Knowledge management system in falling risk for physiotherapy care of elderly

Worasak Rueangsirarak, N. Chakpitak, K. Meksamoot, Prapas Pothongsunun
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引用次数: 2

Abstract

This paper describes the elderly healthcare research project affected by a fall. The decision support system is proposed as knowledge management method, including knowledge engineering to acquiring the expert's heuristically diagnostic knowledge and sharing this knowledge to the physiotherapist in the form of tool and application at the right time. This paper outlines a Knowledge Management System (KMS) 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 KMS helps support the physiotherapist to determine serious falling risks in the elderly and recommend guidelines for medical treatment. The evaluation result shows an efficient performance with 80.95% of precision when using the Assumption Attribute category criteria with K NNR =3. Furthermore, the result of KMS-EUCS shows a high satisfaction from the users with 97.50% of satisfaction in a community of practice scenario. This can confirm the successful of KMS approach within the falling risk screening procedure.
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老年人理疗护理跌倒风险的知识管理系统
本文介绍了老年人跌倒影响医疗保健的研究项目。将决策支持系统作为一种知识管理方法,包括知识工程,获取专家的启发式诊断知识,并在适当的时候以工具和应用的形式将这些知识共享给物理治疗师。本文概述了一种利用动作捕捉技术诊断老年人跌倒模式的知识管理系统(KMS)。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。从KMS过程中获得的诊断信息有助于物理治疗师确定老年人严重跌倒的风险,并建议医疗指南。评价结果表明,在K NNR =3的假设属性分类标准下,评价结果具有80.95%的精度。此外,KMS-EUCS的结果显示,在实践社区场景中,用户满意度达到97.50%。这可以证实KMS方法在坠落风险筛选程序中的成功。
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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