基于案例的泰国老年人跌倒风险筛查推理系统

Worasak Rueangsirarak, N. Chakpitak, K. Meksamoot, Prapas Pothongsunun
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引用次数: 3

摘要

摔倒对老年人的影响可能是毁灭性的,导致丧失独立性,降低他/她的生活质量。此外,跌倒和由此造成的伤害的累积效应可能消耗不成比例的卫生保健资源。然而,物理治疗师的数量不足以为日益增加的老龄化人口提供必要的护理。政府机构试图通过减少对医学专家和训练有素的物理治疗师的需求来解决这一紧迫问题。本研究概述了一种使用动作捕捉技术诊断老年人跌倒模式的跌倒风险筛查系统。这个想法是整合一个适当的程序,包括基于案例的推理和动作捕捉,以提供一个决策支持系统。基于案例推理的诊断信息有助于物理治疗师确定老年人严重跌倒风险并推荐医疗指南。在本研究中,由于样本数据有限,导致使用分层10倍交叉验证方法对CBR检索机制进行性能评估。它显示了非常高的性能,准确率为81.67%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Case-based reasoning system for Screening Falling Risk of Thai elderly
The effect of a fall towards an older person can be devastating and lead to loss of independence and reduce his/her quality of life. Furthermore, the cumulative effect of falls and resulting injuries can consume a disproportionate amount of health care resources. However, the number of physiotherapists is not sufficient to provide the necessary care for the increasing number of aging population. The governmental agencies try to solve the urgent problem by reducing the demand of the medical expert with the trained physiotherapist. This research outlines a Falling Risk Screening System to diagnose falling patterns in elderly people using Motion Capture Technology. The idea is to integrate an appropriate procedure including case based reasoning and motion capture to provide a decision support system. The diagnosis information derived from the process of case based reasoning helps support the physiotherapist to determine serious falling risks in the elderly and recommend guidelines for medical treatment. In this study, the limited sample data leads to use stratified 10-fold cross-validation method for performance evaluation of the CBR's retrieval mechanism. It demonstrates the very high performance, 81.67% of accuracy.
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