There are several methods for building prediction models. The wealth of currently available modeling techniques usually forces the researcher to judge, a priori, what will likely be the best method. Super learning (SL) is a methodology that facilitates this decision by combining all identified prediction algorithms pertinent for a particular prediction problem. SL generates a final model that is at least as good as any of the other models considered for predicting the outcome. The overarching aim of this work is to introduce SL to analysts and practitioners. This work compares the performance of logistic regression, penalized regression, random forests, deep learning neural networks, and SL to predict successful substance use disorders (SUD) treatment. A nationwide database including 99,013 SUD treatment patients was used. All algorithms were evaluated using the area under the receiver operating characteristic curve (AUC) in a test sample that was not included in the training sample used to fit the prediction models. AUC for the models ranged between 0.793 and 0.820. SL was superior to all but one of the algorithms compared. An explanation of SL steps is provided. SL is the first step in targeted learning, an analytic framework that yields double robust effect estimation and inference with fewer assumptions than the usual parametric methods. Different aspects of SL depending on the context, its function within the targeted learning framework, and the benefits of this methodology in the addiction field are discussed.
Journal article
Use of a machine learning framework to predict substance use disorder treatment success
PLoS One, Vol.12(4), p.0175383
04/10/2017
DOI: 10.1371/journal.pone.0175383
PMCID: PMC5386258
PMID: 28394905
Abstract
Details
- Title: Subtitle
- Use of a machine learning framework to predict substance use disorder treatment success
- Creators
- Laura Acion - University of IowaDiana Kelmansky - Universidad de Buenos AiresMark van der Laan - University of California, BerkeleyEthan Sahker - University of IowaDeShauna Jones - University of IowaStephan Arndt - University of Iowa
- Resource Type
- Journal article
- Publication Details
- PLoS One, Vol.12(4), p.0175383
- DOI
- 10.1371/journal.pone.0175383
- PMID
- 28394905
- PMCID
- PMC5386258
- NLM abbreviation
- PLoS One
- ISSN
- 1932-6203
- eISSN
- 1932-6203
- Number of pages
- 14
- Copyright
- Copyright: © 2017 Acion et al
- Grant note
- Funder: This work was funded by Consejo de Investigaciones Científicas y Técnicas Postdoctoral Fellowship 2651/2014 awarded to LA., Grant ID: 2651/2014
- Language
- English
- Date published
- 04/10/2017
- Academic Unit
- Iowa Consortium for Substance Abuse Research and Evaluation; Psychiatry; Center for Social Science Innovation; Injury Prevention Research Center; Psychological and Quantitative Foundations
- Record Identifier
- 9983557342702771
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