Entropy, Irreversibility, and Time-Series Deep Learning of Kinematic and Kinetic Data for Gait Classification in Children with Cerebral Palsy, Idiopathic Toe Walking, and Hereditary Spastic Paraplegia.

IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL
Sensors Pub Date : 2025-07-07 DOI:10.3390/s25134235
Alfonso de Gorostegui, Massimiliano Zanin, Juan-Andrés Martín-Gonzalo, Javier López-López, David Gómez-Andrés, Damien Kiernan, Estrella Rausell
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引用次数: 0

Abstract

The use of gait analysis to differentiate among paediatric populations with neurological and developmental conditions such as idiopathic toe walking (ITW), cerebral palsy (CP), and hereditary spastic paraplegia (HSP) remains challenging due to the insufficient precision of current diagnostic approaches, leading in some cases to misdiagnosis. Existing methods often isolate the analysis of gait variables, overlooking the whole complexity of biomechanical patterns and variations in motor control strategies. While previous studies have explored the use of statistical physics principles for the analysis of impaired gait patterns, gaps remain in integrating both kinematic and kinetic information or benchmarking these approaches against Deep Learning models. This study evaluates the robustness of statistical physics metrics in differentiating between normal and abnormal gait patterns and quantifies how the data source affects model performance. The analysis was conducted using gait data sets from two research institutions in Madrid and Dublin, with a total of 81 children with ITW, 300 with CP, 20 with HSP, and 127 typically developing children as controls. From each kinematic and kinetic time series, Shannon's entropy, permutation entropy, weighted permutation entropy, and time irreversibility metrics were derived and used with Random Forest models. The classification accuracy of these features was compared to a ResNet Deep Learning model. Further analyses explored the effects of inter-laboratory comparisons and the spatiotemporal resolution of time series on classification performance and evaluated the impact of age and walking speed with linear mixed models. The results revealed that statistical physics metrics were able to differentiate among impaired gait patterns, achieving classification scores comparable to ResNet. The effects of walking speed and age on gait predictability and temporal organisation were observed as disease-specific patterns. However, performance differences across laboratories limit the generalisation of the trained models. These findings highlight the value of statistical physics metrics in the classification of children with different toe walking conditions and point towards the need of multimetric integration to improve diagnostic accuracy and gain a more comprehensive understanding of gait disorders.

脑性麻痹、特发性脚趾行走和遗传性痉挛性截瘫儿童步态分类的熵、不可逆性和时间序列深度学习运动学和动力学数据。
由于目前的诊断方法不够精确,导致一些病例误诊,因此使用步态分析来区分患有特发性脚趾行走(ITW)、脑瘫(CP)和遗传性痉挛性截瘫(HSP)等神经和发育疾病的儿科人群仍然具有挑战性。现有的方法往往孤立地分析步态变量,忽略了整个生物力学模式的复杂性和运动控制策略的变化。虽然以前的研究已经探索了使用统计物理原理来分析受损的步态模式,但在整合运动学和动力学信息或将这些方法与深度学习模型进行基准测试方面仍然存在差距。本研究评估了统计物理指标在区分正常和异常步态模式方面的鲁棒性,并量化了数据源如何影响模型性能。分析使用来自马德里和都柏林两家研究机构的步态数据集,共有81名ITW儿童,300名CP儿童,20名HSP儿童和127名正常发育儿童作为对照。从每个运动和动力学时间序列中,导出香农熵、排列熵、加权排列熵和时间不可逆性指标,并将其用于随机森林模型。将这些特征的分类精度与ResNet深度学习模型进行比较。进一步分析了实验室间比较和时间序列的时空分辨率对分类性能的影响,并利用线性混合模型评估了年龄和步行速度的影响。结果显示,统计物理指标能够区分受损的步态模式,达到与ResNet相当的分类分数。步行速度和年龄对步态可预测性和时间组织的影响被观察为疾病特异性模式。然而,实验室之间的性能差异限制了训练模型的泛化。这些发现强调了统计物理指标在不同脚趾行走状况儿童分类中的价值,并指出需要多指标整合来提高诊断准确性并获得对步态障碍的更全面理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Sensors
Sensors 工程技术-电化学
CiteScore
7.30
自引率
12.80%
发文量
8430
审稿时长
1.7 months
期刊介绍: Sensors (ISSN 1424-8220) provides an advanced forum for the science and technology of sensors and biosensors. It publishes reviews (including comprehensive reviews on the complete sensors products), regular research papers and short notes. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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