Department of Pharmaceutical Systems and Policy, School of Pharmacy, West Virginia University, Robert C. Byrd Health Sciences Center [North], P.O. Box 9510, Morgantown, WV 26506-9510, USA.
Department of Microbiology, Immunology and Genetics, University of North Texas Health Science Center, Fort Worth, TX 76107, USA.
Int J Environ Res Public Health. 2022 Dec 31;20(1):775. doi: 10.3390/ijerph20010775.
During the COVID-19 pandemic, an increase in poor mental health among Asian Indians was observed in the United States. However, the leading predictors of poor mental health during the COVID-19 pandemic in Asian Indians remained unknown. A cross-sectional online survey was administered to self-identified Asian Indians aged 18 and older (N = 289). Survey collected information on demographic and socio-economic characteristics and the COVID-19 burden. Two novel machine learning techniques-eXtreme Gradient Boosting and Shapley Additive exPlanations (SHAP) were used to identify the leading predictors and explain their associations with poor mental health. A majority of the study participants were female (65.1%), below 50 years of age (73.3%), and had income ≥ $75,000 (81.0%). The six leading predictors of poor mental health among Asian Indians were sleep disturbance, age, general health, income, wearing a mask, and self-reported discrimination. SHAP plots indicated that higher age, wearing a mask, and maintaining social distancing all the time were negatively associated with poor mental health while having sleep disturbance and imputed income levels were positively associated with poor mental health. The model performance metrics indicated high accuracy (0.77), precision (0.78), F1 score (0.77), recall (0.77), and AUROC (0.87). Nearly one in two adults reported poor mental health, and one in five reported sleep disturbance. Findings from our study suggest a paradoxical relationship between income and poor mental health; further studies are needed to confirm our study findings. Sleep disturbance and perceived discrimination can be targeted through tailored intervention to reduce the risk of poor mental health in Asian Indians.
在 COVID-19 大流行期间,美国的亚裔印度人群体的心理健康状况明显恶化。然而,导致亚裔印度人群体在 COVID-19 大流行期间心理健康状况不佳的主要因素仍不清楚。本研究采用横断面在线调查的方式,对年龄在 18 岁及以上的自我认定的亚裔印度人(N=289)进行了调查。调查收集了人口统计学和社会经济特征以及 COVID-19 负担等信息。本研究使用了两种新的机器学习技术-极端梯度提升(eXtreme Gradient Boosting)和 Shapley 加性解释(SHAP)来确定主要预测因素,并解释它们与心理健康状况不佳的关联。研究参与者中大多数为女性(65.1%),年龄低于 50 岁(73.3%),收入≥75,000 美元(81.0%)。导致亚裔印度人群体心理健康状况不佳的六个主要预测因素为睡眠障碍、年龄、一般健康状况、收入、戴口罩和自我报告的歧视。SHAP 图表明,年龄较高、戴口罩和一直保持社交距离与心理健康状况不佳呈负相关,而睡眠障碍和推断的收入水平与心理健康状况不佳呈正相关。模型性能指标表明,准确率高(0.77)、精度高(0.78)、F1 评分高(0.77)、召回率高(0.77)和 AUROC 高(0.87)。近五分之一的成年人报告睡眠障碍,近二分之一的成年人报告心理健康状况不佳。本研究结果表明,收入与心理健康状况不佳之间存在矛盾关系;需要进一步的研究来证实我们的研究结果。可以通过有针对性的干预措施来解决睡眠障碍和感知歧视问题,以降低亚裔印度人群体心理健康状况不佳的风险。