Matias Júnior Ivair, Medeiros Priscila, de Freita Renato Leonardo, Vicente-César Hilton, Ferreira Junior José Raniery, Machado Hélio Rubens, Menezes-Reis Rafael
Department of Surgery and Anatomy, Ribeirão Preto Medical School of the University of São Paulo, Ribeirão Preto, Brazil.
Department of Pharmacology, Ribeirão Preto Medical School of the University of São Paulo, Ribeirão Preto, Brazil.
Neurospine. 2019 Jun;16(2):305-316. doi: 10.14245/ns.1836080.040. Epub 2019 Jan 4.
Chronic constriction injury (CCI) of the sciatic nerve is a peripheral nerve injury widely used to induce mononeuropathy. This study used machine learning methods to identify the best gait analysis parameters for evaluating peripheral nerve injuries.
Twenty-eight male Wistar rats (weighing 270±10 g), were used in the present study and divided into the following 4 groups: CCI with 4 ligatures around the sciatic nerve (CCI-4L; n=7), a modified CCI model with 1 ligature (CCI-1L; n=7), a sham group (n=7), and a healthy control group (n=7). All rats underwent gait analysis 7 and 28 days postinjury. The data were evaluated using Kinovea and WeKa software (machine learning and neural networks).
In the machine learning analysis of the experimental groups, the pre-swing (PS) angle showed the highest ranking in all 3 analyses (sensitivity, specificity, and area under the receiver operating characteristics curve using the Naive Bayes, k-nearest neighbors, radial basis function classifiers). Initial contact (IC), step length, and stride length also performed well. Between 7 and 28 days after injury, there was an increase in the total course time, step length, stride length, stride speed, and IC, and a reduction in PS and IC-PS. Statistically significant differences were found between the control group and experimental groups for all parameters except speed. Interactions between time after injury and nerve injury type were only observed for IC, PS, and IC-PS.
PS angle of the ankle was the best gait parameter for differentiating nonlesions from nerve injuries and different levels of injury.
坐骨神经慢性缩窄损伤(CCI)是一种广泛用于诱导单神经病的周围神经损伤。本研究采用机器学习方法确定评估周围神经损伤的最佳步态分析参数。
本研究使用了28只雄性Wistar大鼠(体重270±10 g),分为以下4组:坐骨神经周围进行4道结扎的CCI组(CCI-4L;n = 7)、1道结扎的改良CCI模型组(CCI-1L;n = 7)、假手术组(n = 7)和健康对照组(n = 7)。所有大鼠在受伤后7天和28天进行步态分析。使用Kinovea和WeKa软件(机器学习和神经网络)对数据进行评估。
在实验组的机器学习分析中,摆动前期(PS)角度在所有3种分析(敏感性、特异性以及使用朴素贝叶斯、k近邻、径向基函数分类器的受试者操作特征曲线下面积)中排名最高。初始接触(IC)、步长和步幅也表现良好。在受伤后7天至28天之间,总行程时间、步长、步幅、步速和IC增加,而PS和IC-PS减少。除速度外,对照组与实验组之间所有参数均存在统计学显著差异。仅在IC、PS和IC-PS方面观察到损伤后时间与神经损伤类型之间的相互作用。
踝关节的PS角度是区分无损伤与神经损伤以及不同损伤程度的最佳步态参数。