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Gaits classification of normal vs. patients by wireless gait sensor and Support Vector Machine (SVM) classifier

机译:通过无线步态传感器和支持向量机(SVM)分类器对正常人和患者进行步态分类

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Due to the serious concerns of fall risks for patients with balance disorders, it is desirable to be able to objectively identify these patients in real-time dynamic gait testing using inexpensive wearable sensors. In this work, we took a total of 49 gait tests from 7 human subjects (3 normal subjects and 4 patients), where each person performed 7 Dynamic Gait Index (DGI) tests by wearing a wireless gait sensor on the T4 thoracic vertebra. The raw gait data is wirelessly transmitted to a near-by PC for real-time gait data collection. To objectively identify the patients from the gait data, we used 4 different types of Support Vector Machine (SVM) classifiers based on the 6 features extracted from the raw gait data: Linear SVM, Quadratic SVM, Cubic SVM, and Gaussian SVM. The Linear SVM, Quadratic SVM and Cubic SVM all achieved impressive 98% classification accuracy, with 95.2% sensitivity and 100% specificity in this work. However, the Gaussian SVM classifier only achieved 87.8% accuracy, 71.7% sensitivity, and 100% specificity. The results obtained with this small number of human subjects indicates that in the near future, we should be able to objectively identify balance-disorder patients from normal subjects during real-time dynamic gaits testing using intelligent SVM classifiers.
机译:由于严重关注平衡失调患者的跌倒风险,因此希望能够使用廉价的可穿戴传感器在实时动态步态测试中客观地识别这些患者。在这项工作中,我们对7位人类受试者(3位正常受试者和4位患者)进行了49次步态测试,其中每个人都在T4胸椎上佩戴了无线步态传感器,从而进行了7次动态步态指数(DGI)测试。原始步态数据通过无线方式传输到附近的PC,以实时收集步态数据。为了从步态数据中客观地识别患者,我们基于从原始步态数据中提取的6个特征,使用了4种不同类型的支持向量机(SVM)分类器:线性SVM,二次SVM,三次SVM和高斯SVM。线性SVM,二次SVM和三次SVM均达到了令人印象深刻的98%的分类精度,这项工作的灵敏度为95.2%,特异性为100%。但是,高斯SVM分类器仅达到87.8%的准确度,71.7%的灵敏度和100%的特异性。在少数人类受试者中获得的结果表明,在不久的将来,我们应该能够使用智能SVM分类器在实时动态步态测试中客观地从正常受试者中识别出失调患者。

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