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Dynamic classification using case-specific training cohorts outperforms static gene expression signatures in breast cancer

The molecular diversity of breast cancer makes it impossible to identify prognostic markers that are applicable to all breast cancers. To overcome limitations of previous multigene prognostic classifiers, we propose a new dynamic predictor: instead of using a single universal training cohort and an...

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Autores principales: Győrffy, Balázs, Karn, Thomas, Sztupinszki, Zsófia, Weltz, Boglárka, Müller, Volkmar, Pusztai, Lajos
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BlackWell Publishing Ltd 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4354298/
https://www.ncbi.nlm.nih.gov/pubmed/25274406
http://dx.doi.org/10.1002/ijc.29247
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author Győrffy, Balázs
Karn, Thomas
Sztupinszki, Zsófia
Weltz, Boglárka
Müller, Volkmar
Pusztai, Lajos
author_facet Győrffy, Balázs
Karn, Thomas
Sztupinszki, Zsófia
Weltz, Boglárka
Müller, Volkmar
Pusztai, Lajos
author_sort Győrffy, Balázs
collection PubMed
description The molecular diversity of breast cancer makes it impossible to identify prognostic markers that are applicable to all breast cancers. To overcome limitations of previous multigene prognostic classifiers, we propose a new dynamic predictor: instead of using a single universal training cohort and an identical list of informative genes to predict the prognosis of new cases, a case-specific predictor is developed for each test case. Gene expression data from 3,534 breast cancers with clinical annotation including relapse-free survival is analyzed. For each test case, we select a case-specific training subset including only molecularly similar cases and a case-specific predictor is generated. This method yields different training sets and different predictors for each new patient. The model performance was assessed in leave-one-out validation and also in 325 independent cases. Prognostic discrimination was high for all cases (n = 3,534, HR = 3.68, p = 1.67 E−56). The dynamic predictor showed higher overall accuracy (0.68) than genomic surrogates for Oncotype DX (0.64), Genomic Grade Index (0.61) or MammaPrint (0.47). The dynamic predictor was also effective in triple-negative cancers (n = 427, HR = 3.08, p = 0.0093) where the above classifiers all failed. Validation in independent patients yielded similar classification power (HR = 3.57). The dynamic classifier is available online at http://www.recurrenceonline.com/?q=Re_training. In summary, we developed a new method to make personalized prognostic prediction using case-specific training cohorts. The dynamic predictors outperform static models developed from single historical training cohorts and they also predict well in triple-negative cancers.
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spelling pubmed-43542982015-03-16 Dynamic classification using case-specific training cohorts outperforms static gene expression signatures in breast cancer Győrffy, Balázs Karn, Thomas Sztupinszki, Zsófia Weltz, Boglárka Müller, Volkmar Pusztai, Lajos Int J Cancer Cancer Genetics The molecular diversity of breast cancer makes it impossible to identify prognostic markers that are applicable to all breast cancers. To overcome limitations of previous multigene prognostic classifiers, we propose a new dynamic predictor: instead of using a single universal training cohort and an identical list of informative genes to predict the prognosis of new cases, a case-specific predictor is developed for each test case. Gene expression data from 3,534 breast cancers with clinical annotation including relapse-free survival is analyzed. For each test case, we select a case-specific training subset including only molecularly similar cases and a case-specific predictor is generated. This method yields different training sets and different predictors for each new patient. The model performance was assessed in leave-one-out validation and also in 325 independent cases. Prognostic discrimination was high for all cases (n = 3,534, HR = 3.68, p = 1.67 E−56). The dynamic predictor showed higher overall accuracy (0.68) than genomic surrogates for Oncotype DX (0.64), Genomic Grade Index (0.61) or MammaPrint (0.47). The dynamic predictor was also effective in triple-negative cancers (n = 427, HR = 3.08, p = 0.0093) where the above classifiers all failed. Validation in independent patients yielded similar classification power (HR = 3.57). The dynamic classifier is available online at http://www.recurrenceonline.com/?q=Re_training. In summary, we developed a new method to make personalized prognostic prediction using case-specific training cohorts. The dynamic predictors outperform static models developed from single historical training cohorts and they also predict well in triple-negative cancers. BlackWell Publishing Ltd 2015-05-01 2014-10-11 /pmc/articles/PMC4354298/ /pubmed/25274406 http://dx.doi.org/10.1002/ijc.29247 Text en © 2014 The Authors. Published by Wiley Periodicals, Inc. on behalf of UICC http://creativecommons.org/licenses/by-nc-nd/3.0/ This is an open access article under the terms of the Creative Commons Attribution-NonCommercial-NoDerivs License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non-commercial and no modifications or adaptations are made.
spellingShingle Cancer Genetics
Győrffy, Balázs
Karn, Thomas
Sztupinszki, Zsófia
Weltz, Boglárka
Müller, Volkmar
Pusztai, Lajos
Dynamic classification using case-specific training cohorts outperforms static gene expression signatures in breast cancer
title Dynamic classification using case-specific training cohorts outperforms static gene expression signatures in breast cancer
title_full Dynamic classification using case-specific training cohorts outperforms static gene expression signatures in breast cancer
title_fullStr Dynamic classification using case-specific training cohorts outperforms static gene expression signatures in breast cancer
title_full_unstemmed Dynamic classification using case-specific training cohorts outperforms static gene expression signatures in breast cancer
title_short Dynamic classification using case-specific training cohorts outperforms static gene expression signatures in breast cancer
title_sort dynamic classification using case-specific training cohorts outperforms static gene expression signatures in breast cancer
topic Cancer Genetics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4354298/
https://www.ncbi.nlm.nih.gov/pubmed/25274406
http://dx.doi.org/10.1002/ijc.29247
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