Cargando…
Analysis of Gene Expression Profiles of Soft Tissue Sarcoma Using a Combination of Knowledge-Based Filtering with Integration of Multiple Statistics
The diagnosis and treatment of soft tissue sarcomas (STS) have been difficult. Of the diverse histological subtypes, undifferentiated pleomorphic sarcoma (UPS) is particularly difficult to diagnose accurately, and its classification per se is still controversial. Recent advances in genomic technolog...
Autores principales: | , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Public Library of Science
2014
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4154757/ https://www.ncbi.nlm.nih.gov/pubmed/25188299 http://dx.doi.org/10.1371/journal.pone.0106801 |
_version_ | 1782333471505514496 |
---|---|
author | Takahashi, Anna Nakayama, Robert Ishibashi, Nanako Doi, Ayano Ichinohe, Risa Ikuyo, Yoriko Takahashi, Teruyoshi Marui, Shigetaka Yasuhara, Koji Nakamura, Tetsuro Sugita, Shintaro Sakamoto, Hiromi Yoshida, Teruhiko Hasegawa, Tadashi Takahashi, Hiro |
author_facet | Takahashi, Anna Nakayama, Robert Ishibashi, Nanako Doi, Ayano Ichinohe, Risa Ikuyo, Yoriko Takahashi, Teruyoshi Marui, Shigetaka Yasuhara, Koji Nakamura, Tetsuro Sugita, Shintaro Sakamoto, Hiromi Yoshida, Teruhiko Hasegawa, Tadashi Takahashi, Hiro |
author_sort | Takahashi, Anna |
collection | PubMed |
description | The diagnosis and treatment of soft tissue sarcomas (STS) have been difficult. Of the diverse histological subtypes, undifferentiated pleomorphic sarcoma (UPS) is particularly difficult to diagnose accurately, and its classification per se is still controversial. Recent advances in genomic technologies provide an excellent way to address such problems. However, it is often difficult, if not impossible, to identify definitive disease-associated genes using genome-wide analysis alone, primarily because of multiple testing problems. In the present study, we analyzed microarray data from 88 STS patients using a combination method that used knowledge-based filtering and a simulation based on the integration of multiple statistics to reduce multiple testing problems. We identified 25 genes, including hypoxia-related genes (e.g., MIF, SCD1, P4HA1, ENO1, and STAT1) and cell cycle- and DNA repair-related genes (e.g., TACC3, PRDX1, PRKDC, and H2AFY). These genes showed significant differential expression among histological subtypes, including UPS, and showed associations with overall survival. STAT1 showed a strong association with overall survival in UPS patients (logrank p = 1.84×10(−6) and adjusted p value 2.99×10(−3) after the permutation test). According to the literature, the 25 genes selected are useful not only as markers of differential diagnosis but also as prognostic/predictive markers and/or therapeutic targets for STS. Our combination method can identify genes that are potential prognostic/predictive factors and/or therapeutic targets in STS and possibly in other cancers. These disease-associated genes deserve further preclinical and clinical validation. |
format | Online Article Text |
id | pubmed-4154757 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2014 |
publisher | Public Library of Science |
record_format | MEDLINE/PubMed |
spelling | pubmed-41547572014-09-08 Analysis of Gene Expression Profiles of Soft Tissue Sarcoma Using a Combination of Knowledge-Based Filtering with Integration of Multiple Statistics Takahashi, Anna Nakayama, Robert Ishibashi, Nanako Doi, Ayano Ichinohe, Risa Ikuyo, Yoriko Takahashi, Teruyoshi Marui, Shigetaka Yasuhara, Koji Nakamura, Tetsuro Sugita, Shintaro Sakamoto, Hiromi Yoshida, Teruhiko Hasegawa, Tadashi Takahashi, Hiro PLoS One Research Article The diagnosis and treatment of soft tissue sarcomas (STS) have been difficult. Of the diverse histological subtypes, undifferentiated pleomorphic sarcoma (UPS) is particularly difficult to diagnose accurately, and its classification per se is still controversial. Recent advances in genomic technologies provide an excellent way to address such problems. However, it is often difficult, if not impossible, to identify definitive disease-associated genes using genome-wide analysis alone, primarily because of multiple testing problems. In the present study, we analyzed microarray data from 88 STS patients using a combination method that used knowledge-based filtering and a simulation based on the integration of multiple statistics to reduce multiple testing problems. We identified 25 genes, including hypoxia-related genes (e.g., MIF, SCD1, P4HA1, ENO1, and STAT1) and cell cycle- and DNA repair-related genes (e.g., TACC3, PRDX1, PRKDC, and H2AFY). These genes showed significant differential expression among histological subtypes, including UPS, and showed associations with overall survival. STAT1 showed a strong association with overall survival in UPS patients (logrank p = 1.84×10(−6) and adjusted p value 2.99×10(−3) after the permutation test). According to the literature, the 25 genes selected are useful not only as markers of differential diagnosis but also as prognostic/predictive markers and/or therapeutic targets for STS. Our combination method can identify genes that are potential prognostic/predictive factors and/or therapeutic targets in STS and possibly in other cancers. These disease-associated genes deserve further preclinical and clinical validation. Public Library of Science 2014-09-04 /pmc/articles/PMC4154757/ /pubmed/25188299 http://dx.doi.org/10.1371/journal.pone.0106801 Text en © 2014 Takahashi 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 Takahashi, Anna Nakayama, Robert Ishibashi, Nanako Doi, Ayano Ichinohe, Risa Ikuyo, Yoriko Takahashi, Teruyoshi Marui, Shigetaka Yasuhara, Koji Nakamura, Tetsuro Sugita, Shintaro Sakamoto, Hiromi Yoshida, Teruhiko Hasegawa, Tadashi Takahashi, Hiro Analysis of Gene Expression Profiles of Soft Tissue Sarcoma Using a Combination of Knowledge-Based Filtering with Integration of Multiple Statistics |
title | Analysis of Gene Expression Profiles of Soft Tissue Sarcoma Using a Combination of Knowledge-Based Filtering with Integration of Multiple Statistics |
title_full | Analysis of Gene Expression Profiles of Soft Tissue Sarcoma Using a Combination of Knowledge-Based Filtering with Integration of Multiple Statistics |
title_fullStr | Analysis of Gene Expression Profiles of Soft Tissue Sarcoma Using a Combination of Knowledge-Based Filtering with Integration of Multiple Statistics |
title_full_unstemmed | Analysis of Gene Expression Profiles of Soft Tissue Sarcoma Using a Combination of Knowledge-Based Filtering with Integration of Multiple Statistics |
title_short | Analysis of Gene Expression Profiles of Soft Tissue Sarcoma Using a Combination of Knowledge-Based Filtering with Integration of Multiple Statistics |
title_sort | analysis of gene expression profiles of soft tissue sarcoma using a combination of knowledge-based filtering with integration of multiple statistics |
topic | Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4154757/ https://www.ncbi.nlm.nih.gov/pubmed/25188299 http://dx.doi.org/10.1371/journal.pone.0106801 |
work_keys_str_mv | AT takahashianna analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT nakayamarobert analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT ishibashinanako analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT doiayano analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT ichinoherisa analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT ikuyoyoriko analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT takahashiteruyoshi analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT maruishigetaka analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT yasuharakoji analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT nakamuratetsuro analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT sugitashintaro analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT sakamotohiromi analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT yoshidateruhiko analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT hasegawatadashi analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics AT takahashihiro analysisofgeneexpressionprofilesofsofttissuesarcomausingacombinationofknowledgebasedfilteringwithintegrationofmultiplestatistics |