An integrated method for the identification of novel genes related to oral cancer.

Cancer is a significant public health problem worldwide. Complete identification of genes related to one type of cancer facilitates earlier diagnosis and effective treatments. In this study, two widely used algorithms, the random walk with restart algorithm and the shortest path algorithm, were adop...

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Main Authors: Lei Chen, Jing Yang, Zhihao Xing, Fei Yuan, Yang Shu, YunHua Zhang, XiangYin Kong, Tao Huang, HaiPeng Li, Yu-Dong Cai
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5383255?pdf=render
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spelling doaj-a5c57bcc7bf4458ea38d89af2507aed72020-11-25T01:22:52ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01124e017518510.1371/journal.pone.0175185An integrated method for the identification of novel genes related to oral cancer.Lei ChenJing YangZhihao XingFei YuanYang ShuYunHua ZhangXiangYin KongTao HuangHaiPeng LiYu-Dong CaiCancer is a significant public health problem worldwide. Complete identification of genes related to one type of cancer facilitates earlier diagnosis and effective treatments. In this study, two widely used algorithms, the random walk with restart algorithm and the shortest path algorithm, were adopted to construct two parameterized computational methods, namely, an RWR-based method and an SP-based method; based on these methods, an integrated method was constructed for identifying novel disease genes. To validate the utility of the integrated method, data for oral cancer were used, on which the RWR-based and SP-based methods were trained, thereby building two optimal methods. The integrated method combining these optimal methods was further adopted to identify the novel genes of oral cancer. As a result, 85 novel genes were inferred, among which eleven genes (e.g., MYD88, FGFR2, NF-κBIA) were identified by both the RWR-based and SP-based methods, 70 genes (e.g., BMP4, IFNG, KITLG) were discovered only by the RWR-based method and four genes (L1R1, MCM6, NOG and CXCR3) were predicted only by the SP-based method. Extensive analyses indicate that several novel genes have strong associations with cancers, indicating the effectiveness of the integrated method for identifying disease genes.http://europepmc.org/articles/PMC5383255?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Lei Chen
Jing Yang
Zhihao Xing
Fei Yuan
Yang Shu
YunHua Zhang
XiangYin Kong
Tao Huang
HaiPeng Li
Yu-Dong Cai
spellingShingle Lei Chen
Jing Yang
Zhihao Xing
Fei Yuan
Yang Shu
YunHua Zhang
XiangYin Kong
Tao Huang
HaiPeng Li
Yu-Dong Cai
An integrated method for the identification of novel genes related to oral cancer.
PLoS ONE
author_facet Lei Chen
Jing Yang
Zhihao Xing
Fei Yuan
Yang Shu
YunHua Zhang
XiangYin Kong
Tao Huang
HaiPeng Li
Yu-Dong Cai
author_sort Lei Chen
title An integrated method for the identification of novel genes related to oral cancer.
title_short An integrated method for the identification of novel genes related to oral cancer.
title_full An integrated method for the identification of novel genes related to oral cancer.
title_fullStr An integrated method for the identification of novel genes related to oral cancer.
title_full_unstemmed An integrated method for the identification of novel genes related to oral cancer.
title_sort integrated method for the identification of novel genes related to oral cancer.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Cancer is a significant public health problem worldwide. Complete identification of genes related to one type of cancer facilitates earlier diagnosis and effective treatments. In this study, two widely used algorithms, the random walk with restart algorithm and the shortest path algorithm, were adopted to construct two parameterized computational methods, namely, an RWR-based method and an SP-based method; based on these methods, an integrated method was constructed for identifying novel disease genes. To validate the utility of the integrated method, data for oral cancer were used, on which the RWR-based and SP-based methods were trained, thereby building two optimal methods. The integrated method combining these optimal methods was further adopted to identify the novel genes of oral cancer. As a result, 85 novel genes were inferred, among which eleven genes (e.g., MYD88, FGFR2, NF-κBIA) were identified by both the RWR-based and SP-based methods, 70 genes (e.g., BMP4, IFNG, KITLG) were discovered only by the RWR-based method and four genes (L1R1, MCM6, NOG and CXCR3) were predicted only by the SP-based method. Extensive analyses indicate that several novel genes have strong associations with cancers, indicating the effectiveness of the integrated method for identifying disease genes.
url http://europepmc.org/articles/PMC5383255?pdf=render
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