Person-specific and pooled prediction models for binge eating, alcohol use and binge drinking in bulimia nervosa and alcohol use disorder.

IF 5.9 2区 医学 Q1 PSYCHIATRY Psychological Medicine Pub Date : 2024-05-22 DOI:10.1017/S0033291724000862
N Leenaerts, P Soyster, J Ceccarini, S Sunaert, A Fisher, E Vrieze
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Abstract

Background: Machine learning could predict binge behavior and help develop treatments for bulimia nervosa (BN) and alcohol use disorder (AUD). Therefore, this study evaluates person-specific and pooled prediction models for binge eating (BE), alcohol use, and binge drinking (BD) in daily life, and identifies the most important predictors.

Methods: A total of 120 patients (BN: 50; AUD: 51; BN/AUD: 19) participated in an experience sampling study, where over a period of 12 months they reported on their eating and drinking behaviors as well as on several other emotional, behavioral, and contextual factors in daily life. The study had a burst-measurement design, where assessments occurred eight times a day on Thursdays, Fridays, and Saturdays in seven bursts of three weeks. Afterwards, person-specific and pooled models were fit with elastic net regularized regression and evaluated with cross-validation. From these models, the variables with the 10% highest estimates were identified.

Results: The person-specific models had a median AUC of 0.61, 0.80, and 0.85 for BE, alcohol use, and BD respectively, while the pooled models had a median AUC of 0.70, 0.90, and 0.93. The most important predictors across the behaviors were craving and time of day. However, predictors concerning social context and affect differed among BE, alcohol use, and BD.

Conclusions: Pooled models outperformed person-specific models and the models for alcohol use and BD outperformed those for BE. Future studies should explore how the performance of these models can be improved and how they can be used to deliver interventions in daily life.

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神经性贪食症和酒精使用障碍患者暴食、饮酒和暴饮的个人预测模型和集合预测模型。
背景:机器学习可以预测暴饮暴食行为,有助于开发治疗神经性贪食症(BN)和酒精使用障碍(AUD)的方法。因此,本研究评估了日常生活中暴食(BE)、饮酒和暴饮(BD)的个人特异性和集合预测模型,并确定了最重要的预测因素:共有 120 名患者(暴食症:50 人;暴饮暴食症:51 人;暴食症/暴饮暴食症:19 人)参加了一项经验取样研究,他们在 12 个月内报告了自己的饮食行为以及日常生活中的其他一些情绪、行为和环境因素。该研究采用突发测量设计,评估在周四、周五和周六进行,每天八次,共七次,每次三周。随后,利用弹性网正则化回归拟合了特定个人模型和集合模型,并通过交叉验证进行了评估。从这些模型中,找出了估计值最高的 10%的变量:对于 BE、饮酒和 BD,特定人群模型的 AUC 中值分别为 0.61、0.80 和 0.85,而集合模型的 AUC 中值分别为 0.70、0.90 和 0.93。在所有行为中,最重要的预测因子是渴望和时间。然而,有关社会环境和情感的预测因素在 BE、饮酒和 BD 之间存在差异:结论:集合模型优于特定人群模型,酒精使用和 BD 模型优于 BE 模型。未来的研究应探讨如何提高这些模型的性能,以及如何在日常生活中使用这些模型进行干预。
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来源期刊
Psychological Medicine
Psychological Medicine 医学-精神病学
CiteScore
11.30
自引率
4.30%
发文量
711
审稿时长
3-6 weeks
期刊介绍: Now in its fifth decade of publication, Psychological Medicine is a leading international journal in the fields of psychiatry, related aspects of psychology and basic sciences. From 2014, there are 16 issues a year, each featuring original articles reporting key research being undertaken worldwide, together with shorter editorials by distinguished scholars and an important book review section. The journal''s success is clearly demonstrated by a consistently high impact factor.
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