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利用患者出院后的远程监测活动模式预测 30 天内的再次住院:一项随机试验。

Using remotely monitored patient activity patterns after hospital discharge to predict 30 day hospital readmission: a randomized trial.

机构信息

Ascension, St. Louis, MO, USA.

Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA.

出版信息

Sci Rep. 2023 May 22;13(1):8258. doi: 10.1038/s41598-023-35201-9.

Abstract

Hospital readmission prediction models often perform poorly, but most only use information collected until the time of hospital discharge. In this clinical trial, we randomly assigned 500 patients discharged from hospital to home to use either a smartphone or wearable device to collect and transmit remote patient monitoring (RPM) data on activity patterns after hospital discharge. Analyses were conducted at the patient-day level using discrete-time survival analysis. Each arm was split into training and testing folds. The training set used fivefold cross-validation and then final model results are from predictions on the test set. A standard model comprised data collected up to the time of discharge including demographics, comorbidities, hospital length of stay, and vitals prior to discharge. An enhanced model consisted of the standard model plus RPM data. Traditional parametric regression models (logit and lasso) were compared to nonparametric machine learning approaches (random forest, gradient boosting, and ensemble). The main outcome was hospital readmission or death within 30 days of discharge. Prediction of 30-day hospital readmission significantly improved when including remotely-monitored patient data on activity patterns after hospital discharge and using nonparametric machine learning approaches. Wearables slightly outperformed smartphones but both had good prediction of 30-day hospital-readmission.

摘要

医院再入院预测模型的性能往往不佳,但大多数模型仅使用在出院时收集到的信息。在这项临床试验中,我们随机将 500 名出院回家的患者分配至使用智能手机或可穿戴设备收集和传输出院后远程患者监测(RPM)数据的活动模式的组。使用离散时间生存分析在患者日水平上进行分析。每个臂分为训练和测试折。训练集使用五折交叉验证,然后从测试集中预测最终模型结果。标准模型包含直至出院时收集的数据,包括人口统计学信息、合并症、住院时间和出院前的生命体征。增强模型由标准模型加 RPM 数据组成。与传统参数回归模型(逻辑回归和套索)相比,非参数机器学习方法(随机森林、梯度提升和集成)表现更好。主要结果是出院后 30 天内的医院再入院或死亡。当包括出院后远程监测的患者活动模式数据并使用非参数机器学习方法时,30 天内医院再入院的预测显著改善。可穿戴设备的表现略优于智能手机,但都能很好地预测 30 天内的医院再入院率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/908c/10203290/b709646acf8c/41598_2023_35201_Fig1_HTML.jpg

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