The COVID-19 pandemic has caused devastating economic and social disruption, straining the resources of healthcare institutions worldwide. This has led to a nationwide call for models to predict hospitalization and severe illness in patients with COVID-19 to inform distribution of limited healthcare resources. We respond to one of these calls specific to the pediatric population. To address this challenge, we study two prediction tasks for the pediatric population using electronic health records: 1) predicting which children are more likely to be hospitalized, and 2) among hospitalized children, which individuals are more likely to develop severe symptoms. We respond to the national Pediatric COVID-19 data challenge with a novel machine learning model, MedML. MedML extracts the most predictive features based on medical knowledge and propensity scores from over 6 million medical concepts and incorporates the inter-feature relationships between heterogeneous medical features via graph neural networks (GNN). We evaluate MedML across 143,605 patients for the hospitalization prediction task and 11,465 patients for the severity prediction task using data from the National Cohort Collaborative (N3C) dataset. We also report detailed group-level and individual-level feature importance analyses to evaluate the model interpretability. MedML achieves up to a 7% higher AUROC score and up to a 14% higher AUPRC score compared to the best baseline machine learning models and performs well across all nine national geographic regions and over all three-month spans since the start of the pandemic. Our cross-disciplinary research team has developed a method of incorporating clinical domain knowledge as the framework for a new type of machine learning model that is more predictive and explainable than current state-of-the-art data-driven feature selection methods.
翻译:为了应对这一挑战,我们利用电子卫生记录对儿科人口进行了两项预测任务:1) 预测哪些儿童更有可能住院,2) 住院儿童中哪些人更可能出现严重的症状。我们通过新型机器学习模型(MedML)应对国家儿科COVID-19的数据挑战。MedML提取了基于医学知识的最预测特征和600多万个医学概念的显性分数,并纳入了通过肿瘤神经网络(GNNN)得出的不同医学特征之间的异性关系。我们利用电子卫生记录对14305个住院病人进行医疗预测,2) 住院儿童中11 465名病人进行严重程度预测,个人更可能出现严重的症状。我们用新型机器学习模型(MedML)应对国家儿科COVID-19的数据挑战。我们还报告了基于医学知识和显性分数的600多万个医学概念的最预测特征。我们通过图表神经系统网络(GNNNNNNN)对多种医学模型进行了评估。我们整个CMLML的高级和个体数据模型(A-ML)的升级和升级模型(A-ML)的升级分析,以进行最佳的升级到升级的升级的模型到升级的升级的升级的升级的升级的模型到升级的升级的升级的模型,以评价。