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Predicting Success of a Digital Self-Help Intervention for Alcohol and Substance Use With Machine Learning

BACKGROUND: Digital self-help interventions for reducing the use of alcohol tobacco and other drugs (ATOD) have generally shown positive but small effects in controlling substance use and improving the quality of life of participants. Nonetheless, low adherence rates remain a major drawback of these...

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Autores principales: Ramos, Lucas A., Blankers, Matthijs, van Wingen, Guido, de Bruijn, Tamara, Pauws, Steffen C., Goudriaan, Anneke E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8451420/
https://www.ncbi.nlm.nih.gov/pubmed/34552539
http://dx.doi.org/10.3389/fpsyg.2021.734633
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author Ramos, Lucas A.
Blankers, Matthijs
van Wingen, Guido
de Bruijn, Tamara
Pauws, Steffen C.
Goudriaan, Anneke E.
author_facet Ramos, Lucas A.
Blankers, Matthijs
van Wingen, Guido
de Bruijn, Tamara
Pauws, Steffen C.
Goudriaan, Anneke E.
author_sort Ramos, Lucas A.
collection PubMed
description BACKGROUND: Digital self-help interventions for reducing the use of alcohol tobacco and other drugs (ATOD) have generally shown positive but small effects in controlling substance use and improving the quality of life of participants. Nonetheless, low adherence rates remain a major drawback of these digital interventions, with mixed results in (prolonged) participation and outcome. To prevent non-adherence, we developed models to predict success in the early stages of an ATOD digital self-help intervention and explore the predictors associated with participant’s goal achievement. METHODS: We included previous and current participants from a widely used, evidence-based ATOD intervention from the Netherlands (Jellinek Digital Self-help). Participants were considered successful if they completed all intervention modules and reached their substance use goals (i.e., stop/reduce). Early dropout was defined as finishing only the first module. During model development, participants were split per substance (alcohol, tobacco, cannabis) and features were computed based on the log data of the first 3 days of intervention participation. Machine learning models were trained, validated and tested using a nested k-fold cross-validation strategy. RESULTS: From the 32,398 participants enrolled in the study, 80% of participants did not complete the first module of the intervention and were excluded from further analysis. From the remaining participants, the percentage of success for each substance was 30% for alcohol, 22% for cannabis and 24% for tobacco. The area under the Receiver Operating Characteristic curve was the highest for the Random Forest model trained on data from the alcohol and tobacco programs (0.71 95%CI 0.69–0.73) and (0.71 95%CI 0.67–0.76), respectively, followed by cannabis (0.67 95%CI 0.59–0.75). Quitting substance use instead of moderation as an intervention goal, initial daily consumption, no substance use on the weekends as a target goal and intervention engagement were strong predictors of success. DISCUSSION: Using log data from the first 3 days of intervention use, machine learning models showed positive results in identifying successful participants. Our results suggest the models were especially able to identify participants at risk of early dropout. Multiple variables were found to have high predictive value, which can be used to further improve the intervention.
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spelling pubmed-84514202021-09-21 Predicting Success of a Digital Self-Help Intervention for Alcohol and Substance Use With Machine Learning Ramos, Lucas A. Blankers, Matthijs van Wingen, Guido de Bruijn, Tamara Pauws, Steffen C. Goudriaan, Anneke E. Front Psychol Psychology BACKGROUND: Digital self-help interventions for reducing the use of alcohol tobacco and other drugs (ATOD) have generally shown positive but small effects in controlling substance use and improving the quality of life of participants. Nonetheless, low adherence rates remain a major drawback of these digital interventions, with mixed results in (prolonged) participation and outcome. To prevent non-adherence, we developed models to predict success in the early stages of an ATOD digital self-help intervention and explore the predictors associated with participant’s goal achievement. METHODS: We included previous and current participants from a widely used, evidence-based ATOD intervention from the Netherlands (Jellinek Digital Self-help). Participants were considered successful if they completed all intervention modules and reached their substance use goals (i.e., stop/reduce). Early dropout was defined as finishing only the first module. During model development, participants were split per substance (alcohol, tobacco, cannabis) and features were computed based on the log data of the first 3 days of intervention participation. Machine learning models were trained, validated and tested using a nested k-fold cross-validation strategy. RESULTS: From the 32,398 participants enrolled in the study, 80% of participants did not complete the first module of the intervention and were excluded from further analysis. From the remaining participants, the percentage of success for each substance was 30% for alcohol, 22% for cannabis and 24% for tobacco. The area under the Receiver Operating Characteristic curve was the highest for the Random Forest model trained on data from the alcohol and tobacco programs (0.71 95%CI 0.69–0.73) and (0.71 95%CI 0.67–0.76), respectively, followed by cannabis (0.67 95%CI 0.59–0.75). Quitting substance use instead of moderation as an intervention goal, initial daily consumption, no substance use on the weekends as a target goal and intervention engagement were strong predictors of success. DISCUSSION: Using log data from the first 3 days of intervention use, machine learning models showed positive results in identifying successful participants. Our results suggest the models were especially able to identify participants at risk of early dropout. Multiple variables were found to have high predictive value, which can be used to further improve the intervention. Frontiers Media S.A. 2021-09-03 /pmc/articles/PMC8451420/ /pubmed/34552539 http://dx.doi.org/10.3389/fpsyg.2021.734633 Text en Copyright © 2021 Ramos, Blankers, van Wingen, de Bruijn, Pauws and Goudriaan. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Psychology
Ramos, Lucas A.
Blankers, Matthijs
van Wingen, Guido
de Bruijn, Tamara
Pauws, Steffen C.
Goudriaan, Anneke E.
Predicting Success of a Digital Self-Help Intervention for Alcohol and Substance Use With Machine Learning
title Predicting Success of a Digital Self-Help Intervention for Alcohol and Substance Use With Machine Learning
title_full Predicting Success of a Digital Self-Help Intervention for Alcohol and Substance Use With Machine Learning
title_fullStr Predicting Success of a Digital Self-Help Intervention for Alcohol and Substance Use With Machine Learning
title_full_unstemmed Predicting Success of a Digital Self-Help Intervention for Alcohol and Substance Use With Machine Learning
title_short Predicting Success of a Digital Self-Help Intervention for Alcohol and Substance Use With Machine Learning
title_sort predicting success of a digital self-help intervention for alcohol and substance use with machine learning
topic Psychology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8451420/
https://www.ncbi.nlm.nih.gov/pubmed/34552539
http://dx.doi.org/10.3389/fpsyg.2021.734633
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