用于家庭跌倒监测的环境辅助生活系统。

IF 2.9 3区 医学 Q3 ENGINEERING, BIOMEDICAL
Expert Review of Medical Devices Pub Date : 2023-07-01 Epub Date: 2023-08-23 DOI:10.1080/17434440.2023.2245320
Amaranta Soledad Orejel Bustos, Marco Tramontano, Giovanni Morone, Irene Ciancarelli, Giuseppe Panza, Andrea Minnetti, Alessandro Picelli, Nicola Smania, Marco Iosa, Giuseppe Vannozzi
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引用次数: 0

摘要

简介:在发生跌倒时,家中的监控系统至关重要,可以是独立的跌倒检测设备,也可以是旨在识别用户可能有跌倒风险的行为的活动识别设备,或者实时检测跌倒并向急救人员发出警报。涵盖的领域:这篇综述分析了当前关于可用于家庭跌倒检测的不同设备的文献。专家意见:纳入的研究强调,从临床援助的角度和技术生物工程的角度来看,在家中进行跌倒检测是一项重要挑战。有可穿戴、不可穿戴和混合系统,旨在检测患者家中发生的跌倒。在不久的将来,由于技术的进步以及机器学习算法的预测能力,预计预测跌倒的概率会更大。跌倒预防必须让临床医生采用以人为本的方法、能够评估患者运动的低成本和微创技术,以及能够准确预测跌倒事件的机器学习算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ambient assisted living systems for falls monitoring at home.

Introduction: Monitoring systems at home are critical in the event of a fall, and can range from standalone fall detection devices to activity recognition devices that aim to identify behaviors in which the user may be at risk of falling, or to detect falls in real-time and alert emergency personnel.

Areas covered: This review analyzes the current literature concerning the different devices available for home fall detection.

Expert opinion: Included studies highlight how fall detection at home is an important challenge both from a clinical-assistance point of view and from a technical-bioengineering point of view. There are wearable, non-wearable and hybrid systems that aim to detect falls that occur in the patient's home. In the near future, a greater probability of predicting falls is expected thanks to an improvement in technologies together with the prediction ability of machine learning algorithms. Fall prevention must involve the clinician with a person-centered approach, low cost and minimally invasive technologies able to evaluate the movement of patients and machine learning algorithms able to make an accurate prediction of the fall event.

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来源期刊
Expert Review of Medical Devices
Expert Review of Medical Devices 医学-工程:生物医学
CiteScore
5.90
自引率
3.20%
发文量
69
审稿时长
6-12 weeks
期刊介绍: The journal serves the device research community by providing a comprehensive body of high-quality information from leading experts, all subject to rigorous peer review. The Expert Review format is specially structured to optimize the value of the information to reader. Comprehensive coverage by each author in a key area of research or clinical practice is augmented by the following sections: Expert commentary - a personal view on the most effective or promising strategies Five-year view - a clear perspective of future prospects within a realistic timescale Key issues - an executive summary cutting to the author''s most critical points In addition to the Review program, each issue also features Medical Device Profiles - objective assessments of specific devices in development or clinical use to help inform clinical practice. There are also Perspectives - overviews highlighting areas of current debate and controversy, together with reports from the conference scene and invited Editorials.
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