Center for Biomedical Informatics, Brown University, Providence RI.
Rhode Island Quality Institute, Providence RI.
AMIA Annu Symp Proc. 2023 Apr 29;2022:289-298. eCollection 2022.
The COVID-19 pandemic continues to be widespread, and little is known about mental health impacts from dealing with the disease itself. This retrospective study used a deidentified health information exchange (HIE) dataset of electronic health record data from the state of Rhode Island and characterized different subgroups of the positive COVID-19 population. Three different clustering methods were explored to identify patterns of condition groupings in this population. Increased incidence of mental health conditions was seen post-COVID-19 diagnosis, and these individuals exhibited higher prevalence of comorbidities compared to the negative control group. A self-organizing map cluster analysis showed patterns of mental health conditions in half of the clusters. One mental health cluster revealed a higher comorbidity index and higher severity of COVID-19 disease. The clinical features identified in this study motivate the need for more in-depth analysis to predict and identify individuals at high risk for developing mental illness post-COVID-19 diagnosis.
新冠疫情仍在广泛传播,对于应对疾病本身对心理健康的影响知之甚少。本回顾性研究使用了罗德岛州的一个去标识化的健康信息交换(HIE)数据集,该数据集包含电子健康记录数据,用于描述阳性新冠人群的不同亚组。研究探索了三种不同的聚类方法,以确定该人群中疾病分组的模式。在新冠诊断后,心理健康状况的发病率增加,与阴性对照组相比,这些人表现出更高的共病患病率。自组织映射聚类分析显示了一半聚类中的心理健康状况模式。一个心理健康聚类显示出更高的共病指数和更高的新冠疾病严重程度。本研究中确定的临床特征表明需要更深入的分析,以预测和识别新冠诊断后有患精神病风险的个体。