Identifying prognostic features by bottom-up approach and correlating to drug repositioning.

Traditionally top-down method was used to identify prognostic features in cancer research. That is to say, differentially expressed genes usually in cancer versus normal were identified to see if they possess survival prediction power. The problem is that prognostic features identified from one set...

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Main Authors: Wei Li, Jian Yu, Baofeng Lian, Han Sun, Jing Li, Menghuan Zhang, Ling Li, Yixue Li, Qian Liu, Lu Xie
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4349868?pdf=render
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spelling doaj-18391823e6ca41fc9290afe73caeccd02020-11-25T01:18:46ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01103e011867210.1371/journal.pone.0118672Identifying prognostic features by bottom-up approach and correlating to drug repositioning.Wei LiJian YuBaofeng LianHan SunJing LiMenghuan ZhangLing LiYixue LiQian LiuLu XieTraditionally top-down method was used to identify prognostic features in cancer research. That is to say, differentially expressed genes usually in cancer versus normal were identified to see if they possess survival prediction power. The problem is that prognostic features identified from one set of patient samples can rarely be transferred to other datasets. We apply bottom-up approach in this study: survival correlated or clinical stage correlated genes were selected first and prioritized by their network topology additionally, then a small set of features can be used as a prognostic signature.Gene expression profiles of a cohort of 221 hepatocellular carcinoma (HCC) patients were used as a training set, 'bottom-up' approach was applied to discover gene-expression signatures associated with survival in both tumor and adjacent non-tumor tissues, and compared with 'top-down' approach. The results were validated in a second cohort of 82 patients which was used as a testing set.Two sets of gene signatures separately identified in tumor and adjacent non-tumor tissues by bottom-up approach were developed in the training cohort. These two signatures were associated with overall survival times of HCC patients and the robustness of each was validated in the testing set, and each predictive performance was better than gene expression signatures reported previously. Moreover, genes in these two prognosis signature gave some indications for drug-repositioning on HCC. Some approved drugs targeting these markers have the alternative indications on hepatocellular carcinoma.Using the bottom-up approach, we have developed two prognostic gene signatures with a limited number of genes that associated with overall survival times of patients with HCC. Furthermore, prognostic markers in these two signatures have the potential to be therapeutic targets.http://europepmc.org/articles/PMC4349868?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Wei Li
Jian Yu
Baofeng Lian
Han Sun
Jing Li
Menghuan Zhang
Ling Li
Yixue Li
Qian Liu
Lu Xie
spellingShingle Wei Li
Jian Yu
Baofeng Lian
Han Sun
Jing Li
Menghuan Zhang
Ling Li
Yixue Li
Qian Liu
Lu Xie
Identifying prognostic features by bottom-up approach and correlating to drug repositioning.
PLoS ONE
author_facet Wei Li
Jian Yu
Baofeng Lian
Han Sun
Jing Li
Menghuan Zhang
Ling Li
Yixue Li
Qian Liu
Lu Xie
author_sort Wei Li
title Identifying prognostic features by bottom-up approach and correlating to drug repositioning.
title_short Identifying prognostic features by bottom-up approach and correlating to drug repositioning.
title_full Identifying prognostic features by bottom-up approach and correlating to drug repositioning.
title_fullStr Identifying prognostic features by bottom-up approach and correlating to drug repositioning.
title_full_unstemmed Identifying prognostic features by bottom-up approach and correlating to drug repositioning.
title_sort identifying prognostic features by bottom-up approach and correlating to drug repositioning.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Traditionally top-down method was used to identify prognostic features in cancer research. That is to say, differentially expressed genes usually in cancer versus normal were identified to see if they possess survival prediction power. The problem is that prognostic features identified from one set of patient samples can rarely be transferred to other datasets. We apply bottom-up approach in this study: survival correlated or clinical stage correlated genes were selected first and prioritized by their network topology additionally, then a small set of features can be used as a prognostic signature.Gene expression profiles of a cohort of 221 hepatocellular carcinoma (HCC) patients were used as a training set, 'bottom-up' approach was applied to discover gene-expression signatures associated with survival in both tumor and adjacent non-tumor tissues, and compared with 'top-down' approach. The results were validated in a second cohort of 82 patients which was used as a testing set.Two sets of gene signatures separately identified in tumor and adjacent non-tumor tissues by bottom-up approach were developed in the training cohort. These two signatures were associated with overall survival times of HCC patients and the robustness of each was validated in the testing set, and each predictive performance was better than gene expression signatures reported previously. Moreover, genes in these two prognosis signature gave some indications for drug-repositioning on HCC. Some approved drugs targeting these markers have the alternative indications on hepatocellular carcinoma.Using the bottom-up approach, we have developed two prognostic gene signatures with a limited number of genes that associated with overall survival times of patients with HCC. Furthermore, prognostic markers in these two signatures have the potential to be therapeutic targets.
url http://europepmc.org/articles/PMC4349868?pdf=render
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