Delirium Prediction using Machine Learning Models on Preoperative Electronic Health Records Data.

Anis Davoudi, Ashkan Ebadi, Parisa Rashidi, Tazcan Ozrazgat-Baslanti, Azra Bihorac, Alberto C Bursian
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引用次数: 37

Abstract

Electronic Health Records (EHR) are mainly designed to record relevant patient information during their stay in the hospital for administrative purposes. They additionally provide an efficient and inexpensive source of data for medical research, such as patient outcome prediction. In this study, we used preoperative Electronic Health Records to predict postoperative delirium. We compared the performance of seven machine learning models on delirium prediction: linear models, generalized additive models, random forests, support vector machine, neural networks, and extreme gradient boosting. Among the models evaluated in this study, random forests and generalized additive model outperformed the other models in terms of the overall performance metrics for prediction of delirium, particularly with respect to sensitivity. We found that age, alcohol or drug abuse, socioeconomic status, underlying medical issue, severity of medical problem, and attending surgeon can affect the risk of delirium.

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基于术前电子健康记录数据的机器学习模型预测谵妄。
电子健康档案(EHR)主要用于记录患者住院期间的相关信息,以供管理之用。此外,它们还为医学研究提供了高效而廉价的数据来源,例如患者预后预测。在这项研究中,我们使用术前电子健康记录来预测术后谵妄。我们比较了7种机器学习模型在谵妄预测上的性能:线性模型、广义加性模型、随机森林、支持向量机、神经网络和极端梯度增强。在本研究评估的模型中,随机森林和广义加性模型在预测谵妄的总体性能指标方面优于其他模型,特别是在敏感性方面。我们发现,年龄、酒精或药物滥用、社会经济地位、潜在的医疗问题、医疗问题的严重程度和主治医生都可能影响谵妄的风险。
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