| Literature DB >> 34767577 |
Akiva Kleinerman1, Ariel Rosenfeld1, David Benrimoh2,3, Robert Fratila3, Caitrin Armstrong3, Joseph Mehltretter3, Eliyahu Shneider1, Amit Yaniv-Rosenfeld4,5, Jordan Karp6, Charles F Reynolds7, Gustavo Turecki3, Adam Kapelner8.
Abstract
Machine-assisted treatment selection commonly follows one of two paradigms: a fully personalized paradigm which ignores any possible clustering of patients; or a sub-grouping paradigm which ignores personal differences within the identified groups. While both paradigms have shown promising results, each of them suffers from important limitations. In this article, we propose a novel deep learning-based treatment selection approach that is shown to strike a balance between the two paradigms using latent-space prototyping. Our approach is specifically tailored for domains in which effective prototypes and sub-groups of patients are assumed to exist, but groupings relevant to the training objective are not observable in the non-latent space. In an extensive evaluation, using both synthetic and Major Depressive Disorder (MDD) real-world clinical data describing 4754 MDD patients from clinical trials for depression treatment, we show that our approach favorably compares with state-of-the-art approaches. Specifically, the model produced an 8% absolute and 23% relative improvement over random treatment allocation. This is potentially clinically significant, given the large number of patients with MDD. Therefore, the model can bring about a much desired leap forward in the way depression is treated today.Entities:
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Year: 2021 PMID: 34767577 PMCID: PMC8589171 DOI: 10.1371/journal.pone.0258400
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240