Kamruzzaman Joarder, Begg Rezaul K
School of Information Technology, Monash University, Gippsland Campus, Churchill, Vic 3842, Australia.
IEEE Trans Biomed Eng. 2006 Dec;53(12 Pt 1):2479-90. doi: 10.1109/TBME.2006.883697.
Accurate identification of cerebral palsy (CP) gait is important for diagnosis as well as for proper evaluation of the treatment outcomes. This paper explores the use of support vector machines (SVM) for automated detection and classification of children with CP using two basic temporal-spatial gait parameters (stride length and cadence) as input features. Application of the SVM method to a children's dataset (68 normal healthy and 88 with spastic diplegia form of CP) and testing on tenfold cross-validation scheme demonstrated that an SVM classifier was able to classify the children groups with an overall accuracy of 83.33% [sensitivity 82.95%, specificity 83.82%, area under the receiver operating curve (AUC-ROC = 0.88)]. Classification accuracy improved significantly when the gait parameters were normalized by the individual leg length and age, leading to an overall accuracy of 96.80% (sensitivity 94.32%, specificity 100%, AUC-ROC area = 0.9924). This accuracy result was, respectively, 3.21% and 1.93% higher when compared to an linear discriminant analysis and an multilayer-perceptron-based classifier. SVM classifier also attains considerably higher ROC area than the other two classifiers. Among the four SVM kernel functions (linear, polynomial, radial basis, and analysis of variance spline) studied, the polynomial and radial basis kernel performed comparably and outperformed the others. Classifier's performance as functions of regularization and kernel parameters was also investigated. The enhanced classification accuracy of the SVM using only two easily obtainable basic gait parameters makes it attractive for identifying CP children as well as for evaluating the effectiveness of various treatment methods and rehabilitation techniques.
准确识别脑瘫(CP)步态对于诊断以及正确评估治疗效果都很重要。本文探讨了使用支持向量机(SVM),以两个基本的时空步态参数(步长和步频)作为输入特征,对患有CP的儿童进行自动检测和分类。将SVM方法应用于一个儿童数据集(68名正常健康儿童和88名痉挛性双侧瘫型CP儿童),并在十折交叉验证方案上进行测试,结果表明SVM分类器能够对儿童组进行分类,总体准确率为83.33%[灵敏度82.95%,特异性83.82%,受试者工作特征曲线下面积(AUC-ROC = 0.88)]。当步态参数通过个体腿长和年龄进行归一化时,分类准确率显著提高,总体准确率达到96.80%(灵敏度94.32%,特异性100%,AUC-ROC面积 = 0.9924)。与线性判别分析和基于多层感知器的分类器相比,该准确率结果分别高出3.21%和1.93%。SVM分类器的ROC面积也比其他两个分类器高得多。在所研究的四个SVM核函数(线性、多项式、径向基和方差分析样条)中,多项式和径向基核的表现相当,且优于其他核函数。还研究了分类器性能作为正则化和核参数的函数。仅使用两个易于获取的基本步态参数的SVM提高了分类准确率,这使其在识别CP儿童以及评估各种治疗方法和康复技术的有效性方面具有吸引力。