Frequency and machine learning predictors of severe depressive symptoms and suicidal ideation among university students.

IF 5.9 2区 医学 Q1 PSYCHIATRY
Nicola Meda, Susanna Pardini, Paolo Rigobello, Francesco Visioli, Caterina Novara
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引用次数: 0

Abstract

Aims: Prospective studies on the mental health of university students highlighted a major concern. Specifically, young adults in academia are affected by markedly worse mental health status than their peers or adults in other vocations. This situation predisposes to exacerbated disability-adjusted life-years.

Methods: We enroled 1,388 students at the baseline, 557 of whom completed follow-up after 6 months, incorporating their demographic information and self-report questionnaires on depressive, anxiety and obsessive-compulsive symptoms. We applied multiple regression modelling to determine associations - at baseline - between demographic factors and self-reported mental health measures and supervised machine learning algorithms to predict the risk of poorer mental health at follow-up, by leveraging the demographic and clinical information collected at baseline.

Results: Approximately one out of five students reported severe depressive symptoms and/or suicidal ideation. An association of economic worry with depression was evidenced both at baseline (when high-frequency worry odds ratio = 3.11 [1.88-5.15]) and during follow-up. The random forest algorithm exhibited high accuracy in predicting the students who maintained well-being (balanced accuracy = 0.85) or absence of suicidal ideation but low accuracy for those whose symptoms worsened (balanced accuracy = 0.49). The most important features used for prediction were the cognitive and somatic symptoms of depression. However, while the negative predictive value of worsened symptoms after 6 months of enrolment was 0.89, the positive predictive value is basically null.

Conclusions: Students' severe mental health problems reached worrying levels, and demographic factors were poor predictors of mental health outcomes. Further research including people with lived experience will be crucial to better assess students' mental health needs and improve the predictive outcome for those most at risk of worsening symptoms.

Abstract Image

Abstract Image

Abstract Image

大学生严重抑郁症状和自杀意念的频率和机器学习预测因子。
目的:有关大学生心理健康的前瞻性研究凸显了一个重大问题。具体来说,与同龄人或从事其他职业的成年人相比,学术界的年轻成年人的心理健康状况明显较差。这种情况容易导致残疾调整寿命年数增加:我们对 1,388 名学生进行了基线调查,其中 557 人在 6 个月后完成了跟踪调查,调查内容包括他们的人口统计学信息以及关于抑郁、焦虑和强迫症状的自我报告问卷。我们采用多元回归建模法来确定基线人口统计学因素与自我报告的心理健康指标之间的关联,并利用基线收集的人口统计学和临床信息,采用有监督的机器学习算法来预测随访时心理健康较差的风险:结果:大约五分之一的学生报告了严重的抑郁症状和/或自杀倾向。在基线(高频担忧几率比=3.11 [1.88-5.15])和随访期间,经济担忧与抑郁之间都存在关联。随机森林算法在预测保持幸福感(平衡准确率 = 0.85)或无自杀意念的学生方面表现出较高的准确性,但在预测症状恶化的学生方面则表现出较低的准确性(平衡准确率 = 0.49)。用于预测的最重要特征是抑郁症的认知症状和躯体症状。然而,入学 6 个月后症状恶化的负预测值为 0.89,正预测值基本为零:结论:学生的严重心理健康问题达到了令人担忧的程度,而人口统计学因素对心理健康结果的预测性较差。要想更好地评估学生的心理健康需求,并改善对症状最有可能恶化的学生的预测结果,包括有生活经验的人在内的进一步研究至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.80
自引率
1.20%
发文量
121
审稿时长
>12 weeks
期刊介绍: Epidemiology and Psychiatric Sciences is a prestigious international, peer-reviewed journal that has been publishing in Open Access format since 2020. Formerly known as Epidemiologia e Psichiatria Sociale and established in 1992 by Michele Tansella, the journal prioritizes highly relevant and innovative research articles and systematic reviews in the areas of public mental health and policy, mental health services and system research, as well as epidemiological and social psychiatry. Join us in advancing knowledge and understanding in these critical fields.
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