Analyzing Dropout in Alcohol Recovery Programs: A Machine Learning Approach

dc.contributor.authorCollin, Adele
dc.contributor.authorDíaz Batanero, María Carmen
dc.contributor.authorFernández Calderón, Fermín
dc.contributor.authorLozano Rojas, Óscar Martín
dc.contributor.authorRodríguez González, Alejandro
dc.date.accessioned2024-09-12T08:24:48Z
dc.date.available2024-09-12T08:24:48Z
dc.date.issued2024-08
dc.description.abstractBackground: Retention in treatment is crucial for the success of interventions targeting alcohol use disorder (AUD), which affects over 100 million people globally. Most previous studies have used classical statistical techniques to predict treatment dropout, and their results remain inconclusive. This study aimed to use novel machine learning tools to identify models that predict dropout with greater precision, enabling the development of better retention strategies for those at higher risk. Methods: A retrospective observational study of 39,030 (17.3% female) participants enrolled in outpatient-based treatment for alcohol use disorder in a state-wide public treatment network has been used. Participants were recruited between 1 January 2015 and 31 December 2019. We applied different machine learning algorithms to create models that allow one to predict the premature cessation of treatment (dropout). With the objective of increasing the explainability of those models with the best precision, considered as black-box models, explainability technique analyses were also applied. Results: Considering as the best models those obtained with one of the so-called black-box models (support vector classifier (SVC)), the results from the best model, from the explainability perspective, showed that the variables that showed greater explanatory capacity for treatment dropout are previous drug use as well as psychiatric comorbidity. Among these variables, those of having undergone previous opioid substitution treatment and receiving coordinated psychiatric care in mental health services showed the greatest capacity for predicting dropout. Conclusions: By using novel machine learning techniques on a large representative sample of patients enrolled in alcohol use disorder treatment, we have identified several machine learning models that help in predicting a higher risk of treatment dropout. Previous treatment for other substance use disorders (SUDs) and concurrent psychiatric comorbidity were the best predictors of dropout, and patients showing these characteristics may need more intensive or complementary interventions to benefit from treatment.es_ES
dc.description.departmentPsicología Clínica y Experimental
dc.description.sponsorshipThis study was supported by the grant “COMPARA: Comorbilidad Psiquiátrica en Adicciones y Resultados en Andalucía. Modelización a través de Big Data”, project P20_00735 in the Andalusian Research, Development, and Innovation Plan, provided by the Fondo Europeo de Desarrollo Regional (EU) and Junta de Andalucía (Spain).es_ES
dc.identifier.citationCollin, A., Ayuso-Muñoz, A., Tejera-Nevado, P., Prieto-Santamaría, L., Verdejo-García, A., Díaz-Batanero, C., Fernández-Calderón, F., Albein-Urios, N., Lozano, Ó. M., & Rodríguez-González, A. (2024). Analyzing Dropout in Alcohol Recovery Programs: A Machine Learning Approach. In Journal of Clinical Medicine (Vol. 13, Issue 16, p. 4825). MDPI AG. https://doi.org/10.3390/jcm13164825es_ES
dc.identifier.doi10.3390/jcm13164825
dc.identifier.issn2077-0383 (electrónico)
dc.identifier.urihttps://hdl.handle.net/10272/24116
dc.language.isoenges_ES
dc.publisherMDPIes_ES
dc.rightsAtribución-NoComercial-SinDerivadas 3.0 España*
dc.rights.accessRightsopen accesses_ES
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/3.0/es/*
dc.subject.otherAlcohol use disorderes_ES
dc.subject.otherTreatmentes_ES
dc.subject.otherOutpatientses_ES
dc.subject.otherMachine learninges_ES
dc.subject.otherOutcomeses_ES
dc.subject.otherDropoutes_ES
dc.subject.otherReal-world dataes_ES
dc.subject.unesco61 Psicologíaes_ES
dc.titleAnalyzing Dropout in Alcohol Recovery Programs: A Machine Learning Approaches_ES
dc.typejournal articlees_ES
dc.type.hasVersionVoRes_ES
dspace.entity.typePublication
relation.isAuthorOfPublication143af3ce-98c3-4efd-8384-4eb066802273
relation.isAuthorOfPublication2af5f3a8-6de2-4e7f-a8c2-5d2be82fbc5c
relation.isAuthorOfPublication1ef8c5af-b9cb-4093-a001-7ad6fb8cc276
relation.isAuthorOfPublication.latestForDiscovery143af3ce-98c3-4efd-8384-4eb066802273

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
jcm-13-04825-v2.pdf
Size:
1.05 MB
Format:
Adobe Portable Document Format
Description:
Versión editor

Collections