Risk analysis of colorectal cancer incidence by gene expression analysis
Author(s) -
WeiChuan Shangkuan,
HungChe Lin,
Yu-Tien Chang,
Chen-En Jian,
HuengChuen Fan,
KangHua Chen,
Yafang Liu,
Huan-Ming Hsu,
HsiuLing Chou,
ChungTay Yao,
Cordia Chu,
SuiLung Su,
ChiWen Chang
Publication year - 2017
Publication title -
peerj
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.927
H-Index - 70
ISSN - 2167-8359
DOI - 10.7717/peerj.3003
Subject(s) - colorectal cancer , microarray analysis techniques , microarray , dna microarray , gene , computational biology , microarray databases , cancer , biology , gene expression profiling , gene expression , bioinformatics , genetics
Background Colorectal cancer (CRC) is one of the leading cancers worldwide. Several studies have performed microarray data analyses for cancer classification and prognostic analyses. Microarray assays also enable the identification of gene signatures for molecular characterization and treatment prediction. Objective Microarray gene expression data from the online Gene Expression Omnibus (GEO) database were used to to distinguish colorectal cancer from normal colon tissue samples. Methods We collected microarray data from the GEO database to establish colorectal cancer microarray gene expression datasets for a combined analysis. Using the Prediction Analysis for Microarrays (PAM) method and the GSEA MSigDB resource, we analyzed the 14,698 genes that were identified through an examination of their expression values between normal and tumor tissues. Results Ten genes ( ABCG2 , AQP8 , SPIB, CA7 , CLDN8 , SCNN1B , SLC30A10 , CD177 , PADI2 , and TGFBI ) were found to be good indicators of the candidate genes that correlate with CRC. From these selected genes, an average of six significant genes were obtained using the PAM method, with an accuracy rate of 95%. The results demonstrate the potential of utilizing a model with the PAM method for data mining. After a detailed review of the published reports, the results confirmed that the screened candidate genes are good indicators for cancer risk analysis using the PAM method. Conclusions Six genes were selected with 95% accuracy to effectively classify normal and colorectal cancer tissues. We hope that these results will provide the basis for new research projects in clinical practice that aim to rapidly assess colorectal cancer risk using microarray gene expression analysis.
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