Shao Yijun, Ahmed Ali, Liappis Angelike P, Faselis Charles, Nelson Stuart J, Zeng-Treitler Qing
Washington DC VA Medical Center, Washington, DC USA.
George Washington University, Washington, DC USA.
J Healthc Inform Res. 2021;5(2):181-200. doi: 10.1007/s41666-021-00093-9. Epub 2021 Feb 27.
This study was to understand the impacts of three key demographic variables, age, gender, and race, on the adverse outcome of all-cause hospitalization or all-cause mortality in patients with COVID-19, using a deep neural network (DNN) analysis. We created a cohort of Veterans who were tested positive for COVID-19, extracted data on age, gender, and race, and clinical characteristics from their electronic health records, and trained a DNN model for predicting the adverse outcome. Then, we analyzed the association of the demographic variables with the risks of the adverse outcome using the impact scores and interaction scores for explaining DNN models. The results showed that, on average, older age and African American race were associated with higher risks while female gender was associated with lower risks. However, individual-level impact scores of age showed that age was a more impactful risk factor in younger patients and in older patients with fewer comorbidities. The individual-level impact scores of gender and race variables had a wide span covering both positive and negative values. The interaction scores between the demographic variables showed that the interaction effects were minimal compared to the impact scores associated with them. In conclusion, the DNN model is able to capture the non-linear relationship between the risk factors and the adverse outcome, and the impact scores and interaction scores can help explain the complicated non-linear effects between the demographic variables and the risk of the outcome.
本研究旨在通过深度神经网络(DNN)分析,了解年龄、性别和种族这三个关键人口统计学变量对新冠病毒病(COVID-19)患者全因住院不良结局或全因死亡率的影响。我们创建了一个新冠病毒检测呈阳性的退伍军人队列,从他们的电子健康记录中提取年龄、性别、种族以及临床特征的数据,并训练了一个用于预测不良结局的DNN模型。然后,我们使用解释DNN模型的影响分数和交互分数,分析人口统计学变量与不良结局风险之间的关联。结果表明,平均而言,年龄较大和非裔美国人种族与较高风险相关,而女性性别与较低风险相关。然而,年龄的个体水平影响分数表明,年龄在年轻患者和合并症较少的老年患者中是一个更具影响力的风险因素。性别和种族变量的个体水平影响分数跨度较大,涵盖正值和负值。人口统计学变量之间的交互分数表明,与它们相关的影响分数相比,交互效应最小。总之,DNN模型能够捕捉风险因素与不良结局之间的非线性关系,影响分数和交互分数有助于解释人口统计学变量与结局风险之间复杂的非线性效应。