Using passively collected sedentary behavior to predict hospital readmission

Sangwon Bae, A. Dey, C. Low
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引用次数: 32

Abstract

Hospital readmissions are a major problem facing health care systems today, costing Medicare alone US$26 billion each year. Being readmitted is associated with significantly shorter survival, and is often preventable. Predictors of readmission are still not well understood, particularly those under the patient's control: behavioral risk factors. Our work evaluates the ability of behavioral risk factors, specifically Fitbit-assessed behavior, to predict readmission for 25 postsurgical cancer inpatients. Our results show that sum of steps, maximum sedentary bouts, frequency, and low breaks in sedentary times during waking hours are strong predictors of readmission. We built two models for predicting readmissions: Steps-only and Behavioral model that adds information about sedentary behaviors. The Behavioral model (88.3%) outperforms the Steps-only model (67.1%), illustrating the value of passively collected information about sedentary behaviors. Indeed, passive monitoring of behavior data, i.e., mobility, after major surgery creates an opportunity for early risk assessment and timely interventions.
使用被动收集久坐行为预测再入院
医院再入院是当今卫生保健系统面临的一个主要问题,仅医疗保险每年就造成260亿美元的损失。再次入院与生存期明显缩短有关,而且通常是可以预防的。再入院的预测因素仍然不是很清楚,特别是那些在患者控制下的因素:行为风险因素。我们的工作评估了行为风险因素的能力,特别是fitbit评估的行为,以预测25例术后癌症住院患者的再入院。我们的研究结果表明,步数总和、最长久坐次数、频率和醒着时久坐时间的低休息时间是再入院的有力预测因素。我们建立了两个预测再入院的模型:仅步模型和行为模型,增加了关于久坐行为的信息。行为模型(88.3%)优于仅步数模型(67.1%),说明被动收集的关于久坐行为的信息的价值。事实上,对大手术后的行为数据(即活动能力)进行被动监测,为早期风险评估和及时干预创造了机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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