被动物联网生物标志物监测和机器学习在美国老年人群心血管疾病管理中的趋势。

Brian F Bender, Jasmine A Berry
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引用次数: 0

摘要

据预测,美国老年人口的增长以及慢性疾病患病率的持续增长将进一步加剧本已负担过重的医疗保健系统的压力,并可能损害公平护理的提供。目前的技术趋势表明,人工智能(AI)和机器学习(ML)成功应用于心血管疾病(CVD)的生物标志物,这些生物标志物使用的是从老年人中部署的物联网(IoT)平台被动收集的纵向数据。这些系统越来越复杂,部署在越来越多的用例中,为创新者和护理人员带来了新的机遇和挑战。具有更高被动水平的物联网传感器的发展,将增加老年人群中设备采用持续增长的可能性,用于纵向健康数据收集,这将有利于各种心血管疾病应用。物联网传感器开发和纵向数据采集的增长与机器学习方法的增长并行,机器学习方法通过更高的个性化、更多的实时反馈和预后洞察,继续为更好的老年护理提供有希望的途径,这可能有助于预防下游并发症并减轻整个医疗系统的压力。然而,确定老年人群和相对年轻人群之间纵向生物标志物解释差异的研究结果强调了使用新开发的被动物联网系统数据的ML方法应该收集更多关于目标人群的数据的必要性,更多的临床试验将有助于阐明这些数据驱动的远程护理方法的益处和风险程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Trends in Passive IoT Biomarker Monitoring and Machine Learning for Cardiovascular Disease Management in the U.S. Elderly Population.

Trends in Passive IoT Biomarker Monitoring and Machine Learning for Cardiovascular Disease Management in the U.S. Elderly Population.

Trends in Passive IoT Biomarker Monitoring and Machine Learning for Cardiovascular Disease Management in the U.S. Elderly Population.

It is predicted that the growth in the U.S. elderly population alongside continued growth in chronic disease prevalence will further strain an already overburdened healthcare system and could compromise the delivery of equitable care. Current trends in technology are demonstrating successful application of artificial intelligence (AI) and machine learning (ML) to biomarkers of cardiovascular disease (CVD) using longitudinal data collected passively from internet-of-things (IoT) platforms deployed among the elderly population. These systems are growing in sophistication and deployed across evermore use-cases, presenting new opportunities and challenges for innovators and caregivers alike. IoT sensor development that incorporates greater levels of passivity will increase the likelihood of continued growth in device adoption among the geriatric population for longitudinal health data collection which will benefit a variety of CVD applications. This growth in IoT sensor development and longitudinal data acquisition is paralleled by the growth in ML approaches that continue to provide promising avenues for better geriatric care through higher personalization, more real-time feedback, and prognostic insights that may help prevent downstream complications and relieve strain on the healthcare system overall. However, findings that identify differences in longitudinal biomarker interpretations between elderly populations and relatively younger populations highlights the necessity that ML approaches that use data from newly developed passive IoT systems should collect more data on this target population and more clinical trials will help elucidate the extent of benefits and risks from these data driven approaches to remote care.

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