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基于加速度计的运动分析评估 Tinetti 评分和跌倒风险。

Evaluation of the Tinetti score and fall risk assessment via accelerometry-based movement analysis.

机构信息

Dipartimento di Informatica, Università degli Studi di Milano, Crema (CR) 26013, Italy.

Dipartimento di Informatica, Università degli Studi di Milano, Crema (CR) 26013, Italy; Department of Computer Science and Engineering, Islamic University Kushtia, Kushtia 7003, Bangladesh.

出版信息

Artif Intell Med. 2019 Apr;95:38-47. doi: 10.1016/j.artmed.2018.08.005. Epub 2018 Sep 6.

Abstract

Gait and balance disorders are among the main predisposing factors of falls in elderly. Clinical scales are widely employed to assess the risk of falling, but they require trained personnel. We investigate the use of objective measures obtained from a wearable accelerometer to evaluate the fall risk, determined by the Tinetti clinical scale. Seventy-nine patients and eleven volunteers were enrolled in two rehabilitation centers and underwent a full Tinetti test, while wearing a triaxial accelerometer at the chest. Tinetti scores were assessed by expert physicians and those subjects with a score ≤18 were considered at high risk. First, we analyzed 21 accelerometer features by means of statistical tests and correlation analysis. Second, one regression and one classification problem were designed and solved using a linear model (LM) and an artificial neural network (ANN) to predict the Tinetti outcome. Pearson's correlation between the Tinetti score and a subset of 9 features (mainly related with standing and walking) was 0.71. The misclassification error of high risk patient was 0.21 and 0.11, for LM and ANN, respectively. The work might foster the development of a new generation of applications meant to monitor the time evolution of the fall risk using low cost devices at home.

摘要

步态和平衡障碍是老年人跌倒的主要诱发因素之一。临床量表被广泛用于评估跌倒风险,但需要经过培训的人员来操作。我们研究了使用可穿戴加速度计获得的客观测量值来评估跌倒风险,该风险由 Tinetti 临床量表确定。在两个康复中心招募了 79 名患者和 11 名志愿者,他们佩戴三轴加速度计在胸部进行了完整的 Tinetti 测试。Tinetti 评分由专家医生评估,评分≤18 的被认为是高风险。首先,我们通过统计检验和相关分析对 21 个加速度计特征进行了分析。其次,设计并解决了一个回归和一个分类问题,使用线性模型 (LM) 和人工神经网络 (ANN) 来预测 Tinetti 结果。Tinetti 评分与特征子集 9 之间的 Pearson 相关系数为 0.71。对于 LM 和 ANN,高危患者的错误分类误差分别为 0.21 和 0.11。这项工作可能会促进新一代应用程序的开发,这些应用程序旨在使用低成本设备在家中监测跌倒风险的时间演变。

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