A systems biology-based classifier for hepatocellular carcinoma diagnosis.

AIM: The diagnosis of hepatocellular carcinoma (HCC) in the early stage is crucial to the application of curative treatments which are the only hope for increasing the life expectancy of patients. Recently, several large-scale studies have shed light on this problem through analysis of gene expressi...

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Main Authors: Yanqiong Zhang, Shaochuang Wang, Dong Li, Jiyang Zhnag, Dianhua Gu, Yunping Zhu, Fuchu He
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3145651?pdf=render
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spelling doaj-b4387858f46a4d3eb02c1ad2efc76d9d2020-11-25T01:46:40ZengPublic Library of Science (PLoS)PLoS ONE1932-62032011-01-0167e2242610.1371/journal.pone.0022426A systems biology-based classifier for hepatocellular carcinoma diagnosis.Yanqiong ZhangShaochuang WangDong LiJiyang ZhnagDianhua GuYunping ZhuFuchu HeAIM: The diagnosis of hepatocellular carcinoma (HCC) in the early stage is crucial to the application of curative treatments which are the only hope for increasing the life expectancy of patients. Recently, several large-scale studies have shed light on this problem through analysis of gene expression profiles to identify markers correlated with HCC progression. However, those marker sets shared few genes in common and were poorly validated using independent data. Therefore, we developed a systems biology based classifier by combining the differential gene expression with topological features of human protein interaction networks to enhance the ability of HCC diagnosis. METHODS AND RESULTS: In the Oncomine platform, genes differentially expressed in HCC tissues relative to their corresponding normal tissues were filtered by a corrected Q value cut-off and Concept filters. The identified genes that are common to different microarray datasets were chosen as the candidate markers. Then, their networks were analyzed by GeneGO Meta-Core software and the hub genes were chosen. After that, an HCC diagnostic classifier was constructed by Partial Least Squares modeling based on the microarray gene expression data of the hub genes. Validations of diagnostic performance showed that this classifier had high predictive accuracy (85.88∼92.71%) and area under ROC curve (approximating 1.0), and that the network topological features integrated into this classifier contribute greatly to improving the predictive performance. Furthermore, it has been demonstrated that this modeling strategy is not only applicable to HCC, but also to other cancers. CONCLUSION: Our analysis suggests that the systems biology-based classifier that combines the differential gene expression and topological features of human protein interaction network may enhance the diagnostic performance of HCC classifier.http://europepmc.org/articles/PMC3145651?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Yanqiong Zhang
Shaochuang Wang
Dong Li
Jiyang Zhnag
Dianhua Gu
Yunping Zhu
Fuchu He
spellingShingle Yanqiong Zhang
Shaochuang Wang
Dong Li
Jiyang Zhnag
Dianhua Gu
Yunping Zhu
Fuchu He
A systems biology-based classifier for hepatocellular carcinoma diagnosis.
PLoS ONE
author_facet Yanqiong Zhang
Shaochuang Wang
Dong Li
Jiyang Zhnag
Dianhua Gu
Yunping Zhu
Fuchu He
author_sort Yanqiong Zhang
title A systems biology-based classifier for hepatocellular carcinoma diagnosis.
title_short A systems biology-based classifier for hepatocellular carcinoma diagnosis.
title_full A systems biology-based classifier for hepatocellular carcinoma diagnosis.
title_fullStr A systems biology-based classifier for hepatocellular carcinoma diagnosis.
title_full_unstemmed A systems biology-based classifier for hepatocellular carcinoma diagnosis.
title_sort systems biology-based classifier for hepatocellular carcinoma diagnosis.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2011-01-01
description AIM: The diagnosis of hepatocellular carcinoma (HCC) in the early stage is crucial to the application of curative treatments which are the only hope for increasing the life expectancy of patients. Recently, several large-scale studies have shed light on this problem through analysis of gene expression profiles to identify markers correlated with HCC progression. However, those marker sets shared few genes in common and were poorly validated using independent data. Therefore, we developed a systems biology based classifier by combining the differential gene expression with topological features of human protein interaction networks to enhance the ability of HCC diagnosis. METHODS AND RESULTS: In the Oncomine platform, genes differentially expressed in HCC tissues relative to their corresponding normal tissues were filtered by a corrected Q value cut-off and Concept filters. The identified genes that are common to different microarray datasets were chosen as the candidate markers. Then, their networks were analyzed by GeneGO Meta-Core software and the hub genes were chosen. After that, an HCC diagnostic classifier was constructed by Partial Least Squares modeling based on the microarray gene expression data of the hub genes. Validations of diagnostic performance showed that this classifier had high predictive accuracy (85.88∼92.71%) and area under ROC curve (approximating 1.0), and that the network topological features integrated into this classifier contribute greatly to improving the predictive performance. Furthermore, it has been demonstrated that this modeling strategy is not only applicable to HCC, but also to other cancers. CONCLUSION: Our analysis suggests that the systems biology-based classifier that combines the differential gene expression and topological features of human protein interaction network may enhance the diagnostic performance of HCC classifier.
url http://europepmc.org/articles/PMC3145651?pdf=render
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