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Prediction of appointment no-shows using electronic health records

机译:使用电子健康记录预约预约无节目

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ABSTRACT Appointment no-shows have a negative impact on patient health and have caused substantial loss in resources and revenue for health care systems. Intervention strategies to reduce no-show rates can be more effective if targeted to the subpopulations of patients with higher risk of not showing to their appointments. We use electronic health records (EHR) from a large medical center to predict no-show patients based on demographic and health care features. We apply sparse Bayesian modeling approaches based on Lasso and automatic relevance determination to predict and identify the most relevant risk factors of no-show patients at a provider level.
机译:摘要预约无节目对患者健康产生负面影响,并导致了卫生保健系统的资源和收入损失。减少缺陷率的干预策略如果有针对性的患者患者的患者患者群体更有效。我们使用来自大型医疗中心的电子健康记录(EHR),以预测基于人口和医疗保健特征的无节目患者。我们基于套索和自动相关性决定应用稀疏的贝叶斯建模方法,以预测和确定提供者水平的无节目患者最相关的风险因素。

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