Luo Lin, Yuan Junfeng, Wu Chenghan, Wang Yanling, Zhu Rui, Xu Huilin, Zhang Luqin, Zhang Zhongge
School of Physical Education, Guizhou Normal University, Guiyang, 550075, China.
Guizhou Center for Disease Control and Prevention, Guiyang, 550001, China.
BMC Public Health. 2025 Feb 5;25(1):470. doi: 10.1186/s12889-025-21632-8.
Depression is highly prevalent among college students, posing a significant public health challenge. Identifying key predictors of depression is essential for developing effective interventions. This study aimed to analyze potential depression risk factors among Chinese college students using the Random Forest Algorithm (RFA) and to explore gender differences in risk patterns.
A cross-sectional study was conducted with 10,043 undergraduate students from Guizhou Normal University. Thirty-three variables were analyzed using RFA. Depressive symptoms were assessed using the Center for Epidemiologic Studies Depression Scale (CES-D), with a score of ≥ 16 indicating depression risk. The variables included sociodemographic characteristics, physical and psychological health indicators, behavioral and lifestyle factors, socioeconomic conditions, and family mental health history.
The RFA identified several factors associated with depression risk, with suicidal ideation, anxiety, and sleep quality exhibiting the strongest associations. Other significant predictors included academic stress, BMI, vital capacity, psychological resilience, physical fitness test scores, major satisfaction, and social network use. The model achieved an accuracy of 87.5% and an AUC of 0.927. Gender-stratified analysis suggested different patterns: physical fitness indicators showed stronger associations with depression risk among male students, while BMI was more strongly associated with depression risk among female students.
This cross-sectional study identified factors associated with depression risk among Chinese college students, with psychological factors showing the strongest associations. Gender-specific patterns were observed, suggesting the importance of considering gender differences when developing mental health interventions. However, longitudinal studies are required to establish causal relationships and validate these findings through intervention trials.
抑郁症在大学生中非常普遍,构成了重大的公共卫生挑战。确定抑郁症的关键预测因素对于制定有效的干预措施至关重要。本研究旨在使用随机森林算法(RFA)分析中国大学生中潜在的抑郁症风险因素,并探讨风险模式中的性别差异。
对贵州师范大学的10043名本科生进行了一项横断面研究。使用RFA分析了33个变量。使用流行病学研究中心抑郁量表(CES-D)评估抑郁症状,得分≥16表明有抑郁风险。这些变量包括社会人口统计学特征、身心健康指标、行为和生活方式因素、社会经济状况以及家族心理健康史。
RFA确定了几个与抑郁风险相关的因素,其中自杀意念、焦虑和睡眠质量的关联最强。其他重要的预测因素包括学业压力、体重指数(BMI)、肺活量、心理韧性、体能测试成绩、专业满意度和社交网络使用情况。该模型的准确率为87.5%,曲线下面积(AUC)为0.927。按性别分层分析显示出不同的模式:体能指标与男生的抑郁风险关联更强,而BMI与女生的抑郁风险关联更强。
这项横断面研究确定了中国大学生中与抑郁风险相关的因素,其中心理因素的关联最强。观察到了特定性别的模式,这表明在制定心理健康干预措施时考虑性别差异的重要性。然而,需要进行纵向研究来建立因果关系,并通过干预试验验证这些发现。