A computational method for prediction of excretory proteins and application to identification of gastric cancer markers in urine.

A novel computational method for prediction of proteins excreted into urine is presented. The method is based on the identification of a list of distinguishing features between proteins found in the urine of healthy people and proteins deemed not to be urine excretory. These features are used to tra...

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Main Authors: Celine S Hong, Juan Cui, Zhaohui Ni, Yingying Su, David Puett, Fan Li, Ying Xu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-02-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3041827?pdf=render
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spelling doaj-17e20b923de14dbbb767e752cc72d9bd2020-11-25T01:46:38ZengPublic Library of Science (PLoS)PLoS ONE1932-62032011-02-0162e1687510.1371/journal.pone.0016875A computational method for prediction of excretory proteins and application to identification of gastric cancer markers in urine.Celine S HongJuan CuiZhaohui NiYingying SuDavid PuettFan LiYing XuA novel computational method for prediction of proteins excreted into urine is presented. The method is based on the identification of a list of distinguishing features between proteins found in the urine of healthy people and proteins deemed not to be urine excretory. These features are used to train a classifier to distinguish the two classes of proteins. When used in conjunction with information of which proteins are differentially expressed in diseased tissues of a specific type versus control tissues, this method can be used to predict potential urine markers for the disease. Here we report the detailed algorithm of this method and an application to identification of urine markers for gastric cancer. The performance of the trained classifier on 163 proteins was experimentally validated using antibody arrays, achieving >80% true positive rate. By applying the classifier on differentially expressed genes in gastric cancer vs normal gastric tissues, it was found that endothelial lipase (EL) was substantially suppressed in the urine samples of 21 gastric cancer patients versus 21 healthy individuals. Overall, we have demonstrated that our predictor for urine excretory proteins is highly effective and could potentially serve as a powerful tool in searches for disease biomarkers in urine in general.http://europepmc.org/articles/PMC3041827?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Celine S Hong
Juan Cui
Zhaohui Ni
Yingying Su
David Puett
Fan Li
Ying Xu
spellingShingle Celine S Hong
Juan Cui
Zhaohui Ni
Yingying Su
David Puett
Fan Li
Ying Xu
A computational method for prediction of excretory proteins and application to identification of gastric cancer markers in urine.
PLoS ONE
author_facet Celine S Hong
Juan Cui
Zhaohui Ni
Yingying Su
David Puett
Fan Li
Ying Xu
author_sort Celine S Hong
title A computational method for prediction of excretory proteins and application to identification of gastric cancer markers in urine.
title_short A computational method for prediction of excretory proteins and application to identification of gastric cancer markers in urine.
title_full A computational method for prediction of excretory proteins and application to identification of gastric cancer markers in urine.
title_fullStr A computational method for prediction of excretory proteins and application to identification of gastric cancer markers in urine.
title_full_unstemmed A computational method for prediction of excretory proteins and application to identification of gastric cancer markers in urine.
title_sort computational method for prediction of excretory proteins and application to identification of gastric cancer markers in urine.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2011-02-01
description A novel computational method for prediction of proteins excreted into urine is presented. The method is based on the identification of a list of distinguishing features between proteins found in the urine of healthy people and proteins deemed not to be urine excretory. These features are used to train a classifier to distinguish the two classes of proteins. When used in conjunction with information of which proteins are differentially expressed in diseased tissues of a specific type versus control tissues, this method can be used to predict potential urine markers for the disease. Here we report the detailed algorithm of this method and an application to identification of urine markers for gastric cancer. The performance of the trained classifier on 163 proteins was experimentally validated using antibody arrays, achieving >80% true positive rate. By applying the classifier on differentially expressed genes in gastric cancer vs normal gastric tissues, it was found that endothelial lipase (EL) was substantially suppressed in the urine samples of 21 gastric cancer patients versus 21 healthy individuals. Overall, we have demonstrated that our predictor for urine excretory proteins is highly effective and could potentially serve as a powerful tool in searches for disease biomarkers in urine in general.
url http://europepmc.org/articles/PMC3041827?pdf=render
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