Humanitas University, Department of Biomedical Sciences, Via Rita Levi Montalcini 4, 20090 Pieve Emanuele, Milan, Italy; Department of Clinical Neurosciences, Villa San Benedetto Menni Hospital, Hermanas Hospitalarias, Via Roma 16, 22032 Albese con Cassano, Como, Italy; Humanitas San Pio X, Personalized Medicine Center for Anxiety and Panic Disorders, Via Francesco Nava 31, 20159 Milan, Italy.
Humanitas University, Department of Biomedical Sciences, Via Rita Levi Montalcini 4, 20090 Pieve Emanuele, Milan, Italy; Department of Clinical Neurosciences, Villa San Benedetto Menni Hospital, Hermanas Hospitalarias, Via Roma 16, 22032 Albese con Cassano, Como, Italy.
J Affect Disord. 2022 Aug 1;310:75-86. doi: 10.1016/j.jad.2022.04.145. Epub 2022 Apr 27.
This study longitudinally evaluated first-onset major depression rates during the pandemic in Italian adults without any current clinician-diagnosed psychiatric disorder and created a predictive machine learning model (MLM) to evaluate subsequent independent samples.
An online, self-reported survey was released during two pandemic periods (May to June and September to October 2020). Provisional diagnoses of major depressive disorder (PMDD) were determined using a diagnostic algorithm based on the DSM criteria of the Patient Health Questionnaire-9 to maximize specificity. Gradient-boosted decision trees and the SHapley Additive exPlanations technique created the MLM and estimated each variable's predictive contribution.
There were 3532 participants in the study. The final sample included 633 participants in the first wave (FW) survey and 290 in the second (SW). First-onset PMDD was found in 7.4% of FW participants and 7.2% of the SW. The final MLM, trained on the FW, displayed a sensitivity of 76.5% and a specificity of 77.8% when tested on the SW. The main factors identified in the MLM were low resilience, being an undergraduate student, being stressed by pandemic-related conditions, and low satisfaction with usual sleep before the pandemic and support from relatives. Current smoking and taking medication for medical conditions also contributed, albeit to a lesser extent.
Small sample size; self-report assessment; data covering 2020 only.
Rates of first-onset PMDD among Italians during the first phases of the pandemic were considerable. Our MLM displayed a good predictive performance, suggesting potential goals for depression-preventive interventions during public health crises.
本研究纵向评估了意大利无当前临床诊断精神障碍的成年人在大流行期间首发重度抑郁症的发生率,并创建了一个预测机器学习模型(MLM)来评估后续的独立样本。
在两次大流行期间(2020 年 5 月至 6 月和 9 月至 10 月)发布了一项在线、自我报告的调查。使用基于 DSM 标准的患者健康问卷-9 的诊断算法来确定主要抑郁障碍(PMDD)的暂定诊断,以最大限度地提高特异性。梯度提升决策树和 Shapley 可加性解释技术创建了 MLM,并估计了每个变量的预测贡献。
研究中有 3532 名参与者。最终样本包括首次调查(FW)的 633 名参与者和第二次调查(SW)的 290 名参与者。FW 参与者中首发 PMDD 的发生率为 7.4%,SW 参与者中为 7.2%。在 FW 上训练的最终 MLM 在 SW 上的测试中显示出 76.5%的敏感性和 77.8%的特异性。MLM 中确定的主要因素包括低弹性、大学生身份、受与大流行相关条件的压力、大流行前常用睡眠满意度和亲属支持低、当前吸烟和服用药物治疗医疗状况也有一定贡献。
样本量小;自我报告评估;仅涵盖 2020 年的数据。
大流行初期意大利人首发 PMDD 的发生率相当高。我们的 MLM 显示出良好的预测性能,这表明在公共卫生危机期间针对抑郁预防干预有潜在的目标。