Literature DB >> 31233922

Machine learning methods for developing precision treatment rules with observational data.

Ronald C Kessler1, Robert M Bossarte2, Alex Luedtke3, Alan M Zaslavsky4, Jose R Zubizarreta5.   

Abstract

Clinical trials have identified a variety of predictor variables for use in precision treatment protocols, ranging from clinical biomarkers and symptom profiles to self-report measures of various sorts. Although such variables are informative collectively, none has proven sufficiently powerful to guide optimal treatment selection individually. This has prompted growing interest in the development of composite precision treatment rules (PTRs) that are constructed by combining information across a range of predictors. But this work has been hampered by the generally small samples in randomized clinical trials and the use of suboptimal analysis methods to analyze the resulting data. In this paper, we propose to address the sample size problem by: working with large observational electronic medical record databases rather than controlled clinical trials to develop preliminary PTRs; validating these preliminary PTRs in subsequent pragmatic trials; and using ensemble machine learning methods rather than individual algorithms to carry out statistical analyses to develop the PTRs. The major challenges in this proposed approach are that treatment are not randomly assigned in observational databases and that these databases often lack measures of key prescriptive predictors and mental disorder treatment outcomes. We proposed a tiered case-cohort design approach that uses innovative methods for measuring and balancing baseline covariates and estimating PTRs to address these challenges.
Copyright © 2019 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Clinical decision support; Ensemble machine learning; Personalized treatment; Precision treatment; Super learner

Year:  2019        PMID: 31233922     DOI: 10.1016/j.brat.2019.103412

Source DB:  PubMed          Journal:  Behav Res Ther        ISSN: 0005-7967


  10 in total

Review 1.  Gut microbiome, big data and machine learning to promote precision medicine for cancer.

Authors:  Giovanni Cammarota; Gianluca Ianiro; Anna Ahern; Carmine Carbone; Andriy Temko; Marcus J Claesson; Antonio Gasbarrini; Giampaolo Tortora
Journal:  Nat Rev Gastroenterol Hepatol       Date:  2020-07-09       Impact factor: 46.802

2.  Study protocol for pragmatic trials of Internet-delivered guided and unguided cognitive behavior therapy for treating depression and anxiety in university students of two Latin American countries: the Yo Puedo Sentirme Bien study.

Authors:  Corina Benjet; Ronald C Kessler; Alan E Kazdin; Pim Cuijpers; Yesica Albor; Nayib Carrasco Tapias; Carlos C Contreras-Ibáñez; Ma Socorro Durán González; Sarah M Gildea; Noé González; José Benjamín Guerrero López; Alex Luedtke; Maria Elena Medina-Mora; Jorge Palacios; Derek Richards; Alicia Salamanca-Sanabria; Nancy A Sampson
Journal:  Trials       Date:  2022-06-02       Impact factor: 2.728

Review 3.  Supervised Machine Learning: A Brief Primer.

Authors:  Tammy Jiang; Jaimie L Gradus; Anthony J Rosellini
Journal:  Behav Ther       Date:  2020-05-16

Review 4.  Why Are Suicide Rates Increasing in the United States? Towards a Multilevel Reimagination of Suicide Prevention.

Authors:  Gonzalo Martinez-Ales; Daniel Hernandez-Calle; Nicole Khauli; Katherine M Keyes
Journal:  Curr Top Behav Neurosci       Date:  2020

5.  Perceived helpfulness of treatment for posttraumatic stress disorder: Findings from the World Mental Health Surveys.

Authors:  Dan J Stein; Meredith G Harris; Daniel V Vigo; Wai Tat Chiu; Nancy Sampson; Jordi Alonso; Yasmin Altwaijri; Brendan Bunting; José Miguel Caldas-de-Almeida; Alfredo Cía; Marius Ciutan; Louisa Degenhardt; Oye Gureje; Aimee Karam; Elie G Karam; Sing Lee; Maria Elena Medina-Mora; Zeina Mneimneh; Fernando Navarro-Mateu; José Posada-Villa; Charlene Rapsey; Yolanda Torres; Maria Carmen Viana; Yuval Ziv; Ronald C Kessler
Journal:  Depress Anxiety       Date:  2020-07-15       Impact factor: 8.128

6.  Using Administrative Data to Predict Suicide After Psychiatric Hospitalization in the Veterans Health Administration System.

Authors:  Ronald C Kessler; Mark S Bauer; Todd M Bishop; Olga V Demler; Steven K Dobscha; Sarah M Gildea; Joseph L Goulet; Elizabeth Karras; Julie Kreyenbuhl; Sara J Landes; Howard Liu; Alex R Luedtke; Patrick Mair; William H B McAuliffe; Matthew Nock; Maria Petukhova; Wilfred R Pigeon; Nancy A Sampson; Jordan W Smoller; Lauren M Weinstock; Robert M Bossarte
Journal:  Front Psychiatry       Date:  2020-05-06       Impact factor: 4.157

7.  Personalized Psychiatry and Depression: The Role of Sociodemographic and Clinical Variables.

Authors:  Giampaolo Perna; Alessandra Alciati; Silvia Daccò; Massimiliano Grassi; Daniela Caldirola
Journal:  Psychiatry Investig       Date:  2020-03-12       Impact factor: 2.505

8.  Improving Mental Health Services: A 50-Year Journey from Randomized Experiments to Artificial Intelligence and Precision Mental Health.

Authors:  Leonard Bickman
Journal:  Adm Policy Ment Health       Date:  2020-09

9.  Development and Validation of a Machine Learning Individualized Treatment Rule in First-Episode Schizophrenia.

Authors:  Chi-Shin Wu; Alex R Luedtke; Ekaterina Sadikova; Hui-Ju Tsai; Shih-Cheng Liao; Chen-Chung Liu; Susan Shur-Fen Gau; Tyler J VanderWeele; Ronald C Kessler
Journal:  JAMA Netw Open       Date:  2020-02-05

10.  Retiring, Rethinking, and Reconstructing the Norm of Once-Weekly Psychotherapy.

Authors:  Jessica L Schleider; Mallory L Dobias; Michael C Mullarkey; Thomas Ollendick
Journal:  Adm Policy Ment Health       Date:  2020-09-28
  10 in total

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