Palazzo Lucia, Suglia Vladimiro, Grieco Sabrina, Buongiorno Domenico, Brunetti Antonio, Carnimeo Leonarda, Amitrano Federica, Coccia Armando, Pagano Gaetano, D'Addio Giovanni, Bevilacqua Vitoantonio
Bioengineering Unit of Bari, Istituti Clinici Scientifici Maugeri IRCCS, Via Generale Bellomo, 73/75, 70124 Bari, Italy.
Department of Electrical and Information Engineering (DEI), Polytechnic University of Bari, Via E. Orabona, 4, 70125 Bari, Italy.
Sensors (Basel). 2025 Jan 5;25(1):260. doi: 10.3390/s25010260.
Abnormal locomotor patterns may occur in case of either motor damages or neurological conditions, thus potentially jeopardizing an individual's safety. Pathological gait recognition (PGR) is a research field that aims to discriminate among different walking patterns. A PGR-oriented system may benefit from the simulation of gait disorders by healthy subjects, since the acquisition of actual pathological gaits would require either a higher experimental time or a larger sample size. Only a few works have exploited abnormal walking patterns, emulated by unimpaired individuals, to perform PGR with Deep Learning-based models. In this article, the authors present a workflow based on convolutional neural networks to recognize normal and pathological locomotor behaviors by means of inertial data related to nineteen healthy subjects. Although this is a preliminary feasibility study, its promising performance in terms of accuracy and computational time pave the way for a more realistic validation on actual pathological data. In light of this, classification outcomes could support clinicians in the early detection of gait disorders and the tracking of rehabilitation advances in real time.
运动损伤或神经疾病都可能导致异常的运动模式,从而可能危及个人安全。病理性步态识别(PGR)是一个旨在区分不同行走模式的研究领域。面向PGR的系统可能会受益于健康受试者对步态障碍的模拟,因为获取实际的病理性步态需要更长的实验时间或更大的样本量。只有少数研究利用未受损个体模拟的异常行走模式,通过基于深度学习的模型来进行病理性步态识别。在本文中,作者提出了一种基于卷积神经网络的工作流程,通过与19名健康受试者相关的惯性数据来识别正常和病理性运动行为。尽管这是一项初步的可行性研究,但其在准确性和计算时间方面的良好表现为在实际病理性数据上进行更现实的验证铺平了道路。有鉴于此,分类结果可以支持临床医生早期检测步态障碍并实时跟踪康复进展。