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监督机器学习算法在痉挛性双瘫脑瘫儿童矢状面步态模式分类中的应用。

Application of supervised machine learning algorithms in the classification of sagittal gait patterns of cerebral palsy children with spastic diplegia.

机构信息

Department of Exercise Sciences, Faculty of Science, The University of Auckland, New Zealand.

The Research Academy of Grand Health, Faculty of Sport Science, Ningbo University, China.

出版信息

Comput Biol Med. 2019 Mar;106:33-39. doi: 10.1016/j.compbiomed.2019.01.009. Epub 2019 Jan 16.

Abstract

Gait classification has been widely used for children with cerebral palsy (CP) to assist with clinical decision making and to evaluate different treatment outcomes. The aim of this study was to evaluate supervised machine learning algorithms in the classification of sagittal gait patterns for CP children with spastic diplegia. Gait parameters were extracted from gait data obtained from two hundred children with spastic diplegia CP, and were used to represent the key kinematic features of each individual's gait. Seven supervised machine learning algorithms including an artificial neural network (ANN), discriminant analysis, naive Bayes, decision tree, k-nearest neighbors (KNN), support vector machine (SVM), and random forest were compared by constructing a gait classification system based on the same gait data. The performance of these algorithms was then evaluated using a standard 10-fold cross-validation procedure. The results show that the ANN has the best prediction accuracy (93.5%) with a low resubstitution error (5.8%), high specificity (>0.93) and high sensitivity (>0.92). The decision tree algorithm, SVM, and random forest approaches also have high prediction accuracy (>77.9%) with low resubstitution error (<14.3%), moderate specificity (>0.5) and moderate sensitivity (>0.2). The discriminant analysis, naive Bayes and KNN methods have relatively poor classification performance. Given these results for classification performance and prediction accuracy, the ANN is a good candidate for gait classifications for CP children with spastic diplegia. The decision tree is also attractive for clinical applications due to its transparency. Supervised machine learning algorithms can potentially be integrated into an expert gait analysis system that can interpret gait data and automatically generate high-quality analyses.

摘要

步态分类已广泛应用于脑瘫(CP)儿童,以辅助临床决策和评估不同的治疗效果。本研究旨在评估监督机器学习算法在痉挛性双瘫 CP 儿童矢状面步态分类中的应用。从 200 名痉挛性双瘫 CP 儿童的步态数据中提取步态参数,用于代表每个个体步态的关键运动学特征。比较了包括人工神经网络(ANN)、判别分析、朴素贝叶斯、决策树、k-最近邻(KNN)、支持向量机(SVM)和随机森林在内的 7 种监督机器学习算法,通过构建基于相同步态数据的步态分类系统。然后使用标准的 10 折交叉验证程序评估这些算法的性能。结果表明,ANN 的预测准确率最高(93.5%),重测误差最低(5.8%),特异性>0.93,敏感性>0.92。决策树算法、SVM 和随机森林方法也具有较高的预测准确率(>77.9%),重测误差较低(<14.3%),特异性>0.5,敏感性>0.2。判别分析、朴素贝叶斯和 KNN 方法的分类性能相对较差。鉴于这些分类性能和预测准确率的结果,ANN 是痉挛性双瘫 CP 儿童步态分类的一个很好的候选者。决策树因其透明性也适用于临床应用。监督机器学习算法可以潜在地集成到专家步态分析系统中,该系统可以解释步态数据并自动生成高质量的分析。

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