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Gene Expression Profiling of Colorectal Tumors and Normal Mucosa by Microarrays Meta-Analysis Using Prediction Analysis of Microarray, Artificial Neural Network, Classification, and Regression Trees.

Authors :
Chi-Ming Chu
Chung-Tay Yao
Yu-Tien Chang
Hsiu-Ling Chou
Yu-Ching Chou
Kang-Hua Chen
Harn-Jing Terng
Chi-Shuan Huang
Chia-Cheng Lee
Sui-Lun Su
Yao-Chi Liu
Fu-Gong Lin
Wetter, Thomas
Chi-Wen Chang
Source :
Disease Markers; 2014, p1-11, 11p
Publication Year :
2014

Abstract

Background. Microarray technology shows great potential but previous studies were limited by small number of samples in the colorectal cancer (CRC) research. The aims of this study are to investigate gene expression profile of CRCs by pooling cDNA microarrays using PAM, ANN, and decision trees (CART and C5.0). Methods. Pooled 16 datasets contained 88 normal mucosal tissues and 1186 CRCs. PAM was performed to identify significant expressed genes in CRCs and models of PAM, ANN, CART, and C5.0 were constructed for screening candidate genes via ranking gene order of significances. Results. The first screening identified 55 genes. The test accuracy of each model was over 0.97 averagely. Less than eight genes achieve excellent classification accuracy. Combining the results of four models, we found the top eight differential genes in CRCs; suppressor genes, CA7, SPIB, GUCA2B, AQP8, IL6R and CWH43; oncogenes, SPP1 and TCN1. Genes of higher significances showed lower variation in rank ordering by different methods. Conclusion. We adopted a two-tier genetic screen, which not only reduced the number of candidate genes but also yielded good accuracy (nearly 100%). This method can be applied to future studies. Among the top eight genes, CA7, TCN1, and CWH43 have not been reported to be related to CRC. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
02780240
Database :
Complementary Index
Journal :
Disease Markers
Publication Type :
Academic Journal
Accession number :
100436727
Full Text :
https://doi.org/10.1155/2014/634123