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首页> 外文期刊>International journal of telemedicine and applications >Assessing Hospital Readmission Risk Factors in Heart Failure Patients Enrolled in a Telemonitoring Program
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Assessing Hospital Readmission Risk Factors in Heart Failure Patients Enrolled in a Telemonitoring Program

机译:评估参加远程监护计划的心力衰竭患者的医院再入院危险因素

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摘要

The purpose of this study was to validate a previously developed heart failure readmission predictive algorithm based on psychosocial factors, develop a new model based on patient-reported symptoms from a telemonitoring program, and assess the impact of weight fluctuations and other factors on hospital readmission. Clinical, demographic, and telemonitoring data was collected from 100 patients enrolled in the Partners Connected Cardiac Care Program between July 2008 and November 2011. 38% of study participants were readmitted to the hospital within 30 days. Ten different heart-failure-related symptoms were reported 17,389 times, with the top three contributing approximately 50% of the volume. The psychosocial readmission model yielded an AUC of 0.67, along with sensitivity 0.87, specificity 0.32, positive predictive value 0.44, and negative predictive value 0.8 at a cutoff value of 0.30. In summary, hospital readmission models based on psychosocial characteristics, standardized changes in weight, or patient-reported symptoms can be developed and validated in heart failure patients participating in an institutional telemonitoring program. However, more robust models will need to be developed that use a comprehensive set of factors in order to have a significant impact on population health.
机译:这项研究的目的是验证基于心理社会因素的先前开发的心力衰竭再入院预测算法,基于远程监控程序中患者报告的症状开发新模型,并评估体重波动和其他因素对医院再入院的影响。从2008年7月至2011年11月间参加“合作伙伴互联心脏护理计划”的100名患者收集了临床,人口统计学和远程监护数据。38%的研究参与者在30天内再次入院。报告了10种与心力衰竭相关的不同症状,共发生了17389次,前三者占总症状量的50%。心理社会再入院模型得出的AUC为0.67,灵敏度为0.87,特异性为0.32,阳性预测值为0.44,阴性预测值为0.8(截止值为0.30)。总之,可以根据参加机构远程监护计划的心力衰竭患者的心理社会特征,体重的标准化变化或患者报告的症状建立和验证医院再入院模型。但是,将需要开发使用一组综合因素的更健壮的模型,以便对人口健康产生重大影响。

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