Wang Jiana, Feng Lin, Meng Nana, Yang Cong, Cai Fanfan, Huang Xin, Sun Yihang, Sznajder Kristin K, Zhang Lu, Yao Pin
School of Public Health, Health Science Center, Ningbo University, No.818 Fenghua Road, Ningbo, 315211, Zhejiang, People's Republic of China.
Department of Social Medicine, School of Public Health, China Medical University, No. 77 Puhe Road, Shenyang North New Area, Shenyang, 110122, Liaoning, People's Republic of China.
Sci Rep. 2025 Aug 6;15(1):28788. doi: 10.1038/s41598-025-14403-3.
During public health emergencies such as SARS, Ebola, and COVID-19, healthcare workers (HCWs) are often on the front lines, placing them at increased risk for adverse mental health outcomes, particularly depression and anxiety. Despite this risk, there remains a scarcity of research focused on developing predictive models to forecast the depression and anxiety levels of healthcare workers under challenging conditions. A total of 349 HCWs were selected from a Tertiary Grade-A hospital in the city of Shenyang, Liaoning Province in China. Depression and anxiety were assessed using the Patient Health Questionnaire (PHQ-9) and the Generalized Anxiety Disorder (GAD-7) scale, respectively. This study employed a random forest classifier (RFC) to predict depression and anxiety levels of HCWs from three perspectives: individual, interpersonal, and institutional with SHAP values to assess the contribution of factors. The Synthetic Minority Over-sampling Technique (SMOTE) was employed to address the issue of imbalanced data distribution. The prevalence of depression and anxiety among HCWs was 28.37% and 33.52%, respectively. The prediction model was developed using a training dataset (70%) and a test dataset (30%). The area under the curve (AUC) for depression and anxiety was 0.88 and 0.72, respectively. Additionally, the mean values of the 10-fold cross-validation results were 0.77 for the depression prediction model and 0.79 for the anxiety prediction model. For the depression prediction model, the top ten most significant predictive factors were: burnout, resilience, emotional labor, adaptability, working experience (< 1 year), being a physician, social support, average work time last week (9-11 h), age (28-30 years), age (31-35 years). For the anxiety prediction model, the top ten most significant predictive factors were: burnout, adaptability, emotional labor, age (31-35 years), average work time last week (9-11 h), resilience, being a physician, social support, working experience (< 1 year), and being female. It is essential to develop interventions that provide support both before and after a public health emergency, aiming at mitigating symptoms of depression and anxiety. The machine learning models in this study, using innovative SMOTE methodology to balance datasets with smaller sample sizes, identified key leverage points to prevent depression and anxiety among frontline HCWs, including mitigating burnout among HCWs, bolstering their resilience and adaptability, and ensuring reasonable work hours.
在非典、埃博拉和新冠肺炎等突发公共卫生事件期间,医护人员往往身处一线,这使他们出现不良心理健康状况,尤其是抑郁和焦虑的风险增加。尽管存在这种风险,但针对开发预测模型以预测医护人员在具有挑战性的情况下的抑郁和焦虑水平的研究仍然匮乏。本研究从中国辽宁省沈阳市一家三级甲等医院选取了349名医护人员。分别使用患者健康问卷(PHQ - 9)和广泛性焦虑障碍(GAD - 7)量表评估抑郁和焦虑情况。本研究采用随机森林分类器(RFC)从个人、人际和机构三个层面预测医护人员抑郁和焦虑水平,并使用SHAP值评估各因素的贡献。采用合成少数过采样技术(SMOTE)解决数据分布不均衡问题。医护人员中抑郁和焦虑的患病率分别为28.37%和33.52%。利用训练数据集(70%)和测试数据集(30%)构建预测模型。抑郁和焦虑预测模型曲线下面积(AUC)分别为0.88和0.72。此外,抑郁预测模型10折交叉验证结果的平均值为0.77,焦虑预测模型为0.79。对于抑郁预测模型,十大最重要的预测因素为:职业倦怠、心理韧性、情绪劳动、适应能力、工作经验(<1年)、医生身份、社会支持、上周平均工作时长(9至11小时)、年龄(28至30岁)、年龄(31至35岁);对于焦虑预测模型,十大最重要的预测因素为:职业倦怠、适应能力、情绪劳动、年龄(31至35岁)、上周平均工作时长(9至11小时)、心理韧性、医生身份、社会支持、工作经验(<1年)、女性身份。制定在突发公共卫生事件之前和之后均提供支持的干预措施至关重要,旨在减轻抑郁和焦虑症状。本研究中的机器学习模型使用创新的SMOTE方法平衡样本量较小的数据,确定了预防一线医护人员抑郁和焦虑情绪关键的着力点,包括减轻医护人员职业倦怠、增强其心理韧性和适应能力以及确保合理工作时长。