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Machine learning‐based classification of diffuse large B‐cell lymphoma patients by eight gene expression profiles

Gene expression profiling (GEP) had divided the diffuse large B‐cell lymphoma (DLBCL) into molecular subgroups: germinal center B‐cell like (GCB), activated B‐cell like (ABC), and unclassified (UC) subtype. However, this classification with prognostic significance was not applied into clinical pract...

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Autores principales: Zhao, Shuangtao, Dong, Xiaoli, Shen, Wenzhi, Ye, Zhen, Xiang, Rong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4864813/
https://www.ncbi.nlm.nih.gov/pubmed/26869285
http://dx.doi.org/10.1002/cam4.650
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author Zhao, Shuangtao
Dong, Xiaoli
Shen, Wenzhi
Ye, Zhen
Xiang, Rong
author_facet Zhao, Shuangtao
Dong, Xiaoli
Shen, Wenzhi
Ye, Zhen
Xiang, Rong
author_sort Zhao, Shuangtao
collection PubMed
description Gene expression profiling (GEP) had divided the diffuse large B‐cell lymphoma (DLBCL) into molecular subgroups: germinal center B‐cell like (GCB), activated B‐cell like (ABC), and unclassified (UC) subtype. However, this classification with prognostic significance was not applied into clinical practice since there were more than 1000 genes to detect and interpreting was difficult. To classify cancer samples validly, eight significant genes (MYBL1, LMO2, BCL6, MME, IRF4, NFKBIZ, PDE4B, and SLA) were selected in 414 patients treated with CHOP/R‐CHOP chemotherapy from Gene Expression Omnibus (GEO) data sets. Cutoffs for each gene were obtained using receiver–operating characteristic curves (ROC) new model based on the support vector machine (SVM) estimated the probability of membership into one of two subgroups: GCB and Non‐GCB (ABC and UC). Furtherly, multivariate analysis validated the model in another two cohorts including 855 cases in all. As a result, patients in the training and validated cohorts were stratified into two subgroups with 94.0%, 91.0%, and 94.4% concordance with GEP, respectively. Patients with Non‐GCB subtype had significantly poorer outcomes than that with GCB subtype, which agreed with the prognostic power of GEP classification. Moreover, the similar prognosis received in the low (0–2) and high (3–5) IPI scores group demonstrated that the new model was independent of IPI as well as GEP method. In conclusion, our new model could stratify DLBCL patients with CHOP/R‐CHOP regimen matching GEP subtypes effectively.
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spelling pubmed-48648132016-05-27 Machine learning‐based classification of diffuse large B‐cell lymphoma patients by eight gene expression profiles Zhao, Shuangtao Dong, Xiaoli Shen, Wenzhi Ye, Zhen Xiang, Rong Cancer Med Clinical Cancer Research Gene expression profiling (GEP) had divided the diffuse large B‐cell lymphoma (DLBCL) into molecular subgroups: germinal center B‐cell like (GCB), activated B‐cell like (ABC), and unclassified (UC) subtype. However, this classification with prognostic significance was not applied into clinical practice since there were more than 1000 genes to detect and interpreting was difficult. To classify cancer samples validly, eight significant genes (MYBL1, LMO2, BCL6, MME, IRF4, NFKBIZ, PDE4B, and SLA) were selected in 414 patients treated with CHOP/R‐CHOP chemotherapy from Gene Expression Omnibus (GEO) data sets. Cutoffs for each gene were obtained using receiver–operating characteristic curves (ROC) new model based on the support vector machine (SVM) estimated the probability of membership into one of two subgroups: GCB and Non‐GCB (ABC and UC). Furtherly, multivariate analysis validated the model in another two cohorts including 855 cases in all. As a result, patients in the training and validated cohorts were stratified into two subgroups with 94.0%, 91.0%, and 94.4% concordance with GEP, respectively. Patients with Non‐GCB subtype had significantly poorer outcomes than that with GCB subtype, which agreed with the prognostic power of GEP classification. Moreover, the similar prognosis received in the low (0–2) and high (3–5) IPI scores group demonstrated that the new model was independent of IPI as well as GEP method. In conclusion, our new model could stratify DLBCL patients with CHOP/R‐CHOP regimen matching GEP subtypes effectively. John Wiley and Sons Inc. 2016-02-11 /pmc/articles/PMC4864813/ /pubmed/26869285 http://dx.doi.org/10.1002/cam4.650 Text en © 2016 The Authors. Cancer Medicine published by John Wiley & Sons Ltd. This is an open access article under the terms of the Creative Commons Attribution (http://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Clinical Cancer Research
Zhao, Shuangtao
Dong, Xiaoli
Shen, Wenzhi
Ye, Zhen
Xiang, Rong
Machine learning‐based classification of diffuse large B‐cell lymphoma patients by eight gene expression profiles
title Machine learning‐based classification of diffuse large B‐cell lymphoma patients by eight gene expression profiles
title_full Machine learning‐based classification of diffuse large B‐cell lymphoma patients by eight gene expression profiles
title_fullStr Machine learning‐based classification of diffuse large B‐cell lymphoma patients by eight gene expression profiles
title_full_unstemmed Machine learning‐based classification of diffuse large B‐cell lymphoma patients by eight gene expression profiles
title_short Machine learning‐based classification of diffuse large B‐cell lymphoma patients by eight gene expression profiles
title_sort machine learning‐based classification of diffuse large b‐cell lymphoma patients by eight gene expression profiles
topic Clinical Cancer Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4864813/
https://www.ncbi.nlm.nih.gov/pubmed/26869285
http://dx.doi.org/10.1002/cam4.650
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