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BITES: balanced individual treatment effect for survival data.
Schrod, S; Schäfer, A; Solbrig, S; Lohmayer, R; Gronwald, W; Oefner, P J; Beißbarth, T; Spang, R; Zacharias, H U; Altenbuchinger, M.
Afiliação
  • Schrod S; Department of Medical Bioinformatics, University Medical Center Göttingen, Göttingen 37077, Germany.
  • Schäfer A; Department of Physics, Institute of Theoretical Physics, University of Regensburg, Regensburg 93051, Germany.
  • Solbrig S; Department of Physics, Institute of Theoretical Physics, University of Regensburg, Regensburg 93051, Germany.
  • Lohmayer R; Leibniz Institute for Immunotherapy, Regensburg 93053, Germany.
  • Gronwald W; Institute of Functional Genomics, University of Regensburg, Regensburg 93053, Germany.
  • Oefner PJ; Institute of Functional Genomics, University of Regensburg, Regensburg 93053, Germany.
  • Beißbarth T; Department of Medical Bioinformatics, University Medical Center Göttingen, Göttingen 37077, Germany.
  • Spang R; Department of Statistical Bioinformatics, Institute of Functional Genomics, University of Regensburg, Regensburg 93053, Germany.
  • Zacharias HU; Department of Internal Medicine I, University Medical Center Schleswig-Holstein, Campus Kiel, Kiel 24105, Germany.
  • Altenbuchinger M; Institute of Clinical Molecular Biology, Kiel University and University Medical Center Schleswig-Holstein, Campus Kiel, Kiel 24105, Germany.
Bioinformatics ; 38(Suppl 1): i60-i67, 2022 06 24.
Article em En | MEDLINE | ID: mdl-35758796
MOTIVATION: Estimating the effects of interventions on patient outcome is one of the key aspects of personalized medicine. Their inference is often challenged by the fact that the training data comprises only the outcome for the administered treatment, and not for alternative treatments (the so-called counterfactual outcomes). Several methods were suggested for this scenario based on observational data, i.e. data where the intervention was not applied randomly, for both continuous and binary outcome variables. However, patient outcome is often recorded in terms of time-to-event data, comprising right-censored event times if an event does not occur within the observation period. Albeit their enormous importance, time-to-event data are rarely used for treatment optimization. We suggest an approach named BITES (Balanced Individual Treatment Effect for Survival data), which combines a treatment-specific semi-parametric Cox loss with a treatment-balanced deep neural network; i.e. we regularize differences between treated and non-treated patients using Integral Probability Metrics (IPM). RESULTS: We show in simulation studies that this approach outperforms the state of the art. Furthermore, we demonstrate in an application to a cohort of breast cancer patients that hormone treatment can be optimized based on six routine parameters. We successfully validated this finding in an independent cohort. AVAILABILITY AND IMPLEMENTATION: We provide BITES as an easy-to-use python implementation including scheduled hyper-parameter optimization (https://github.com/sschrod/BITES). The data underlying this article are available in the CRAN repository at https://rdrr.io/cran/survival/man/gbsg.html and https://rdrr.io/cran/survival/man/rotterdam.html. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
Assuntos

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Software / Redes Neurais de Computação Idioma: En Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Software / Redes Neurais de Computação Idioma: En Ano de publicação: 2022 Tipo de documento: Article