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EmbPred30: Assessing 30-Days Readmission for Diabetic Patients Using Categorical Embeddings

机译:embLED30:评估使用分类嵌入的糖尿病患者30天的睡眠

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Hospital readmission is a crucial healthcare quality measure that helps in determining the level of quality of care that a hospital offers to a patient and has proven to be immensely expensive. It is estimated that more than $25 billion are spent yearly due to readmission of diabetic patients in the USA. This paper benchmarks existing models and proposes a new embedding-based state-of-the-art deep neural network(DNN). The model can identify whether a hospitalized diabetic patient will be readmitted within 30 days or not with an accuracy of 95.2% and Area Under the Receiver Operating Characteristics (AUROC) of 97.4% on data collected from 130 US hospitals between 1999 and 2008. The results are encouraging with patients having changes in medication while admitted having a high chance of getting readmitted. Identifying prospective patients for readmission could help the hospital systems in improving their inpatient care, thereby saving them from unnecessary expenditures.
机译:医院入院是一个至关重要的医疗保健质量措施,有助于确定医院向患者提供的护理质量水平,并已被证明是非常昂贵的。 据估计,由于美国糖尿病患者的再次入住,超过250亿美元的花费。 本文基准现有模型并提出了一种新的嵌入式最先进的深神经网络(DNN)。 该模型可以识别住院糖尿病患者是否将在30天内进行住院患者,或者在1999年至2008年之间的130名美国医院收集的数据的预接收器操作特性(AUROC)下的95.2%和区域下的面积。结果 在患有药物变化的患者中令人抱怨,同时承认有很大的进入的机会。 识别入院患者可以帮助医院系统改善住院护理,从而从不必要的支出中拯救他们。

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