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Towards Outcome-Driven Patient Subgroups: A Machine Learning Analysis Across Six Depression Treatment Studies.
Benrimoh, David; Kleinerman, Akiva; Furukawa, Toshi A; Iii, Charles F Reynolds; Lenze, Eric J; Karp, Jordan; Mulsant, Benoit; Armstrong, Caitrin; Mehltretter, Joseph; Fratila, Robert; Perlman, Kelly; Israel, Sonia; Popescu, Christina; Golden, Grace; Qassim, Sabrina; Anacleto, Alexandra; Tanguay-Sela, Myriam; Kapelner, Adam; Rosenfeld, Ariel; Turecki, Gustavo.
  • Benrimoh D; Department of Psychiatry (DB, KP, GT), McGill University, Montreal, Canada; Department of Psychiatry (DB), Stanford University, Stanford, CA; Aifred Health (DB, CA, JM, RF, KP, SI, CP, GG, SQ, AA, MTS), Montreal, Canada. Electronic address: David.benrimoh@mail.mcgill.ca.
  • Kleinerman A; Bar-Ilan University (AK, AR), Ramat Gan, Israel.
  • Furukawa TA; Department of Health Promotion and Human Behavior (TAF), Kyoto University Graduate School of Medicine/School of Public Health, Kyoto, Japan.
  • Iii CFR; Department of Psychiatry (CFR), University of Pittsburgh School of Medicine, Pittsburgh, PA; Department of Psychiatry (CFR), Tufts University School of Medicine, Medford, MA.
  • Lenze EJ; Department of Psychiatry (EJL), Washington University School of Medicine, St. Louis, MS.
  • Karp J; Department of Psychiatry (JK), University of Arizona, Tucson, AZ.
  • Mulsant B; Department of Psychiatry (BM), University of Toronto, Toronto, ON, Canada.
  • Armstrong C; Aifred Health (DB, CA, JM, RF, KP, SI, CP, GG, SQ, AA, MTS), Montreal, Canada.
  • Mehltretter J; Aifred Health (DB, CA, JM, RF, KP, SI, CP, GG, SQ, AA, MTS), Montreal, Canada.
  • Fratila R; Aifred Health (DB, CA, JM, RF, KP, SI, CP, GG, SQ, AA, MTS), Montreal, Canada.
  • Perlman K; Department of Psychiatry (DB, KP, GT), McGill University, Montreal, Canada; Aifred Health (DB, CA, JM, RF, KP, SI, CP, GG, SQ, AA, MTS), Montreal, Canada.
  • Israel S; Aifred Health (DB, CA, JM, RF, KP, SI, CP, GG, SQ, AA, MTS), Montreal, Canada.
  • Popescu C; Aifred Health (DB, CA, JM, RF, KP, SI, CP, GG, SQ, AA, MTS), Montreal, Canada.
  • Golden G; Aifred Health (DB, CA, JM, RF, KP, SI, CP, GG, SQ, AA, MTS), Montreal, Canada.
  • Qassim S; Aifred Health (DB, CA, JM, RF, KP, SI, CP, GG, SQ, AA, MTS), Montreal, Canada.
  • Anacleto A; Aifred Health (DB, CA, JM, RF, KP, SI, CP, GG, SQ, AA, MTS), Montreal, Canada.
  • Tanguay-Sela M; Aifred Health (DB, CA, JM, RF, KP, SI, CP, GG, SQ, AA, MTS), Montreal, Canada.
  • Kapelner A; Department of Mathematics (AK), Queens College, CUNY, New York, NY.
  • Rosenfeld A; Bar-Ilan University (AK, AR), Ramat Gan, Israel.
  • Turecki G; Department of Psychiatry (DB, KP, GT), McGill University, Montreal, Canada.
Am J Geriatr Psychiatry ; 32(3): 280-292, 2024 Mar.
Article en En | MEDLINE | ID: mdl-37839909
ABSTRACT

BACKGROUND:

Major depressive disorder (MDD) is a heterogeneous condition; multiple underlying neurobiological and behavioral substrates are associated with treatment response variability. Understanding the sources of this variability and predicting outcomes has been elusive. Machine learning (ML) shows promise in predicting treatment response in MDD, but its application is limited by challenges to the clinical interpretability of ML models, and clinicians often lack confidence in model results. In order to improve the interpretability of ML models in clinical practice, our goal was to demonstrate the derivation of treatment-relevant patient profiles comprised of clinical and demographic information using a novel ML approach.

METHODS:

We analyzed data from six clinical trials of pharmacological treatment for depression (total n = 5438) using the Differential Prototypes Neural Network (DPNN), a ML model that derives patient prototypes which can be used to derive treatment-relevant patient clusters while learning to generate probabilities for differential treatment response. A model classifying remission and outputting individual remission probabilities for five first-line monotherapies and three combination treatments was trained using clinical and demographic data. Prototypes were evaluated for interpretability by assessing differences in feature distributions (e.g. age, sex, symptom severity) and treatment-specific outcomes.

RESULTS:

A 3-prototype model achieved an area under the receiver operating curve of 0.66 and an expected absolute improvement in remission rate for those receiving the best predicted treatment of 6.5% (relative improvement of 15.6%) compared to the population remission rate. We identified three treatment-relevant patient clusters. Cluster A patients tended to be younger, to have increased levels of fatigue, and more severe symptoms. Cluster B patients tended to be older, female, have less severe symptoms, and the highest remission rates. Cluster C patients had more severe symptoms, lower remission rates, more psychomotor agitation, more intense suicidal ideation, and more somatic genital symptoms.

CONCLUSION:

It is possible to produce novel treatment-relevant patient profiles using ML models; doing so may improve interpretability of ML models and the quality of precision medicine treatments for MDD.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Trastorno Depresivo Mayor Límite: Female / Humans Idioma: En Año: 2024 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Trastorno Depresivo Mayor Límite: Female / Humans Idioma: En Año: 2024 Tipo del documento: Article