Risk Assessment System of Fall in the Elderly Using Artificial Intelligence and Cloud Computing

Blasco-García Jd, P. N, López-Riquelme Ja, Feliu-Batlle Jj, Nieto-Galera R, Herrero Mt
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Abstract

This paper presents a Cloud-based online tool for helping health professionals to predict the risk of falling in the elderly by using the well-known Tinetti’s Test. This tool implements a Deep Learning-based method for allowing several Tinetti scale’s items to be automatically estimated, simply using a conventional camera or a recorded video. From these sources of information, patients’ skeleton is recognized and their movements analyzed by applying some geometric calculations, which provide an objective risk assessment. Results are represented as a set of plots easily interpretable by experts. Several tests, in a controlled environment, have been carried out to validate the accuracy and reliability of the system. Moreover, some tests have been also made with real elderly patients, whose results have been evaluated by therapists. The benefits of using such remote tool for assessing (objective) fall risk, from a usability point of view, are also highlighted.
基于人工智能和云计算的老年人跌倒风险评估系统
本文介绍了一种基于云的在线工具,通过使用著名的蒂内蒂测试来帮助卫生专业人员预测老年人跌倒的风险。这个工具实现了一种基于深度学习的方法,允许自动估计几个蒂内蒂量表的项目,只需使用传统的相机或录制的视频。从这些信息来源中,通过应用一些几何计算来识别患者的骨骼和分析他们的运动,从而提供客观的风险评估。结果被表示为一组易于专家解释的图。在受控环境中进行了多次测试,以验证系统的准确性和可靠性。此外,还对真正的老年患者进行了一些测试,其结果已由治疗师进行了评估。从可用性的角度来看,使用这种远程工具来评估(客观)坠落风险的好处也得到了强调。
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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