Novel significant stage-specific differentially expressed genes in hepatocellular carcinoma

Abstract Background Liver cancer is among top deadly cancers worldwide with a very poor prognosis, and the liver is a vulnerable site for metastases of other cancers. Early diagnosis is crucial for treatment of the predominant liver cancers, namely hepatocellular carcinoma (HCC). Here we developed a...

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Main Authors: Arjun Sarathi, Ashok Palaniappan
Format: Article
Language:English
Published: BMC 2019-07-01
Series:BMC Cancer
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12885-019-5838-3
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spelling doaj-6f78d393eebc4b259e146be696ab63892020-11-25T02:53:20ZengBMCBMC Cancer1471-24072019-07-0119112210.1186/s12885-019-5838-3Novel significant stage-specific differentially expressed genes in hepatocellular carcinomaArjun Sarathi0Ashok Palaniappan1Department of Bioengineering, School of Chemical and BioTechnology, SASTRA deemed UniversityDepartment of Bioinformatics, School of Chemical and BioTechnology, SASTRA deemed UniversityAbstract Background Liver cancer is among top deadly cancers worldwide with a very poor prognosis, and the liver is a vulnerable site for metastases of other cancers. Early diagnosis is crucial for treatment of the predominant liver cancers, namely hepatocellular carcinoma (HCC). Here we developed a novel computational framework for the stage-specific analysis of HCC. Methods Using publicly available clinical and RNA-Seq data of cancer samples and controls and the AJCC staging system, we performed a linear modelling analysis of gene expression across all stages and found significant genome-wide changes in the log fold-change of gene expression in cancer samples relative to control. To identify genes that were stage-specific controlling for confounding differential expression in other stages, we developed a set of six pairwise contrasts between the stages and enforced a p-value threshold (< 0.05) for each such contrast. Genes were specific for a stage if they passed all the significance filters for that stage. The monotonicity of gene expression with cancer progression was analyzed with a linear model using the cancer stage as a numeric variable. Results Our analysis yielded two stage-I specific genes (CA9, WNT7B), two stage-II specific genes (APOBEC3B, FAM186A), ten stage-III specific genes including DLG5, PARI, NCAPG2, GNMT and XRCC2, and 35 stage-IV specific genes including GABRD, PGAM2, PECAM1 and CXCR2P1. Overexpression of DLG5 was found to be tumor-promoting contrary to the cancer literature on this gene. Further, GABRD was found to be signifincantly monotonically upregulated across stages. Our work has revealed 1977 genes with significant monotonic patterns of expression across cancer stages. NDUFA4L2, CRHBP and PIGU were top genes with monotonic changes of expression across cancer stages that could represent promising targets for therapy. Comparison with gene signatures from the BCLC staging system identified two genes, HSP90AB1 and ARHGAP42. Gene set enrichment analysis indicated overrepresented pathways specific to each stage, notably viral infection pathways in HCC initiation. Conclusions Our study identified novel significant stage-specific differentially expressed genes which could enhance our understanding of the molecular determinants of hepatocellular carcinoma progression. Our findings could serve as biomarkers that potentially underpin diagnosis as well as pinpoint therapeutic targets.http://link.springer.com/article/10.1186/s12885-019-5838-3LIHC transcriptomicsHCC stagesStage-specific biomarkersDifferentially expressed genesPairwise contrastsSignificance analysis
collection DOAJ
language English
format Article
sources DOAJ
author Arjun Sarathi
Ashok Palaniappan
spellingShingle Arjun Sarathi
Ashok Palaniappan
Novel significant stage-specific differentially expressed genes in hepatocellular carcinoma
BMC Cancer
LIHC transcriptomics
HCC stages
Stage-specific biomarkers
Differentially expressed genes
Pairwise contrasts
Significance analysis
author_facet Arjun Sarathi
Ashok Palaniappan
author_sort Arjun Sarathi
title Novel significant stage-specific differentially expressed genes in hepatocellular carcinoma
title_short Novel significant stage-specific differentially expressed genes in hepatocellular carcinoma
title_full Novel significant stage-specific differentially expressed genes in hepatocellular carcinoma
title_fullStr Novel significant stage-specific differentially expressed genes in hepatocellular carcinoma
title_full_unstemmed Novel significant stage-specific differentially expressed genes in hepatocellular carcinoma
title_sort novel significant stage-specific differentially expressed genes in hepatocellular carcinoma
publisher BMC
series BMC Cancer
issn 1471-2407
publishDate 2019-07-01
description Abstract Background Liver cancer is among top deadly cancers worldwide with a very poor prognosis, and the liver is a vulnerable site for metastases of other cancers. Early diagnosis is crucial for treatment of the predominant liver cancers, namely hepatocellular carcinoma (HCC). Here we developed a novel computational framework for the stage-specific analysis of HCC. Methods Using publicly available clinical and RNA-Seq data of cancer samples and controls and the AJCC staging system, we performed a linear modelling analysis of gene expression across all stages and found significant genome-wide changes in the log fold-change of gene expression in cancer samples relative to control. To identify genes that were stage-specific controlling for confounding differential expression in other stages, we developed a set of six pairwise contrasts between the stages and enforced a p-value threshold (< 0.05) for each such contrast. Genes were specific for a stage if they passed all the significance filters for that stage. The monotonicity of gene expression with cancer progression was analyzed with a linear model using the cancer stage as a numeric variable. Results Our analysis yielded two stage-I specific genes (CA9, WNT7B), two stage-II specific genes (APOBEC3B, FAM186A), ten stage-III specific genes including DLG5, PARI, NCAPG2, GNMT and XRCC2, and 35 stage-IV specific genes including GABRD, PGAM2, PECAM1 and CXCR2P1. Overexpression of DLG5 was found to be tumor-promoting contrary to the cancer literature on this gene. Further, GABRD was found to be signifincantly monotonically upregulated across stages. Our work has revealed 1977 genes with significant monotonic patterns of expression across cancer stages. NDUFA4L2, CRHBP and PIGU were top genes with monotonic changes of expression across cancer stages that could represent promising targets for therapy. Comparison with gene signatures from the BCLC staging system identified two genes, HSP90AB1 and ARHGAP42. Gene set enrichment analysis indicated overrepresented pathways specific to each stage, notably viral infection pathways in HCC initiation. Conclusions Our study identified novel significant stage-specific differentially expressed genes which could enhance our understanding of the molecular determinants of hepatocellular carcinoma progression. Our findings could serve as biomarkers that potentially underpin diagnosis as well as pinpoint therapeutic targets.
topic LIHC transcriptomics
HCC stages
Stage-specific biomarkers
Differentially expressed genes
Pairwise contrasts
Significance analysis
url http://link.springer.com/article/10.1186/s12885-019-5838-3
work_keys_str_mv AT arjunsarathi novelsignificantstagespecificdifferentiallyexpressedgenesinhepatocellularcarcinoma
AT ashokpalaniappan novelsignificantstagespecificdifferentiallyexpressedgenesinhepatocellularcarcinoma
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