Kim Sharon, Soangra Rahul, Grant-Beuttler Marybeth, Aminian Afshin
Schmid College of Science and Technology, Chapman University, Orange, CA 92866.
Crean College of Health and Behavioral Sciences, Chapman University, Orange, CA 92866.
Biomed Sci Instrum. 2019 Apr;55(2):178-185.
Idiopathic toe walking on the balls of the feet is commonly found in children. Many toddlers who are just beginning to walk show signs of toe walking, but when toe walking persists after two years of age, the child's risk of falling increases as well as the risk of other developmental delays. Idiopathic toe-walking is estimated to occur in 7 to 24% of children. In order to address the problem of toe walking and assess improvements due to intervention, one needs to identify heel-toe gait versus toe-toe gait in natural environments of idiopathic toe walkers. The aim of this study was to investigate if learning algorithms utilizing triaxial accelerometers and gyroscopes from wearable sensors could detect and differentiate heel-toe gait versus toe-toe gait. In this study, 5 adolescents (13± 5 years) patients with idiopathic toe walking characteristics wore inertial sensor at L5 - S1 joint. New interventions can be designed for idiopathic toe walking population, but currently, it is a challenge to quantify the efficiency of toe-walking intervention. In recent times, with the advancement of machine learning classification methods and powerful computing, longitudinal data from wearable sensors can be used to accurately classify gait abnormalities. The aim of this study was to investigate machine learning methods to classify toe-toe walking versus heel-toe walking using data from a single inertial sensor. We found that k-means clustering was successful in differentiating toe walking with that of typical walking signals. We found that some of the linear variability based features such as standard deviation, Root Mean Square (RMS), and kurtosis contained most of the variability among the data and could therefore distinguish toe-toe gait versus heeltoe gait through clustering. The k-means cluster provided an 82% accuracy score with a specificity of 83% and sensitivity of 86%. We further utilized Recurrent Convolution Neural Network (RNN) such as Long Short-Term Memory (LSTM). The LSTM model was another classification method that was used to distinguish between toe-toe gait and heel-toe gait. Wearable sensors integrated with machine and deep learning algorithms have the capability to transform current on-going therapy methods and monitor patients longitudinally for their improvement in gait. These novel learning-based techniques could successfully classify toe walking gait and help in estimating the efficacy of the treatment in idiopathic toe walking adolescents.
特发性踮足行走常见于儿童。许多刚开始学步的幼儿都有踮足行走的迹象,但如果两岁后仍持续踮足行走,孩子摔倒的风险以及其他发育迟缓的风险都会增加。据估计,7%至24%的儿童会出现特发性踮足行走。为了解决踮足行走问题并评估干预后的改善情况,需要在特发性踮足行走儿童的自然环境中识别足跟到足尖步态与足尖到足尖步态。本研究的目的是调查利用可穿戴传感器的三轴加速度计和陀螺仪的学习算法能否检测并区分足跟到足尖步态与足尖到足尖步态。在本研究中,5名具有特发性踮足行走特征的青少年(13±5岁)患者在L5 - S1关节处佩戴了惯性传感器。可以为特发性踮足行走人群设计新的干预措施,但目前,量化踮足行走干预的效果是一项挑战。近年来,随着机器学习分类方法的进步和强大计算能力的提升,可穿戴传感器的纵向数据可用于准确分类步态异常。本研究的目的是调查使用来自单个惯性传感器的数据通过机器学习方法对足尖到足尖行走与足跟到足尖行走进行分类。我们发现k均值聚类成功地区分了踮足行走与典型行走信号。我们发现一些基于线性变异性的特征,如标准差、均方根(RMS)和峰度,包含了数据中的大部分变异性,因此可以通过聚类区分足尖到足尖步态与足跟到足尖步态。k均值聚类的准确率为82%,特异性为83%,灵敏度为86%。我们进一步利用了递归卷积神经网络(RNN),如长短期记忆(LSTM)。LSTM模型是另一种用于区分足尖到足尖步态和足跟到足尖步态的分类方法。与机器学习和深度学习算法集成的可穿戴传感器有能力改变当前正在进行的治疗方法,并纵向监测患者步态的改善情况。这些基于新学习技术能够成功地对踮足行走步态进行分类,并有助于评估特发性踮足行走青少年的治疗效果。