Cargando…

An Accurate Prostate Cancer Prognosticator Using a Seven-Gene Signature Plus Gleason Score and Taking Cell Type Heterogeneity into Account

One of the major challenges in the development of prostate cancer prognostic biomarkers is the cellular heterogeneity in tissue samples. We developed an objective Cluster-Correlation (CC) analysis to identify gene expression changes in various cell types that are associated with progression. In the...

Descripción completa

Detalles Bibliográficos
Autores principales: Chen, Xin, Xu, Shizhong, McClelland, Michael, Rahmatpanah, Farah, Sawyers, Anne, Jia, Zhenyu, Mercola, Dan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3460942/
https://www.ncbi.nlm.nih.gov/pubmed/23028830
http://dx.doi.org/10.1371/journal.pone.0045178
_version_ 1782245018848722944
author Chen, Xin
Xu, Shizhong
McClelland, Michael
Rahmatpanah, Farah
Sawyers, Anne
Jia, Zhenyu
Mercola, Dan
author_facet Chen, Xin
Xu, Shizhong
McClelland, Michael
Rahmatpanah, Farah
Sawyers, Anne
Jia, Zhenyu
Mercola, Dan
author_sort Chen, Xin
collection PubMed
description One of the major challenges in the development of prostate cancer prognostic biomarkers is the cellular heterogeneity in tissue samples. We developed an objective Cluster-Correlation (CC) analysis to identify gene expression changes in various cell types that are associated with progression. In the Cluster step, samples were clustered (unsupervised) based on the expression values of each gene through a mixture model combined with a multiple linear regression model in which cell-type percent data were used for decomposition. In the Correlation step, a Chi-square test was used to select potential prognostic genes. With CC analysis, we identified 324 significantly expressed genes (68 tumor and 256 stroma cell expressed genes) which were strongly associated with the observed biochemical relapse status. Significance Analysis of Microarray (SAM) was then utilized to develop a seven-gene classifier. The Classifier has been validated using two independent Data Sets. The overall prediction accuracy and sensitivity is 71% and 76%, respectively. The inclusion of the Gleason sum to the seven-gene classifier raised the prediction accuracy and sensitivity to 83% and 76% respectively based on independent testing. These results indicated that our prognostic model that includes cell type adjustments and using Gleason score and the seven-gene signature has some utility for predicting outcomes for prostate cancer for individual patients at the time of prognosis. The strategy could have applications for improving marker performance in other cancers and other diseases.
format Online
Article
Text
id pubmed-3460942
institution National Center for Biotechnology Information
language English
publishDate 2012
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-34609422012-10-01 An Accurate Prostate Cancer Prognosticator Using a Seven-Gene Signature Plus Gleason Score and Taking Cell Type Heterogeneity into Account Chen, Xin Xu, Shizhong McClelland, Michael Rahmatpanah, Farah Sawyers, Anne Jia, Zhenyu Mercola, Dan PLoS One Research Article One of the major challenges in the development of prostate cancer prognostic biomarkers is the cellular heterogeneity in tissue samples. We developed an objective Cluster-Correlation (CC) analysis to identify gene expression changes in various cell types that are associated with progression. In the Cluster step, samples were clustered (unsupervised) based on the expression values of each gene through a mixture model combined with a multiple linear regression model in which cell-type percent data were used for decomposition. In the Correlation step, a Chi-square test was used to select potential prognostic genes. With CC analysis, we identified 324 significantly expressed genes (68 tumor and 256 stroma cell expressed genes) which were strongly associated with the observed biochemical relapse status. Significance Analysis of Microarray (SAM) was then utilized to develop a seven-gene classifier. The Classifier has been validated using two independent Data Sets. The overall prediction accuracy and sensitivity is 71% and 76%, respectively. The inclusion of the Gleason sum to the seven-gene classifier raised the prediction accuracy and sensitivity to 83% and 76% respectively based on independent testing. These results indicated that our prognostic model that includes cell type adjustments and using Gleason score and the seven-gene signature has some utility for predicting outcomes for prostate cancer for individual patients at the time of prognosis. The strategy could have applications for improving marker performance in other cancers and other diseases. Public Library of Science 2012-09-28 /pmc/articles/PMC3460942/ /pubmed/23028830 http://dx.doi.org/10.1371/journal.pone.0045178 Text en © 2012 Chen et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Chen, Xin
Xu, Shizhong
McClelland, Michael
Rahmatpanah, Farah
Sawyers, Anne
Jia, Zhenyu
Mercola, Dan
An Accurate Prostate Cancer Prognosticator Using a Seven-Gene Signature Plus Gleason Score and Taking Cell Type Heterogeneity into Account
title An Accurate Prostate Cancer Prognosticator Using a Seven-Gene Signature Plus Gleason Score and Taking Cell Type Heterogeneity into Account
title_full An Accurate Prostate Cancer Prognosticator Using a Seven-Gene Signature Plus Gleason Score and Taking Cell Type Heterogeneity into Account
title_fullStr An Accurate Prostate Cancer Prognosticator Using a Seven-Gene Signature Plus Gleason Score and Taking Cell Type Heterogeneity into Account
title_full_unstemmed An Accurate Prostate Cancer Prognosticator Using a Seven-Gene Signature Plus Gleason Score and Taking Cell Type Heterogeneity into Account
title_short An Accurate Prostate Cancer Prognosticator Using a Seven-Gene Signature Plus Gleason Score and Taking Cell Type Heterogeneity into Account
title_sort accurate prostate cancer prognosticator using a seven-gene signature plus gleason score and taking cell type heterogeneity into account
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3460942/
https://www.ncbi.nlm.nih.gov/pubmed/23028830
http://dx.doi.org/10.1371/journal.pone.0045178
work_keys_str_mv AT chenxin anaccurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT xushizhong anaccurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT mcclellandmichael anaccurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT rahmatpanahfarah anaccurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT sawyersanne anaccurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT jiazhenyu anaccurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT mercoladan anaccurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT chenxin accurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT xushizhong accurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT mcclellandmichael accurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT rahmatpanahfarah accurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT sawyersanne accurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT jiazhenyu accurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount
AT mercoladan accurateprostatecancerprognosticatorusingasevengenesignatureplusgleasonscoreandtakingcelltypeheterogeneityintoaccount