Khandoker Ahsan H, Lai Daniel T H, Begg Rezaul K, Palaniswami Marimuthu
Department of Electrical and Electronic Engineering, The University of Melbourne, Melbourne, Australia.
IEEE Trans Neural Syst Rehabil Eng. 2007 Dec;15(4):587-97. doi: 10.1109/TNSRE.2007.906961.
Trip related falls are a prevalent problem in the elderly. Early identification of at-risk gait can help prevent falls and injuries. The main aim of this study was to investigate the effectiveness of a wavelet based multiscale analysis of a gait variable [minimum foot clearance (MFC)] in comparison to MFC histogram plot analysis in extracting features for developing a model using support vector machines (SVMs) for screening of balance impairments in the elderly. MFC during walking on a treadmill was recorded on 13 healthy elderly and 10 elderly with a history of tripping falls. Features extracted from MFC histogram and then multiscale exponents between successive wavelet coefficient levels after wavelet decomposition of MFC series were used as inputs to the SVM to classify two gait patterns. The maximum accuracy of classification was found to be 100% for a SVM using a subset of selected wavelet based features, compared to 86.95% accuracy using statistical features. For estimating the relative risk of falls, the posterior probabilities of SVM outputs were calculated. These results suggest superior performance of SVM in the detection of balance impairments based on wavelet-based features and it could also be useful for evaluating for falls prevention intervention.
与旅行相关的跌倒在老年人中是一个普遍存在的问题。早期识别有跌倒风险的步态有助于预防跌倒和受伤。本研究的主要目的是调查基于小波的步态变量[最小足间隙(MFC)]多尺度分析与MFC直方图分析相比,在提取特征以开发使用支持向量机(SVM)筛查老年人平衡障碍模型方面的有效性。在13名健康老年人和10名有跌倒史的老年人在跑步机上行走时记录MFC。从MFC直方图中提取的特征,以及MFC序列小波分解后连续小波系数水平之间的多尺度指数,被用作支持向量机对两种步态模式进行分类的输入。发现使用基于小波的选定特征子集的支持向量机分类的最大准确率为100%,而使用统计特征的准确率为86.95%。为了估计跌倒的相对风险,计算了支持向量机输出的后验概率。这些结果表明,支持向量机在基于小波特征检测平衡障碍方面具有卓越性能,并且对评估跌倒预防干预也可能有用。