Lai Daniel T H, Begg Rezaul K, Taylor Simon, Palaniswami Marimuthu
Department of Electrical and Electronic Engineering, The University of Melbourne, Parkville Campus, Melbourne, Victoria 3010, Australia.
J Biomech. 2008;41(8):1762-72. doi: 10.1016/j.jbiomech.2008.02.037. Epub 2008 Apr 23.
Elderly tripping falls cost billions annually in medical funds and result in high mortality rates often perpetrated by pulmonary embolism (internal bleeding) and infected fractures that do not heal well. In this paper, we propose an intelligent gait detection system (AR-SVM) for screening elderly individuals at risk of suffering tripping falls. The motivation of this system is to provide early detection of elderly gait reminiscent of tripping characteristics so that preventive measures could be administered. Our system is composed of two stages, a predictor model estimated by an autoregressive (AR) process and a support vector machine (SVM) classifier. The system input is a digital signal constructed from consecutive measurements of minimum toe clearance (MTC) representative of steady-state walking. The AR-SVM system was tested on 23 individuals (13 healthy and 10 having suffered at least one tripping fall in the past year) who each completed a minimum of 10 min of walking on a treadmill at a self-selected pace. In the first stage, a fourth order AR model required at least 64 MTC values to correctly detect all fallers and non-fallers. Detection was further improved to less than 1 min of walking when the model coefficients were used as input features to the SVM classifier. The system achieved a detection accuracy of 95.65% with the leave one out method using only 16 MTC samples, but was reduced to 69.57% when eight MTC samples were used. These results demonstrate a fast and efficient system requiring a small number of strides and only MTC measurements for accurate detection of tripping gait characteristics.
老年人绊倒跌倒每年耗费数十亿美元的医疗资金,并且常常因肺栓塞(内出血)和感染性骨折愈合不良导致高死亡率。在本文中,我们提出了一种智能步态检测系统(AR-SVM),用于筛查有绊倒跌倒风险的老年人。该系统的目的是早期检测出具有绊倒特征的老年人步态,以便采取预防措施。我们的系统由两个阶段组成,一个由自回归(AR)过程估计的预测模型和一个支持向量机(SVM)分类器。系统输入是一个数字信号,它由代表稳态行走的最小脚趾间隙(MTC)的连续测量值构建而成。AR-SVM系统在23名个体(13名健康个体和10名在过去一年中至少有过一次绊倒跌倒经历的个体)上进行了测试,他们每个人都以自己选择的速度在跑步机上至少行走10分钟。在第一阶段,一个四阶AR模型需要至少64个MTC值才能正确检测出所有跌倒者和非跌倒者。当将模型系数用作SVM分类器的输入特征时,检测时间进一步缩短至不到1分钟的行走时间。该系统使用仅16个MTC样本的留一法实现了95.65%的检测准确率,但当使用8个MTC样本时,准确率降至69.57%。这些结果表明,该系统快速高效,只需少量步幅且仅需MTC测量就能准确检测出绊倒步态特征。