使用机器学习预测急性后护理,并尽量减少先验造成的延误

Avishek Choudhury
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引用次数: 0

摘要

目的:患者的医疗保险范围在决定急性后护理(PAC)出院处置中起着至关重要的作用。事先授权程序推迟了PAC的出院处理,增加了住院时间,并影响了患者的健康。本研究采用预测分析方法,对PAC出院处置进行早期预测,以减少因事先授权、住院时间和住院费用造成的延迟。方法:我们对25名患者护理协调员(pcf)和2名注册护士(RNs)进行了小组讨论,并从初始护理评估和出院记录中检索了1600名患者数据记录。结果:卡方自动交互检测器(CHAID)算法能够早期预测PAC出院处理,加速了先前的健康保险流程,平均减少了22.22%的住院时间。该模型的总体准确率为84.16%,受试者工作特征(ROC)曲线下面积为0.81。结论:PAC出院处置的早期预测可减少批准流程,同时最大限度地减少住院患者因既往健康保险住院时间和相关费用而导致的PAC延迟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Machine Learning to predict post-acute care and minimize delays caused by Prior
Objective: A patient’s medical insurance coverage plays an essential role in determining the Post-Acute Care (PAC) discharge disposition. The prior authorization process postpones the PAC discharge disposition, increases the inpatient length of stay, and effects patient health. Our study implements predictive analytics for the early prediction of the PAC discharge disposition to reduce the deferments caused by prior authorization, the inpatient length of stay, and inpatient stay expenses. Methodology: We conducted a group discussion involving 25 Patient Care Facilitators (PCFs) and two Registered Nurses (RNs) and retrieved 1600 patient data records from the initial nursing assessment and discharge notes Results: The Chi-Squared Automatic Interaction Detector (CHAID) algorithm enabled the early prediction of the PAC discharge disposition, accelerated the prior health insurance process, decreased the inpatient length of stay by an average of 22.22%.The model produced an overall accuracy of 84.16% and an area under the Receiver Operating Characteristic (ROC) curve value of 0.81. Conclusion: The early prediction of PAC discharge dispositions can reduce authorization process and simultaneously minimize the inpatient the PAC delay caused by the prior health insurance length of stay and related expenses.
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