoantigen count)

12.5

log2(Neoantigen count)

12.5

log2(Neoantigen count)

10.0

9

BTN3A2

10.0

10.0

CD40

ICAM1

7.5

7.5

2

.

5.0

.

IL1A

8.0

5.0

3

IL1B

TNF

25

00102 density

2.5

0 0.1

2.5

00.10.2

0 0.2

TNFRSF9

log2(WNT5A TPM+1)

log2(WNT5A TPM+1)

density

log2(WNT5A TPM+1)

density

log2(WNT5A TPM+1)

density

CD80

IL2RA

density

0.3- 0.2-

LIHC

spearman correlation R=0.026

density

0.3-

ŞKCM

spearman correlation;

2

CESC

spearman correlation 2 R =- 0.099

THCA

pearman correlation

R =- 0.232

density

density

R =- 0.081

SELP

0.0-

P-0.717

P=0.0216

P=0,174

P=0,157

CD27

125

12.5

.

TTGB2

log2(Ncoantigen count)

log2(Neoantigen count)

log2(Neoantigen count)

log2(Neoantigen count)

CD28

10.0

10.0

9

6

..

CD40LG

A

ICOS

7.5

1.5

6

TNFRSF14

3

2

CXCL10

5.0

S.

CXCL9

.

IFNG

log2(WNT5A TPM+1)

0 02

log2(WNT5A TPM+1)

0

log2(WNT5A TPM+1)

02

density

1

02

0

density

density

log2(WNT5A TPM+1)

0 02

density

PRF1

GZMA

density

BLCA

spearman correlation R =- 0.079

density

PRAD

0.2.

spearman correlation R=0.057

density

LGG

spearman correlation R=0.112

CCL5

P=0.358

P=0.361

CD70

0.0-

P=0.116

IL2

log2(Necantigen count)

log2(Necantigen count)

log2(Necantigen count)

9

IFNA1

9

9

INFSF9

IFNA2

7

4

6

ICOSLG

1

3

3

TNFRSF18

TNFRSF4

3

.

.

0

.

TGCT

ACC SARC BLCA

LUSC

KIPAN

KIRP

MESO

ALL ESCA

BEAD

COAD

COADREAD

NB

PAAD

KICH

UVM THYM

CHOL

SKCM

STAD

LUAD

UCEC

DLBC

THCA

PCPG

PRAW

LANE

WT

GBMLGG

LGG

GEM

KIRC

25

02

log2(WNTSA TPM+1)

0

log2(WNT5A TPM+1) density

V

&

1

0 0204

0

O

4

02 0.4

density

log2(WNT5A TPM+1)

density

Interestingly, our data from the GTEx dataset showed WNTSA was more highly expressed in the bladder, uterus, and vagina. As we know, these cavities, which are often exposed to bacteria, are prone to various forms of inflammation and immune cell congregation. Therefore, we can speculate that the high expression of WNT5A may be related to inflammatory cell infiltration and immune cells aggregation.

As a potential prognostic marker of cancer, WNT5A has anticancer or oncogenic activity, depending on tumor type and stages, and can regulate TME, inflammation, proliferation, EMT, and metabolism in cancer (7,33). Our analysis of the TCGA and GTEx datasets in 34 common tumors revealed that WNT5A expression was elevated in 19 tumors and lowered in 10 tumors, suggesting that it is overexpressed in most tumors but low expressed in some

tumors. Among the positive results, the overexpression of WNT5A in some tumor species has been reported, such as LUSC (8), LUAD (8), ESCA (16), GBM (34), BRCA (35), PAAD (12), and ACC (36), while some of them have not been reported, such as GBMLGG, LGG, HNSC, and so on. Furthermore, combining previous literature with our survival analysis of OS, DSS, DFI, and PFI, among the WNT5A overexpression tumors, we found that WNT5A expression was associated with poor prognosis in ESCA (16), LGG, ACC (36), PAAD (12), and HNSC. Conversely, high WNT5A expression was correlated to longer DSS in KIRP, which warrants further research.

By analyzing recent studies on WNT5A and tumor immunity, Lopez-Bergami and Barbero proposed that WNT5A overproduced by the tumor cell could foster a pro- inflammatory milieu and induce immune cells chemotaxis.

Figure 8 Correlations between WNT5A expression and TMB and MSI. (A) Correlation analysis of the association between WNT5A expression and TMB. (B) Correlation analysis of the association between WNT5A expression and MSI. TMB, tumor mutational burden; MSI, microsatellite instability.

A

READ (N=90)

Sample size

CHOL (N=36)

ESCA (N=180)

200

LUSC (N=486)

UCEC (N=175)

400

GBM (N=149)

BLCA (N=407)

600

LUAD (N=509)

LIHC (N=357)

800

COADREAD (N=372)

STES (N=589)

HNSC (N=498)

SKCM (N=102)

UCS (N=57)

P value

BRCA (N=981)

CESC (N=286)

0.0

COAD (N=282)

GBMLGG (N=650)

0.2

THCA (N=489)

KICH (N=66)

0.4

MESO (N=82)

LGG (N=501)

0.6

SARC (N=234)

0.8

THYM (N=118)

STAD (N=409)

1.0

KIRC (N=334)

PCPG (N=177)

KIPAN (N=679)

TGCT (N=143)

KIRP (N=279)

PAAD (N=171)

DLBC (N=37)

PRAD (N=492)

UVM (N=79)

LAML (N=126)

OV (N=303)

ACC (N=77)

-0.2

-0.1

0.0

0.1

0.2

Correlation coefficient (Pearson)

B

UCS (N=57)

Sample size

DLBC (N=47)

HNSC (N=500)

200

ESCA (N=180)

GBMLGG (N=657)

400

PCPG (N=177)

600

UCEC (N=180)

SKCM (N=102)

800

BRCA (N=1,039)

STES (N=592)

1000

BLCA (N=407)

PAAD (N=176)

THYM (N=118)

LIHC (N=367)

P value

KIRP (N=285)

KIPAN (N=688)

0.0

COADREAD (N=374)

COAD (N=285)

0.2

LGG (N=506)

STAD (N=412)

0.4

LUSC (N=490)

0.6

MESO (N=83)

LUAD (N=511)

0.8

CESC (N=302)

LAML (N=129)

1.0

THCA (N=493)

KIRC (N=337)

GBM (N=151)

PRAD (N=495)

KICH (N=66)

OV (N=303

CHOL (N=36)

READ (N=89

SARC (N=252

UVM (N=79

ACC (N=77)

TGCT (N=148)

-0.4

-0.2

0.0

0.2

0.4

Correlation coefficient (Pearson)

When immune cells were recruited, WNT5A induced a tolerogenic phenotype of mononuclear phagocytes in myelomonocytic cells via the TLR/MyD88/P50 pathway (19,37). Our correlation analysis revealed that in most cancers, WNT5A expression was positively correlated with various immune cells, especially neutrophils, macrophages, and DCs. Otherwise, the correlation analysis

using ESTIMATE algorithm showed that WNT5A expression was positively correlated with the stromal score in LUAD, GBMLGG, BRCA, COAD, KIRC, and PAAD. Those results showed that WNT5A expression may be associated with promoting inflammation, but as neutrophils, macrophages, and DCs also play an important role in immune suppression (23,38); the role of WNT5A in

Figure 9 Signaling enrichment of WNT5A in KEGG and hallmark gene sets. (A) PPI network analysis of WNT5A. (B-D) GSEA analysis of the correlations between WNTSA and signaling pathways based on KEGG database. (E-G) GSEA analysis of the correlations between WNT5A and signaling pathways based on hallmark gene set. KEGG, Kyoto Encyclopedia of Genes and Genomes; PPI, protein-protein interaction; GSEA, gene set enrichment analysis.

A

FZD4

ROR2

WNT5A

FZD2

FZD5

DVL2

RORALRP6

FZD7

LRP5

RYK

B

C

D

Enrichment plot: KEGG WNT SIGNALING PATHWAY

Enrichment plot: KEGG BASAL CELL CARCINOMA

Enrichment plot: KEGG TGF BETA SIGNALING PATHWAY

0.0

0.00

0.0

Enrichment score(ES)

0.05

Enrichment score(ES)

0.1

Enrichment score(ES)

0.10

0.1

0.15

0.2

0.20

0.2

0.25

0.3

0.30

-0.4

0.3

0.35

0.4

-0.40

0.5

0.45

-0.5

Ranked list metric(Signal2 Noise)

Ranked list metric(Signal2 Noise)

Ranked list metric(Signal2 Noise)

0.25

“Low_Exp’ (positively comelsted)

0.25

“Low_Exp’ (positively comelsted)

0.25

“Low_Exp’ (positively comelated)

0.00

0.00

0.00

0.25

0.50

Zero cross at 6117

0.25

0.50

Zero crosk at 6117

0.25

0.50

Zero cross at 6117

0.75

0.75

0.75

1.00

“High_ Exp’ (negatively correlated)

1.00

“High Exp’ (negatively correlated)

1.00

“High, Exp’ (negatively comelated)

0

2.500

5,000

7.500

10.000

12,500

15,000

17.500

20,000

0

2,500

5,000

7,500

10.000

12,500

15,000

17.500

20,000

0

2,500

5,000

7.500

10,000

12,500

15,000

17.500

20,000

Rank in Ordered Dataset

Rank in Ordered Dataset

Rank in Ordered Dataset

Enrichment profile -Hits

Ranking metric scores

Enrichment profile -Hits

Ranking metric scores

Enrichment profile -Hits

Ranking metric scores

E

F

G

Enrichment plot: HALLMARK EPITHELIAL MESENCHYMAL TRANSITION

Enrichment plot: HALLMARK HEDGEHOG SIGNALING

Enrichment plot: HALLMARK NOTCH SIGNALING

0.0

0.0

0.0

0.1

0.1

Enrichment score(ES)

0.1

Enrichment score(ES)

Enrichment score(ES)

0.2

0.2

-0.2

0.3

0.3

0.3

0.4

0.4

-0.4

0.5

-0.5

0.5

0.6

0.6

0.6

Ranked list metric(Signal2 Noise]

Ranked list metric(Signal2 Noise)

Ranked list metric(Signal2 Noise)

0.25

“Low_Exp’ (positively correlated)

0.25

“Low_Exp’ (positively comelated)

0.25

‘Low_Exp’ (positively comelated)

0.00

0.00

0.00

0.25

0.25

0.25

Zero crosa at 6117

Zero cross at 6117

0.50

Zero cros’s at 6117

0.50

0.50

0.75

0.75

0.75

1.00

“High_Exp’ (negatively correlated)

1.00

“High Exp’ (negatively correlated)

1.00

“High Exp’ (negatively comrelated)

0

2.500

5,000

7,500

10.000

12.500

15,000

17.500

20,000

0

2,500

5,000

7,500

10.000

12,500

15,000

17.500

20,000

0

2,500

5,000

7,500

10,000

12,500

15,000

17.500

20,000

Rank in Ordered Dataset

Rank in Ordered Dataset

Rank in Ordered Dataset

Enrichment profile -Hits

Ranking metric scores

Enrichment profile -Hits

Ranking metric scores

Enrichment profile -Hits

Ranking metric scores

promoting immune tolerance also needs to be noted.

To date, many immune checkpoints have been identified and studied, and WNT5A expression is thought to stimulate a variety of cytokines, including immune stimulators and inhibitors, which in turn cause inflammation or further stimulate immune tolerance (19,39). Our data revealed that WNT5A expression was positively linked to multiple immune inhibitors, such as VEGFA, PD-L1 (CD274), IL10, CD276, EDNRB, CTLA4, IL12A, and TGFB1, and various immune stimulators, such as HMGB1, ENTPD1, TLR4, TNFSF4, BTN3A, ICAM1, IL1A, IL1B, and TNF. Some of these cytokines have been reported to be associated with WNT5A, such as VEGFA (8), PD-L1 (22,37), IL10 (40), CTLA4 (23), IL1A (41), IL1B (41), and TNF (42). Furthermore, the results of neoantigen analysis suggested that WNT5A expression was associated with the number of neoantigens in LUAD, LUSC, BRCA, UCEC, SKCM, KIRP, and HNSC. Currently, PDL1 and CTLA4 are the main therapeutic targets of immunotherapy. Interestingly, WNT5A has been found to be associated with them, and inhibition of WNT5A can promote the effect of immunotherapy drugs (22,23), indicating that WNT5A may be a potential target of immunotherapy. In addition, we also found that the relationship between WNT5A expression and cytokines is not consistent in different tumors, suggesting the influence of tumor heterogeneity on WNT5A-targeted immunotherapy.

Both TMB and MSI tend to be predictive markers of immune checkpoint inhibitors (ICIs), which is important for identifying patients with potential for ICIs in various cancers (24,43). Our results revealed that WNT5A expression was positively correlated with TMB in ACC and OV, while negatively correlated to LUSC, ESCA, and READ. In addition, WNT5A expression was positively associated with MSI in TGCT and ACC, while negatively associated with MSI in UCS, DLBC, and HNSC. It is especially noteworthy that WNT5A expression was positively correlated with TMB and MSI in ACC. At present, the direct relationship between WNT5A and ACC has not been reported, but the carcinogenic effect of WNT/ B-catenin in ACC has been revealed (44,45). Therefore, the relationship between WNT5A and tumor immunity in ACC warrants further confirmation.

The WNT5A gene could stimulate non-canonical WNT pathway as well as activate or antagonize the canonical WNT signaling pathway by binding to different receptors or co-receptor complexes, such as Frizzled (FZD), receptor

tyrosine kinase-like orphan receptor-1 and 2 (ROR1/2), receptor related to tyrosine kinases (RYK), low-density lipoprotein receptor-related protein 5/6 (LRP5/6), and DVL, thus playing a crucial role in tumor development (29,46-48). Our PPI network analysis showed that WNT5A was linked to FZD2, FZD4, FZD5, FZD7, LRP5, LRP6, ROR2, DVL2, RYK, and RORA, most of which have been reported to be members of the WNT signaling pathway. Interestingly, there have been no direct studies on RORA and WNT5A until now, but it has been reported that RORA can encode the transcription activator RORa and further attenuates WNT/B-Catenin signaling in colon cancer (49,50), indicating the potential correlation between them, which needs to be further evaluated.

As an important molecule of the WNT signaling pathway, WNT5A can interact with TGFB, Notch, or other pathways to regulate EMT and immunity in cancer (7,51,52). Our GSEA analysis also indicated that the KEGG WNT signaling pathway, KEGG basal cell carcinoma, KEGG TGFß signaling pathway, hallmark epithelial-mesenchymal transition, hallmark Notch signaling, and hallmark Hedgehog signaling was highly enriched in the WNT5A high expression group. Previous studies have suggested the following functions: (I) WNT5A can regulate TGFB1 to promote immunosuppression in melanoma (53); (II) in psoriasis, WNT5A and Notch1 signaling can influence each other and regulate the secretion of cytokines IL-12, IL-23, and TNF-a, which is related to immunity (54); (III) until now, no experimental reports on the interaction between WNT5A and Hedgehog signaling have been retrieved in the field of tumor immunity. However, it has been shown that Hedgehog signaling can mediate how WNT/B-catenin induces cartilage and bone tumor formation (55). Therefore, as a member of WNT family, the interaction between WNT5A and Hedgehog signaling in tumor immunity may be a feasible research direction.

In summary, we analyzed the expression and prognosis of WNT5A in different tumors, indicating that WNT5A is correlated with the prognosis of tumors. On this basis, we further revealed that WNTSA was associated with tumor immune, suggesting that it may be a potential immunological biomarker and therapeutic target in cancer. Of course, these conclusions were obtained by bioinformatical analyses of open accessible databases, for which there is a lack of experimental verification, but they still provide some evidence and have a certain significance for further research.

Acknowledgments

Funding: Our research was supported by the National Natural Science Foundation of China (Nos. 82173252, 81871866), the Shaanxi Social Development Science and Technology Key Project (Nos. 2016SF-308; 2019SF-033), Natural Science Foundation of Shaanxi Province (No. 2022JQ-862), and the Project of Tangdu Hospital, The Fourth Military Medical University (No. 2018 Key Talents).

Footnote

Reporting Checklist: The authors have completed the REMARK reporting checklist. Available at https://atm. amegroups.com/article/view/10.21037/atm-22-1317/rc

Conflicts of Interest: All authors have completed the ICMJE uniform disclosure form (available at https://atm. amegroups.com/article/view/10.21037/atm-22-1317/coif). The authors have no conflicts of interest to declare.

Ethical Statement: The authors are accountable for all aspects of the work in ensuring that questions related to the accuracy or integrity of any part of the work are appropriately investigated and resolved. The study was conducted in accordance with the Declaration of Helsinki (as revised in 2013).

Open Access Statement: This is an Open Access article distributed in accordance with the Creative Commons Attribution-NonCommercial-NoDerivs 4.0 International License (CC BY-NC-ND 4.0), which permits the non- commercial replication and distribution of the article with the strict proviso that no changes or edits are made and the original work is properly cited (including links to both the formal publication through the relevant DOI and the license). See: https://creativecommons.org/licenses/by-nc-nd/4.0/.

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Cite this article as: Feng Y, Wang Y, Guo K, Feng J, Shao C, Pan M, Ding P, Liu H, Duan H, Lu D, Wang Z, Zhang Y, Zhang Y, Han J, Li X, Yan X. The value of WNT5A as prognostic and immunological biomarker in pan-cancer. Ann Transl Med 2022;10(8):466. doi: 10.21037/atm-22-1317

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(English Language Editor: J. Jones)