基于非序列数据的递归神经网络预测糖尿病患者再入院

Chahes Chopra, S. Sinha, Shubham Jaroli, A. Shukla, Saumil Maheshwari
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引用次数: 28

摘要

再入院被认为是护理质量差的指标,如出院计划和护理协调不足。此外,大多数专家认为,许多再入院是不必要的,也是可以避免的。在本文中,我们设计了一个递归神经网络模型来预测患者是否会再次入院,并将其与SVM、随机森林等基本分类器和简单神经网络的准确率进行了比较。RNN在所有使用的模型中显示出最高的预测能力,因此医院可以使用它来针对高风险患者并防止复发入院。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recurrent Neural Networks with Non-Sequential Data to Predict Hospital Readmission of Diabetic Patients
Hospital readmissions are recognized as indicators of poor quality of care, such as inadequate discharge planning and care coordination. Moreover, most experts believe that many readmissions are unnecessary and avoidable. In the present paper, we design a Recurrent Neural Network model to predict whether a patient would be readmitted in the hospital and compared its accuracy with basic classifiers such as SVM, Random Forest and with Simple Neural Networks. RNN showed highest prediction power in all the models used and thus this can be used by hospitals to target high risk patients and prevent recurrent admissions.
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