Remote patient monitoring: what impact can data analytics have on cost?

S. Lee, Hassan Ghasemzadeh, B. Mortazavi, M. Lan, N. Alshurafa, Michael K. Ong, M. Sarrafzadeh
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引用次数: 32

Abstract

While significant effort has been made on designing Remote Monitoring Systems (RMS), limited research has been conducted on the potential cost savings that these systems offer in terms of reduction in readmission costs, as well as the costs associated with human resources involved in the intervention process. This paper is particularly interested in exploring potential cost savings that an analytics engine can provide in presence of intelligent back-end data processing and machine learning algorithms against conventional RMS that operate based on simple thresholding approaches. Using physiological data collected from 486 heart failure patients through a clinical study in collaboration with the UCLA School of Medicine, we conduct a retrospective data analysis to estimate prediction accuracy as well as associated costs of the two remote monitoring approaches. Our results show that analytics-based RMS can reduce false negative rates by 61.4% while maintaining a false positive performance close to that of conventional RMS. Furthermore, the proposed analytics engine achieves 61.5% reduction in the overall readmission costs.
远程病人监护:数据分析对成本有什么影响?
虽然在设计远程监测系统方面作出了重大努力,但对这些系统在减少再入院费用以及干预过程中涉及的人力资源费用方面可能节省的费用进行了有限的研究。本文特别感兴趣的是探索分析引擎在智能后端数据处理和机器学习算法的存在下可以提供的潜在成本节约,而不是基于简单阈值方法操作的传统RMS。通过与加州大学洛杉矶分校医学院合作的一项临床研究,我们收集了486名心力衰竭患者的生理数据,进行了回顾性数据分析,以估计两种远程监测方法的预测准确性和相关成本。我们的研究结果表明,基于分析的RMS可以将假阴性率降低61.4%,同时保持与传统RMS接近的假阳性性能。此外,所提出的分析引擎使总体再入院成本降低了61.5%。
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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