Collins Amanda C, Price George D, Woodworth Rosalind J, Jacobson Nicholas C
Center for Technology and Behavioral Health, Geisel School of Medicine, Dartmouth College, Lebanon, NH, United States.
Department of Psychiatry, Dartmouth-Hitchcock Medical Center, Lebanon, NH, United States.
J Posit Psychol. 2024;19(4):675-685. doi: 10.1080/17439760.2023.2254743. Epub 2023 Sep 3.
Positive psychology interventions (PPIs) are effective at increasing happiness and decreasing depressive symptoms. PPIs are often administered as self-guided web-based interventions, but not all persons benefit from web-based interventions. Therefore, it is important to identify whether someone is likely to benefit from web-based PPIs, in order to triage persons who may not benefit from other interventions. In the current study, we used machine learning to predict individual response to a web-based PPI, in order to investigate baseline prognostic indicators of likelihood of response ( = 120). Our models demonstrated moderate correlations (happiness: = 0.30 ± 0.09; depressive symptoms: = 0.39 ± 0.06), indicating that baseline features can predict changes in happiness and depressive symptoms at a 6-month follow-up. Thus, machine learning can be used to predict outcome changes from a web-based PPI and has important clinical implications for matching individuals to PPIs based on their individual characteristics.
积极心理学干预措施(PPIs)在提升幸福感和减轻抑郁症状方面是有效的。PPIs通常作为基于网络的自我引导式干预措施来实施,但并非所有人都能从基于网络的干预措施中受益。因此,识别某人是否可能从基于网络的PPIs中受益很重要,以便对可能无法从其他干预措施中受益的人进行分类。在当前的研究中,我们使用机器学习来预测个体对基于网络的PPI的反应,以便调查反应可能性的基线预后指标(n = 120)。我们的模型显示出中等程度的相关性(幸福感:r = 0.30 ± 0.09;抑郁症状:r = 0.39 ± 0.06),表明基线特征可以预测6个月随访时幸福感和抑郁症状的变化。因此,机器学习可用于预测基于网络的PPI的结果变化,并且对于根据个体特征将个体与PPIs进行匹配具有重要的临床意义。