Effectiveness of Machine Learning Based Adjustments to an eHealth Intervention Targeting Mild Alcohol Use.

IF 2.8 3区 医学 Q2 PSYCHIATRY European Addiction Research Pub Date : 2024-12-20 DOI:10.1159/000543252
Marloes Derksen, Max van Beek, Matthijs Blankers, Hamed Nasri, Tamara de Bruijn, Nick Lommerse, Guido van Wingen, Steffen Pauws, Anna E Goudriaan
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引用次数: 0

Abstract

This study aimed to evaluate effects of three machine learning based adjustments made to an eHealth intervention for mild alcohol use disorder, regarding a) early dropout, b) participation duration, and c) success in reaching personal alcohol use goals. Additionally, we aimed to replicate earlier machine learning analyses. We used three cohorts of observational log data from the Jellinek Digital Self-help intervention. First, a cohort before implementation of adjustments (T0; n=320); second, a cohort after implementing two adjustments (i.e., sending daily emails in the first week and nudging participants towards a 'no alcohol use' goal; T1; n=146); third, a cohort comprising the prior adjustments complemented with eliminated time constraints to reaching further in the intervention (T2; n=236). We found an increase in participants reaching further in the intervention, yet an increase in early dropout after implementing all adjustments. Moreover, we found that more participants aimed for a quit goal, whilst participation duration declined at T2. Intervention success increased, yet not significantly. Lastly, machine learning demonstrated reliable for outcome prediction in smaller datasets of an eHealth intervention. Strong correlates as indicated by machine learning analyses were found to affect goal setting and use of an eHealth program for alcohol use problems.

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来源期刊
European Addiction Research
European Addiction Research SUBSTANCE ABUSE-PSYCHIATRY
CiteScore
6.80
自引率
5.10%
发文量
32
审稿时长
>12 weeks
期刊介绍: ''European Addiction Research'' is a unique international scientific journal for the rapid publication of innovative research covering all aspects of addiction and related disorders. Representing an interdisciplinary forum for the exchange of recent data and expert opinion, it reflects the importance of a comprehensive approach to resolve the problems of substance abuse and addiction in Europe. Coverage ranges from clinical and research advances in the fields of psychiatry, biology, pharmacology and epidemiology to social, and legal implications of policy decisions. The goal is to facilitate open discussion among those interested in the scientific and clinical aspects of prevention, diagnosis and therapy as well as dealing with legal issues. An excellent range of original papers makes ‘European Addiction Research’ the forum of choice for all.
期刊最新文献
Effectiveness of Machine Learning Based Adjustments to an eHealth Intervention Targeting Mild Alcohol Use. Impact of working conditions and other determinants on the risk of substance misuse among healthcare residents: results of a cross-sectional study. ESCAPE study: Cannabidiol use in patients treated for substance use disorders, prevalence of use and characteristics of users. Exploring Recovery Priorities in Inpatient Addiction Treatment: A Q-Methodological Study. Global Assessment of Training Needs in Addiction Medicine.
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