Instituto de Biofísica Carlos Chagas Filho, Universidade Federal do Rio de Janeiro, Rio de Janeiro, RJ, Brazil.
Instituto Biomédico, Universidade Federal Fluminense, Niterói, RJ, Brazil.
Behav Brain Res. 2025 Feb 26;478:115328. doi: 10.1016/j.bbr.2024.115328. Epub 2024 Nov 7.
Graduate students face higher depression rates worldwide, which were further exacerbated during the COVID-19 pandemic. This study employed a machine learning approach to predict depressive symptoms using academic-related stressors.
We surveyed students across four graduate programs at a Federal University in Brazil between October 15, 2021, and March 26, 2022, when most activities were restricted to taking place online due to the pandemic. Through an online self-reported screening, participants rated ten academic stressors and completed the Patient Health Questionnaire (PHQ-9). Machine learning analysis tested whether the stressors would predict depressive symptoms. Gender, age, and race and ethnicity were used as covariates in the predictive model.
Participants (n=172), 67.4 % women, mean age: 28.0 (SD: 4.53) fully completed the online questionnaires. The machine learning approach, employing an epsilon-insensitive support vector regression (Ɛ-SVR) with a k-fold (k=5) cross-validation strategy, effectively predicted depressive symptoms (r=0.51; R=0.26; NMSE=0.79; all p=0.001). Among the academic stressors, those that made the greatest contribution to the predictive model were "fear and worry about academic performance", "financial difficulties", "fear and worry about academic progress and plans", and "fear and worry about academic deadlines".
This study highlights the vulnerability of graduate students to depressive symptoms caused by academic-related stressors during the COVID-19 pandemic through an artificial intelligence methodology. These findings have the potential to guide policy development to create intervention programs and public health initiatives targeted towards graduate students.
全球范围内,研究生面临更高的抑郁率,而在 COVID-19 大流行期间,这一情况进一步恶化。本研究采用机器学习方法,利用与学术相关的压力源来预测抑郁症状。
我们于 2021 年 10 月 15 日至 2022 年 3 月 26 日期间,对巴西一所联邦大学的四个研究生课程的学生进行了调查,当时由于疫情,大多数活动都限制在线上进行。通过在线自我报告筛查,参与者对十个学术压力源进行评分,并完成了患者健康问卷(PHQ-9)。机器学习分析测试了压力源是否可以预测抑郁症状。在预测模型中,性别、年龄和种族和民族被用作协变量。
共有 172 名参与者(67.4%为女性),平均年龄为 28.0(SD:4.53),他们完整地完成了在线问卷。采用 ε-不敏感支持向量回归(Ɛ-SVR)和 k 折交叉验证策略(k=5)的机器学习方法,有效地预测了抑郁症状(r=0.51;R=0.26;NMSE=0.79;均 p=0.001)。在学术压力源中,对预测模型贡献最大的是“对学术表现的恐惧和担忧”、“经济困难”、“对学术进展和计划的恐惧和担忧”以及“对学术截止日期的恐惧和担忧”。
本研究通过人工智能方法强调了在 COVID-19 大流行期间,研究生因与学术相关的压力源而出现抑郁症状的脆弱性。这些发现有可能指导政策制定,为研究生创建干预计划和公共卫生倡议。