Research ArticleIdentification of Transcriptional Signatures of Colon TumorStroma by a Meta-Analysis
Md. Nazim Uddin ,1,2,3 Mengyuan Li,1,2,3 and XiaoshengWang 1,2,3
1Biomedical Informatics Research Lab, School of Basic Medicine and Clinical Pharmacy, China Pharmaceutical University,Nanjing 211198, China2Cancer Genomics Research Center, School of Basic Medicine and Clinical Pharmacy, China Pharmaceutical University,Nanjing 211198, China3Big Data Research Institute, China Pharmaceutical University, Nanjing 211198, China
Correspondence should be addressed to Xiaosheng Wang; [email protected]
Received 28 February 2019; Accepted 31 March 2019; Published 2 May 2019
Guest Editor: Nathaniel Weygant
Copyright © 2019 Md. Nazim Uddin et al. This is an open access article distributed under the Creative Commons AttributionLicense, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properlycited.
Background. The tumor stroma plays pivotal roles in influencing tumor growth, invasion, and metastasis. Transcriptionalsignatures of colon tumor stroma (CTS) are significantly associated with prognosis of colon cancer. Thus, identification ofthe CTS transcriptional features could be useful for colon cancer diagnosis and therapy. Methods. By a meta-analysis of threeCTS gene expression profiles datasets, we identified differentially expressed genes (DEGs) between CTS and colon normalstroma. Furthermore, we identified the pathways, upstream regulators, and protein-protein interaction (PPI) network that weresignificantly associated with the DEGs. Moreover, we analyzed the enrichment levels of immune signatures in CTS. Finally, weidentified CTS-associated gene signatures whose expression was significantly associated with prognosis in colon cancer. Results. Weidentified numerous significantly upregulated genes (such asCTHRC1,NFE2L3, SULF1, SOX9, ENC1, andCCND1) and significantlydownregulated genes (such as MYOT, ASPA, KIAA2022, ARHGEF37, BCL-2, and PPARGC1A) in CTS versus colon normalstroma. Furthermore, we identified significantly upregulated pathways in CTS that were mainly involved in cellular development,immune regulation, andmetabolism, as well as significantly downregulated pathways in CTS that were mostly metabolism-related.Moreover, we identified upstream TFs (such as SUZ12, NFE2L2, RUNX1, STAT3, and SOX2), kinases (such as MAPK14, CSNK2A1,CDK1, CDK2, and CDK4), and master metabolic transcriptional regulators (MMTRs) (such as HNF1A, NFKB1, ZBTB7A, GATA2,and GATA5) regulating the DEGs. We found that CD8+ T cells were more enriched in CTS than in colon normal stroma.Interestingly, we found that many of the DEGs and their regulators were prognostic markers for colon cancer, including CEBPB,PPARGC1, STAT3,MTOR, BCL2, JAK2, and CDK1. Conclusions. The identification of CTS-specific transcriptional signatures mayprovide insights into the tumor microenvironment that mediates the development of colon cancer and has potential clinicalimplications for colon cancer diagnosis and treatment.
1. Background
The tumor stroma is an important component of the tumormicroenvironment (TME) and plays key roles in the tumordevelopment [1]. Stromal cells are composed of many dif-ferent types of cells, including vascular endothelial cells,pericytes, adipocytes, fibroblasts, osteoblasts, chondrocytes,extracellular matrix (ECM), and bone-marrowmesenchymalstromal cells [2]. The tumor stroma can promote ECMremodeling, cellular migration, neoangiogenesis, invasion,
immunosurveillance evasion, and drug resistance of tumors[3]. Colorectal cancer (CRC) is the fourth most commoncancer and a leading cause of cancer mortality world-wide [4]. Transcriptional signatures of CRC stromal cellshave been associated with poor prognosis in CRC [5].Isella et al. demonstrated that the gene signatures of CRCstromal cells (cancer-associated fibroblasts, leukocytes, andendothelial cells) were significantly upregulated in thestem/serrated/mesenchymal transcriptional subtype of CRCwhich had a poor prognosis [6]. Calon et al. showed that
HindawiJournal of OncologyVolume 2019, Article ID 8752862, 12 pageshttps://doi.org/10.1155/2019/8752862
2 Journal of Oncology
the CRC stromal transcriptional signatures correlated withdisease relapse [5]. These prior studies exhibited the signif-icant roles of tumor stroma in CRC growth, invasion, andmetastasis.
In this study, we performed a meta-analysis of threecolon tumor stromal transcriptome datasets using the bioin-formatics approach. We identified differentially expressedgenes (DEGs) between colon tumor stroma (CTS) andnormal stroma. On the basis of these DEGs, we identifiedtheir associated pathways, upstream regulators, and protein-protein interaction (PPI) network and certain prognosticmarkers that were associated with survival of colon cancerpatients. We also analyzed the enrichment levels of immunesignatures in CTS. This study provides insights into CTSmolecular features that could have clinical implications forcolon cancer diagnosis and treatment.
2. Methods
2.1. Datasets. We searched the NCBI Gene ExpressionOmnibus (GEO) database (https://www.ncbi.nlm.nih.gov/geo/) using the keywords “colon cancer,” “stroma,” and“tumor stroma” and identified three CTS gene expressionprofiles datasets (GSE31279, GSE35602, and GSE46824)[7–9]. In survival analyses, we used the TCGA colon cancerdataset (https://portal.gdc.cancer.gov/) and a SurvExpress(http://bioinformatica.mty.itesm.mx/SurvExpress) built-indataset (colon metabase) [10]. A summary of these datasetsis shown in Supplementary Table S1.
2.2. Identification of DEGs between CTS and Normal Stroma.We used the web tool Network Analyst [11] to identify theDEGs betweenCTS andnormal stroma.TheComBatmethod[12] in the tool was utilized to remove batch effects fromthe three CTS datasets (Supplementary Figure S1). Each indi-vidual dataset was normalized by base-2 log transformationand quantile normalization, and the R package “limma”was utilized to identify the DEGs between CTS and normalstroma. A meta-analysis of the three datasets was performedusing Cochran's combination test [13]. The false discoveryrate (FDR), calculated by the Benjamini–Hochberg method[14], was used to adjust for multiple tests. We determined theDEGs with a threshold of absolute combined effect size (ES)>0.82 and FDR<0.05.
2.3. Gene-Set Enrichment Analysis. We performed gene-setenrichment analysis of the DEGs by GSEA [15]. The KEGGpathways significantly associated with the upregulated andthe downregulated DEGs were identified (FDR < 0.05),respectively.
2.4. Identification of Transcription Factors (TFs), Kinases, andMaster Metabolic Transcriptional Regulators (MMTRs) �atAre Significantly Associated with the DEGs. To link geneexpression signatures to upstream cell signaling networks, weused eXpression2Kinases [16] to identify the upstream TFsand kinases that regulate the DEGs and utilized iRegulon [17]to identify the MMTRs of the DEGs.
2.5. Identification of PPI Network of the DEGs. We employedNetwork Analyst [11] to construct a PPI network of theDEGs [11]. Two types of modules (function-first modules andconnection-first modules) of the PPI network were extracted.The function-firstmodules (FFMs)were constructed by path-way enrichment analysis and the connection-first modules(CFMs) were identified by the randomwalk-based algorithm[18].
2.6. Comparison of the Enrichment Levels of CD8+ T Cellsbetween Two Classes of Samples. The enrichment level ofCD8+T cells in a samplewas evaluated by the expression levelofCD8A.We compared the enrichment levels of CD8+T cellsbetween two groups of samples using Student's t-test.
2.7. Identification of DEGs between High-Stroma-Content andLow-Stroma-Content TCGA Colon Cancer Samples. We usedESTIMATE [19] to quantify the intratumoral stromal content(stroma score) of TCGA colon cancer samples. We identifiedthe DEGs between high-stroma-content (stroma score >median) and low-stroma-content (stroma score < median)tumors using Student's t-test.
2.8. Survival Analyses. We compared the overall survival(OS) and the disease-free survival (DFS) of colon cancerpatients classified based on gene expression levels (expressionlevels > median versus expression levels < median). Kaplan-Meier survival curves were used to show the survival dif-ferences, and the log-rank test was utilized to evaluate thesignificance of survival differences.The individual prognosticgenes were identified and were fitted in a multivariate Coxregression model. SurvExpress [10] was used for the multi-variate survival analysis.
3. Results
3.1. Identification of DEGs between CTS and Normal Stroma.We identified 694 DEGs between CTS and normal stroma bythe meta-analysis. These DEGs included 295 downregulatedand 399 upregulated genes in CTS (Supplementary TablesS2 and S3). Figure 1 shows the top 25 upregulated andtop 25 downregulated genes in CTS ranked on the basis ofthe combined ES (the detailed results of statistical analysisfor the top 10 upregulated and top 10 downregulated genesin CTS are shown in Supplementary Tables S4). CTHRC1,a gene involved in vascular remodeling, bone formation,and developmental morphogenesis, was upregulated in CTSwith the highest ES. It has been shown that CTHRC1 couldpromote human CRC cell proliferation and invasion byactivating Wnt/PCP signaling [20]. This gene also plays animportant role in promoting ovarian cancer cell adhesion,migration, and metastasis through the activation of integrin𝛽3/FAK signaling [21]. NFE2L3, a gene regulating the cellcycle progression in colon cancer [22], was upregulated inCTS with the second highest ES. Interestingly, both CTHRC1and NFE2L3 have been indicated as useful biomarker candi-dates for CRC diagnosis because of their overexpression inadenomas and CRC relative to normal tissue [23]. SULF1,
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classdataset
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SM775191
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775185
CTHRC1SULF1NFE2L3CCND1ENC1CLDN1SOX9SEMA5APCDH17BCL6BVCANNUAK1KDELR3COL5A1KIAA1217CKAP4DCBLD1PROX1PLAURPTBP3ESM1MLXIPLSLC16A3SEMA3GGZMBMYOTC7GNG7ARHGEF37ASPABCL2RFX2SLC6A16KIAA2022SRSF5CBX7METTL7AEFCAB1PELI2ANKRD13AC1QTNF9SEPP1FXYD1GATSPDK4TMOD1C16orf89PCF11FGF13CCDC7
Figure 1: Gene expression pattern of the top 25 upregulated and top 25 downregulated genes in colon tumor stroma (CTS) relative to colonnormal stroma ranked on the basis of the combined effect size (ES) identified by Network Analyst [11].
whose expression in tumor stroma is a prognostic markerin advanced pancreatic cancer [24], was upregulated in CTSwith the third highest ES. The overexpression of this genehas been associated with a poor prognosis in urothelialcarcinoma [25]. SOX9, the gene upregulated in CTS withthe fourth highest ES, has been shown to be overexpressedin CRC and its overexpression was an independent adverseprognosticator in CRC [26]. Some other genes upregulatedin CTS have been demonstrated to be overexpressed in CRCand their expression was negatively associated with CRCprognosis, such as ENC1, CCND1, VCAN, SEMA5A, andNOS3 [27–31]. Interestingly, both PCDH17 and BCL6B wereupregulated in CTS, while they had reduced expression inCRC [32, 33]. It indicates that PCDH17 and BCL6B could bespecifically expressed in CTS cells but not in colon cancercells.
Many of the significantly downregulated genes in CTShave been associatedwith CRC [34–37]. For example,MYOT,ASPA, and KIAA2022 were downregulated in CRC [34], thedownregulation of ARHGEF37 was associated with a poorprognosis inCRC [35], higher expression levels ofBCL-2werecorrelated with a better survival prognosis in CRC [36], andPPARGC1A was a negative predictor for CRC prognosis [37].
Altogether, a number of the abnormally expressed genesin CTS compared to colon normal stroma identified by themeta-analysis have been associated with CRC pathology andprognosis.
3.2. Identification of Pathways Significantly Associated with theDEGs. GSEA [15] identified 44 KEGG pathways that weresignificantly associated with the upregulated genes in CTS.These pathwaysweremainly involved in cellular development(p53 signaling, Wnt signaling, apoptosis, Notch signaling,focal adhesion, endocytosis, ECM-receptor interaction, celladhesion molecules, adherens junction, tight junction, gapjunction, and regulation of actin cytoskeleton), immuneregulation (leukocyte transendothelial migration, comple-ment and coagulation cascades, natural killer cell medi-ated cytotoxicity, Toll-like receptor, chemokine signaling,and cytokine-cytokine receptor interaction), andmetabolism(purine metabolism and pyrimidine metabolism) (Figure 2,Supplementary Table S5). Previous studies have shown thatsome of these pathways were significantly associated withcolon cancer [38–41]. For example, the Wnt and Notchpathways were associated with colon cancer development[38, 39]. The cytokine-cytokine receptor interaction pathwaywas significantly enriched in CRC [34]. The ECM and ECM-associated proteins [39], the glycosaminoglycan metabolism,and chondroitin sulfate/dermatan sulfate metabolism path-ways played key roles in mediating tumormicroenvironment[40, 41].
In addition, GSEA identified six KEGG pathways thatwere significantly associated with the downregulated genes inCTS (Supplementary Figure S2).Most of these pathways weremetabolism-related, including purine metabolism, histidine
4 Journal of Oncology
Regulation of actin cytoskeletonPyrimidine metabolism
Cytokine-cytokine receptor interactionGap junction
Notch signaling pathwayApoptosis
Tight junctionChemokine signaling pathway
Adherens junctionToll-like receptor signaling pathway
EndocytosisCell adhesion molecules (CAMs)
Natural killer cell mediated cytotoxicityPurine metabolism
Complement and coagulation cascadesp53 signaling pathway
Glycosaminoglycan biosynthesis-chondroitin sulfateWnt signaling pathway
Focal adhesionLeukocyte transendothelial migration
ECM-receptor interactionSmall cell lung cancer
Pathways in cancer
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Figure 2: Significantly upregulated KEGG pathways in CTS relativeto colon normal stroma identified by GSEA [15]. FDR: false discoveryrate.
metabolism, glycine, serine, and threonine metabolism, anddrug metabolism-cytochrome p450. These pathways havebeen associated with colon and other cancers [42–44]. Forexample, impaired purine metabolism was associated withthe progression of cancer [42]. Histidine metabolism couldboost cancer therapy [43]. Cytochrome P450 enzymes wereassociated with the metabolism of anticancer drugs and theirexpression was associated with a poor prognosis in CRCpatents [44].
3.3. Identification of Upstream TFs, Kinases, and MMTRsSignificantly Associated with the DEGs. We identified 11 sig-nificant upstreamTFs regulating the DEGs, including SUZ12,NFE2L2, RUNX1, ESR1, STAT3, TCF3, FOSL2, SALL4, AR,SMC3, and SOX2, of which the genes encoding RUNX1and SALL4 were upregulated in CTS (Figure 3(a)). Mostof these TFs have been associated with colon cancer [45–49]. For example, SUZ12 was the most significant upstreamTF which could contribute to the CRC development [45].RUNX1 mutations were associated with the CRC risk [46].TCF3 and FOSL2 were associated with the tumorigenesis ofCRC [47, 48]. The overexpression of SOX2 was associatedwith the progression and a poor prognosis in colon cancer[49].
Moreover, we identified 124 significant protein kinasesthat regulate the DEGs (Figure 3(b), Supplementary TableS6). These kinases mainly included cell cycle regula-tion kinases (CDKs), signaling MAP kinases (MAPKs,MAP2Ks, and MAP3Ks), and ribosomal kinases (RPS6KA1,RPS6KA3, and RPS6KA5). MAPK14 was the most sig-nificant upstream kinase negatively regulating the forma-tion of colitis-associated colon tumors [50]. Furthermore,we constructed a TF-kinase interaction network of theseTFs and kinases (Figure 3(c)). In the network, the mostconnected TFs included SUZ12, NFE2L2, RUNX1, STAT3,FOSL2, AR, SMC3, ESR1, and TCF3, and the most con-nected kinases included MAPK14, CDK1, CSNK2A1, CDK2,MAPK3, HIPK2, ERK1, and CDK4. It indicates that the cellcycle regulation may play a pivotal role in CTS.
MMTRs are interesting biomarkers and targets formetabolism-targeted cancer therapy [51]. We identified 9(HNF1A, NFKB1, ZBTB7A, ATF6, TEAD4, TFAP2B, JAZF1,
FNTB, and EP300) and 12 (PKNOX2, GATA2, MAPK10,TEAD1, TOX, MEF2A, GATA5, ELK1, MAZ, NHLH1, ATF1,and RAD21) MMTRs for the upregulated and the down-regulated genes in CTS, respectively (Supplementary TableS7), and built the regulatory networks associated with theseMMTRs (Figure 4). In the networks, ATF6 (activatingtranscription factor 6), a TF regulating unfolded proteinresponse during endoplasmic reticulum (ER) stress, targeted163 upregulated genes, and PKNOX2 (PBX/knotted 1 home-obox 2), which plays key roles in regulating cell proliferation,differentiation, and death, targeted 131 downregulated genes.Interestingly, two members of the GATA family of TFs(GATA2 and GATA5) were the MMTRs that regulated thedownregulated genes in CTS (Figure 4(b)).
Altogether, the identification of upstream TFs, kinases,and MMTRs significantly associated with the DEGs mayprovide insights into the TME thatmediates the developmentof colon cancer.
3.4. CD8+ T Cells Are More Enriched in CTS than in NormalStroma. We compared the enrichment levels of CD8+ T cellsbetweenCTS andnormal stroma and found thatCD8+T cellsshowed significantly higher enrichment levels in CTS thanin normal stroma (Student's t-test, p=0.016) (Figure 5). Thissuggests an antitumor immune response activity in the TMEof colon cancer.
3.5. Identification of Prognostic Factors in Colon Cancer Basedon the DEGs and�eir Upstream Regulators. We investigatedthe association between the transcriptional signatures of CTSand survival prognosis (overall survival (OS) and disease-free survival (DFS)) in the TCGA colon cancer dataset. Thetranscriptional signatures included the top 10 upregulatedand top 10 downregulated genes in CTS on the basis of ES, 45hub genes (≥3 degrees) from the zero-order PPI network ofthe DEGs (Supplementary Table S8), and the genes encoding11 TFs, 124 kinases, and 21 MMTRs regulating the DEGs. Wefound that the expression of many of these transcriptionalsignatures was significantly associated with the survival ofcolon cancer patients. For example, the expression of CEBPB,a gene significantly upregulated in CTS and a hub node in thePPI network, had a significant negative correlationwithOS incolon cancer (Figure 6(a)). The negative correlation betweenCEBPB expression and survival has also been demonstratedin other cancer types, such as high-grade serous ovariancancer [52]. PPARGC1 was significantly downregulated inCTS and was a hub node in the PPI network, while itsexpression had a significant positive correlation with OS incolon cancer (Figure 6(a)). PPARGC1A was indicated as atumor suppressor in colon cancer [53] and ovarian cancer[54], as well as a negative prognostic biomarker for CRC [37].Our data indicate that the deregulation of these genes in CTSis prognostic for colon cancer patients.
Among the upstream regulators (TFs, kinases, andMMTRs) of the DEGs, the expression of STAT3, RPS6KA5,IKBKE, ERBB2,MTOR, andNFKB1 had a positive correlationwith OS in colon cancer, while the expression of CDK1,CDK5, and BRD2 had a negative correlation with OS in coloncancer (Figure 6(a)).The deregulation of these genes has been
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Figure 3:�e significant upstream transcriptional factors (TFs) and kinases that regulate the differentially expressed genes (DEGs) between CTSand colon normal stroma identified by eXpression2Kinases [16]. (a) Significant upstream TFs regulating the DEGs. (b) Significant upstreamkinases regulating the DEGs. (c) A TF-kinase interaction network of the significant upstream TFs and kinases regulating the DEGs.
6 Journal of Oncology
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PTH1R IGSF11
SLC9ASLCSLC9ZNF407
KCNIP3PDE9A
MMMERICH1
PKNOX2
RFX2
SEMA3DFHIT
CRADD
TGM4M4M4M4ZNF268
VAT1L MT1B
ATRNL1
TRERF1TRTRRTRRERF1F1RERF1RERFERF1RRREEERF1ERFRF11PRKG2
FGF13
SMARCA2
FHL1
PDE4D CTNND2
ANK2
ZNF536
COLEC12
KCNIP4
NPVF
KCKKCNIKCCNRSPO2
NIP4PNIP4P4CTNNA2
(b)
Figure 4: Regulatory networks of the master metabolic transcriptional regulators (MMTRs) and their targeted differentially expressed genes(DEGs) between CTS and normal stroma identified by iRegulon [17]. (a) Regulatory network of the MMTRs and their targeted upregulatedgenes in CTS. (b) Regulatory network of the MMTRs and their targeted downregulated genes in CTS. The green color octagon indicatesMMTRs and purple color oval indicates DEGs.
Journal of Oncology 7
Tumor stroma Normal stroma
p = 0.016
−0.4
−0.2
0.0
0.2
0.4
0.6
CD8+
T ce
ll en
richm
ent l
evel
Figure 5: CD8+ T cells have significantly higher enrichment levels in CTS than in colon normal stroma. Student's t-test p value is shown.
associated with tumor progression in a wide variety of cancertypes [55–60].
In addition, we identified 18 transcriptional signaturesof CTS whose expression was significantly associated withDFS in colon cancer individually (Supplementary FigureS3). These genes included CEBPB, BCL2, PAN2, NOS3,FTL, ARHGEF37, SMC3, EP300, JAK2, RPS6KA3, RPS6KA1,PRKACA,HIPK1,HIPK2,MAPK8,GSK3A,CLK2, andCDK3.It indicates that these CTS transcriptional signatures could bebiomarkers for colon cancer relapse.
Furthermore, we used themultivariate analysis to validatethe association between the prognostic CTS transcriptionalsignatures and survival using the colon metabase data [10].For OS analysis, a total of 482 patients were split intotwo groups: high-risk group (N=241) versus low-risk group(N=241) based on the prognostic index (SupplementaryFigure S4A). As expected, the high-risk group had worseOS than the low-risk group (Figure 6(b)). Similarly, forDFS analysis, we divided patients into the high-risk group(N=272) and the low-risk group (N=273) based on theprognostic index (Supplementary Figure S4B) and found thatthe high-risk group had worse DFS compared to the low-riskgroup (Figure 6(c)).These results proved the prognostic valueof these CTS transcriptional signatures in colon cancer.
4. Discussion
The tumor stroma constitutes an important component ofthe TME that mediates tumor growth, immune evasion, andmetastasis [1]. Thus, it is important to identify molecularfeatures in the tumor stroma. To this end, we performeda meta-analysis of three CTS transcriptome datasets foridentifying CTS-associated transcriptional signatures. Weidentified a number of upregulated and downregulated genesin CTS compared to colon normal stroma. Furthermore,we identified upregulated and downregulated pathways sig-nificantly associated with these deregulated genes in CTS.The upregulated pathways were mainly involved in cellulardevelopment, immune regulation, and metabolism, and the
downregulated pathways were mostly metabolism-related.These results revealed the abnormal alterations of cellulardevelopment, immune regulation, and metabolism pathwaysin CTS. We found that CD8+ T cells were more enriched inCTS than in colon normal stroma, suggesting an immuneinfiltration microenvironment in CTS. Furthermore, weidentified numerous CTS transcriptional signatures whoseexpression was significantly associated with prognosis incolon cancer, such as CEBPB, PPARGC1, STAT3, MTOR,BCL2, JAK2, and CDK1. These transcriptional signaturesare mainly involved in immune regulation (CEBPB, STAT3,and JAK2), metabolism (PPARGC1 and MTOR), cell cycle(CDK1), and apoptosis (BCL2), suggesting that the deregu-lation of these pathways in CTSmay contribute to the alteredprognosis in colon cancer.
To verify the association of the identified transcriptionalsignatures with CTS, we analyzed the TCGA colon cancerdataset. We divided these cancers into high-stroma-contentand low-stroma-content groups on the basis of their intra-tumoral stromal content evaluated by ESTIMATE [19] andfound that 153 upregulated genes in CTS had significantlyhigher expression levels in the high-stroma-content groupthan in the low-stroma-content group. These genes included18 hub genes in the PPI network of DEGs and 6 TFs, 40kinases, and 12 MMTRs encoding genes that regulated theDEGs (Supplementary Figure S5, Table S9). We also found27 downregulated genes in CTS which had significantlylower expression levels in the high-stroma-content group,including 14 hub genes, and genes encoding 2 TFs, 18kinases, and 3 MMTRs (Supplementary Figure S5, Table S9).Interestingly, most of the downregulated hub genes in CTSwere also downregulated in the high-stroma-content coloncancers (Supplementary Figure S5). These results indicatethat many transcriptional signatures of CTS identified bythe meta-analysis are tumor stroma-specific. In addition, wefound that CD8+ T cells had significantly higher enrichmentlevels in CTS versus colon normal stroma (Student's t-test,p=0.016), as well as in the high-stroma-content colon can-cers versus the low-stroma-content colon cancers (Student's
8 Journal of Oncology
0 30001000
0.0
0.8
0.4
0 30001000
0.0
0.8
0.4
CEBPB
Prob
abili
ty o
f ove
rall
surv
ival
p = 0.036
PPARGC1A
p = 0.003
STAT3
p = 0.009
NFKB1
Prob
abili
ty o
f ove
rall
surv
ival
p = 0.03
CDK1
p = 0.008
CDK5
p = 0.04
BRD2
p = 0.047
RPS6KA5
Prob
abili
ty o
f ove
rall
surv
ival
p = 0.045
ERBB2
Overall survival time (days)
p = 0.018
IKBKE
p = 0.043
MTOR
p = 0.024
Lower expression level
Higher expression level
0 30001000
0.0
0.8
0.4
0 30001000
0.0
0.8
0.4
0 30001000
0.0
0.8
0.4
0 30001000
0.0
0.8
0.4
0 30001000
0.0
0.8
0.4
0 30001000
0.0
0.8
0.4
0 30001000
0.0
0.8
0.4
0 30001000
0.0
0.8
0.4
0 30001000
0.0
0.8
0.4
(a)
1.0
0.8
0.6
0.4
0.2
0.00 50 100 150 200
Overall survival time (months)
Prob
abili
ty o
f ove
rall
surv
ival
Concordance Index=63.4,Log-Rank Equal Curves p=1.105e-06,R^2=0.074/0.988Risk Groups Hazard Ratio=2.07 (conf.int.1.53~2.79),p=1.959e-06
Low-risk group
High-risk group
241,+:173,CI=55.8241,+:125,CI=57
241134172860100154241137224679134202
(b)
1.0
0.8
0.6
0.4
0.2
0.00 50 100 150 200
Disease-free survival time (months)
Prob
abili
ty o
f dise
ase f
ree s
urvi
val
Concordance Index=61.64,Log-Rank Equal Curves p=0.0001785,R^2=0.044/0.935Risk Groups Hazard Ratio=2(conf.int.1.38~2.89),p=0.0002425
Low-risk group
High-risk group
273,+:230,CI=57.6272,+:190,CI=56.9
273
145153363118190272
124153464132211
(c)
Figure 6: �e CTS gene signatures whose expression is associated with prognosis in colon cancer. (a) Kaplan-Meier survival curves show thegene signatures whose expression is significantly associated with overall survival (OS) in colon cancer in the TCGA colon cancer dataset (log-rank test, p<0.05). (b) Multivariate Cox regression analysis shows that the OS-associated CTS gene signatures are prognostic for OS in coloncancer in a SurvExpress built-in dataset (colon metabase) [10]. (c) Multivariate Cox regression analysis shows that the DFS-associated CTSgene signatures are prognostic for DFS in colon cancer in a SurvExpress built-in dataset (colon metabase) [10]. DFS: disease-free survival.
Journal of Oncology 9
0 1000 2000 3000 4000
1.0
High-stroma-content colon cancers
Disease-free survival time (days)
Prob
abili
ty o
f dise
ase-
free s
urvi
val
0.0
0.2
0.4
0.6
0.8
0 4000
0.0
0.2
0.4
0.6
0.8
1.0
Low-stroma-content colon cancers
1000 2000 3000
Higher CD8+ T cells enrichment levels Lower CD8+ T cells enrichment levels
p= 0.499 p= 0.031
Figure 7:�e higher enrichment levels of CD8+ T cells were associated with better disease-free survival in the low-stroma-content colon cancers,but not in the high-stroma-content colon cancers. ESTIMATE [19] was used to quantify the intratumoral stromal content (stroma score) ofTCGA colon cancer samples. High-stroma-content: stroma score >median; low-stroma-content: stroma score <median.
t-test, p=3.3∗10−8). It indicates that CD8+ T cells tend to haveelevated infiltration in the TME of colon cancer. Interestingly,we found that the higher enrichment levels of CD8+ T cellswere associated with better DFS in the low-stroma-contentcolon cancers, but not in the high-stroma-content coloncancers (Figure 7). It suggests that the immune cells exert anantitumor effect only when they have infiltrated into tumorcells and that the immune cells in the tumor stroma may nothave such a direct antitumor effect.
This study has identified a number of CTS-associatedtranscriptional signatures that could be biomarkers for coloncancer diagnosis and prognosis and may provide therapeutictargets for colon cancer. However, to translate these findingsinto clinical application, further experimental and clinicalvalidation would be necessary.
5. Conclusions
The identification of CTS-specific transcriptional featuresmay provide insights into the mechanism that mediates thedevelopment of colon cancer and thus has potential clinicalimplications for colon cancer diagnosis and treatment.
Abbreviations
CTS: Colon tumor stromaDEGs: Differentially expressed genesPPI: Protein-protein interactionES: Effect sizeTME: Tumor microenvironmentECM: Extracellular matrixTFs: Transcription factorsMMTRs: Master metabolic transcription factorsOS: Overall survivalDFS: Disease-free survivalCRC: Colorectal cancer
GEO: Gene Expression OmnibusTCGA: The Cancer Genome AtlasFDR: False discovery rateGSEA: Gene-set enrichment analysisFFM: Function-first moduleCFM: Connection-first module.
Data Availability
The datasets (GSE31279, GSE35602, and GSE46824) weredownloaded from the NCBI GEO database (https://www.ncbi.nlm.nih.gov/geo/), the TCGA colon cancer dataset wasdownloaded from the website https://portal.gdc.cancer.gov/,and the colon metabase dataset was from SurvExpress(http://bioinformatica.mty.itesm.mx/SurvExpress).
Conflicts of Interest
The authors declare that they have no conflicts of interestregarding the publication of this paper.
Authors’ Contributions
Md. Nazim Uddin performed data analyses and helpedwrite and prepare the manuscript. Mengyuan Li performeddata analyses and helped prepare the manuscript. XiaoshengWang conceived the research, designed analysis strategies,and wrote the manuscript. All the authors read and approvedthe final manuscript.
Acknowledgments
This work was supported by China Pharmaceutical Uni-versity (grant numbers 3150120001 and 2632018YX01 toXiaosheng Wang).
10 Journal of Oncology
Supplementary Materials
Supplementary Figure S1: illustration of PCA and densityplots as validation tools for batch effect removal. Plot ofprincipal components: (A) before batch effect removal and(B) after batch effect removal. Plot of density: (C) beforebatch effect removal and (D) after batch effect removal. Themultidimensional scaling of the datasets demonstrates that,before the batch effect adjustment, each dataset obviouslyseparated from all the others, whereas, after batch effectadjustment, samples from all the datasets are incorporatedclearly. Supplementary Figure S2: six KEEG pathways thatare significantly associated with the downregulated genesin colon tumor stroma relative to normal stroma. Supple-mentary Figure S3: the genes (DEGs and their upstreamregulators) whose expression is significantly associated withdisease-free survival in colon cancer (log-rank test, p<0.05).Supplementary Figure S4: patients divided into the high-risk group and the low-risk group based on the prognosticgene signatures identified. A.Overall survival. B. Disease-freesurvival. Supplementary Figure S5: numbers of overlappinggenes between the DEGs between colon tumor stroma andnormal stroma and their upstream regulators and the DEGsbetween high-stroma-content and low-stroma-content coloncancers. UP TCGA: upregulated differentially expressedgenes between high-stroma-content and low-stroma-contentTCGA colon cancer samples and DOWN TCGA: downreg-ulated differentially expressed genes between high-stroma-content and low-stroma-content TCGA colon cancer sam-ples. Supplementary Table S1: a summary of the datasetsused in this study. Supplementary Table S2: upregulatedgenes in colon tumor stroma versus colon normal stroma.Supplementary Table S3: downregulated genes in colontumor stroma versus colon normal stroma. SupplementaryTable S4: the top 10 upregulated and top 10 downregulatedgenes in colon tumor stroma. Supplementary Table S5: 44KEGG pathways that were significantly associated with theupregulated genes in colon tumor stroma (CTS). Supple-mentary Table S6: upstream transcription factors and kinasesregulating the differentially expressed genes between colontumor stroma and normal stroma. Supplementary TableS7: master metabolic transcriptional regulators (MMTRs)(iRegulon normalized enrichment score NES > 3.0) regulat-ing the differentially expressed genes between colon tumorstroma and normal stroma. Supplementary Table S8: hubgenes in the protein-protein interaction network of thedifferentially expressed genes between colon tumor stromaand normal stroma. Supplementary Table S9: overlappinggenes between the DEGs between colon tumor stroma andnormal stroma and their upstream regulators and the DEGsbetween high-stroma-content and low-stroma-content coloncancers. (Supplementary Materials)
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