Using random forest to identify correlates of depression symptoms among adolescents.

IF 3.6 2区 医学 Q1 PSYCHIATRY
Mahmood R Gohari, Amanda Doggett, Karen A Patte, Mark A Ferro, Joel A Dubin, Carla Hilario, Scott T Leatherdale
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引用次数: 0

Abstract

Purpose: Adolescent depression is a significant public health concern, and studying its multifaceted factors using traditional methods possess challenges. This study employs random forest (RF) algorithms to determine factors predicting adolescent depression scores.

Methods: This study utilized self-reported survey data from 56,008 Canadian students (grades 7-12) attending 182 schools during the 2021/22 academic year. RF algorithms were applied to identify the correlates of (i) depression scores (CESD-R-10) and (ii) presence of clinically relevant depression (CESD-R-10 ≥ 10).

Results: RF achieved a 71% explained variance, accurately predicting depression scores within a 3.40 unit margin. The top 10 correlates identified by RF included other measures of mental health (anxiety symptoms, flourishing, emotional dysregulation), home life (excessive parental expectations, happy home life, ability to talk to family), school connectedness, sleep duration, and gender. In predicting clinically relevant depression, the algorithm showed 84% accuracy, 0.89 sensitivity, and 0.79 AUROC, aligning closely with the correlates identified for depression score.

Conclusion: This study highlights RF's utility in identifying important correlates of adolescent depressive symptoms. RF's natural hierarchy offers an advantage over traditional methods. The findings underscore the importance and additional potential of sleep health promotion and school belonging initiatives in preventing adolescent depression.

Abstract Image

利用随机森林识别青少年抑郁症状的相关因素。
目的:青少年抑郁症是一个重大的公共健康问题,使用传统方法研究其多方面因素具有挑战性。本研究采用随机森林(RF)算法来确定预测青少年抑郁得分的因素:本研究利用了 2021/22 学年期间在 182 所学校就读的 56,008 名加拿大学生(7-12 年级)的自我报告调查数据。应用 RF 算法确定了(i)抑郁得分(CESD-R-10)和(ii)临床相关抑郁(CESD-R-10 ≥ 10)的相关因素:RF的解释方差达到71%,在3.40个单位的范围内准确预测抑郁评分。RF确定的前10个相关因素包括其他心理健康测量指标(焦虑症状、蓬勃发展、情绪失调)、家庭生活(父母期望过高、家庭生活幸福、与家人交谈的能力)、学校联系、睡眠时间和性别。在预测临床相关抑郁症方面,该算法的准确率为 84%,灵敏度为 0.89,AUROC 为 0.79,与抑郁症评分的相关因素非常吻合:本研究强调了 RF 在识别青少年抑郁症状重要相关因素方面的实用性。与传统方法相比,RF 的自然层次结构更具优势。研究结果强调了促进睡眠健康和学校归属感措施在预防青少年抑郁症方面的重要性和额外潜力。
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来源期刊
CiteScore
8.50
自引率
2.30%
发文量
184
审稿时长
3-6 weeks
期刊介绍: Social Psychiatry and Psychiatric Epidemiology is intended to provide a medium for the prompt publication of scientific contributions concerned with all aspects of the epidemiology of psychiatric disorders - social, biological and genetic. In addition, the journal has a particular focus on the effects of social conditions upon behaviour and the relationship between psychiatric disorders and the social environment. Contributions may be of a clinical nature provided they relate to social issues, or they may deal with specialised investigations in the fields of social psychology, sociology, anthropology, epidemiology, health service research, health economies or public mental health. We will publish papers on cross-cultural and trans-cultural themes. We do not publish case studies or small case series. While we will publish studies of reliability and validity of new instruments of interest to our readership, we will not publish articles reporting on the performance of established instruments in translation. Both original work and review articles may be submitted.
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