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Predicting 30-day all-cause readmissions from hospital inpatient discharge data

机译:预测医院住院性排放数据的30天全体入围

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Inpatient hospital readmissions for potentially avoidable conditions are problematic and costly. In this paper, we build machine learning models using variables widely available in health claims data to predict patients' 30-day readmission risks at the time of discharge. These models show high predictive power on a U.S. nationwide readmission database. They are also capable of providing interpretable risk factors globally at the population level and locally associated with each single discharge. In addition, we propose a model-agnostic approach to provide confidence for each prediction. Altogether, using models with high predictive power, interpretable risk factors and prediction confidence may enable health care systems to accurately target high-risk patients and prevent recurrent readmissions by accurately anticipating the probability of readmission at the point of care.
机译:住院病院住院入院,用于潜在可避免的条件是有问题的且成本昂贵的。在本文中,我们使用健康声称数据广泛可用的变量构建机器学习模型,以预测患者在出院时的30天入院风险。这些模型在美国全国阅读数据库上显示了高预测电力。它们还能够在人口水平和与每个单一放电局部地局部提供全球可解释的风险因素。此外,我们提出了一种模型 - 不可知的方法来为每个预测提供置信度。总共使用具有高预测力的模型,可解释的风险因素和预测信心,可以使医疗保健系统能够准确地靶向高危患者,并通过准确预测护理点的概率来预防经常性入伍。

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