Graf Adam, Krzak Joseph J, Kruger Karen M, Davids Jon, Smith Ryan, Steinlein Brandon, Bagley Anita
Motion Analysis Center Engineer, Shriners Children's Chicago, 2211 North Oak Park Avenue, Chicago, IL 60707, United States of America.
Motion Analysis Center Engineer, Shriners Children's Chicago, 2211 North Oak Park Avenue, Chicago, IL 60707, United States of America; Midwestern University, 555 31st St, Downers Grove, IL 60515, United States of America.
Clin Biomech (Bristol). 2025 May;125:106501. doi: 10.1016/j.clinbiomech.2025.106501. Epub 2025 Mar 21.
Cerebral palsy is the most prevalent motor disability in childhood, encompassing various movement disorders that affect walking. Researchers have described gait patterns in cerebral palsy, but these are often subjective and based on clinician experience. This study introduces an automated approach to objectively identify clinically meaningful biomechanical phenotypes in cerebral palsy and test it on multicenter gait data. Utilizing instrumented gait analysis, this research aims to improve treatment strategies for gait dysfunction. This study addresses whether classification algorithms can objectively identify clinically meaningful gait patterns and if severe gait deviations are more frequent in advanced forms of cerebral palsy.
Two novel classification algorithms (sagittal and transverse planes) were developed and automated in Python. These were based on previous work and refined using clinical expertise and data from four motion analysis centers in the Shriners Children's system, including 700 patients with cerebral palsy. The patient's gait data was applied to the treatment algorithms, and the percentage of each phenotype is presented.
Novel sagittal and transverse plane gait phenotype algorithms were created. When applied to the cerebral palsy cohort, we found that more severe gait deviations, or combinations of deviations, were more apparent in the more severe forms of cerebral palsy.
Classifying a patient's biomechanical phenotype provides valuable insights into therapeutic interventions. The results allow for the automation of data-driven classification algorithms, leading to efficient, accurate, and reliable classifications of biomechanical phenotypes that support evidence-based, personalized treatment decisions and clinical management.
脑性瘫痪是儿童期最常见的运动障碍,涵盖影响行走的各种运动紊乱。研究人员已描述了脑性瘫痪的步态模式,但这些描述往往主观且基于临床医生的经验。本研究引入一种自动化方法,以客观识别脑性瘫痪中具有临床意义的生物力学表型,并在多中心步态数据上进行测试。利用仪器化步态分析,本研究旨在改进步态功能障碍的治疗策略。本研究探讨分类算法是否能客观识别具有临床意义的步态模式,以及严重步态偏差在晚期脑性瘫痪中是否更常见。
开发了两种新颖的分类算法(矢状面和横断面)并在Python中实现自动化。这些算法基于先前的工作,并利用临床专业知识以及来自施莱宁儿童医院系统四个运动分析中心的数据(包括700例脑性瘫痪患者)进行完善。将患者的步态数据应用于治疗算法,并呈现每种表型的百分比。
创建了新颖的矢状面和横断面步态表型算法。当应用于脑性瘫痪队列时,我们发现更严重的步态偏差或偏差组合在更严重形式的脑性瘫痪中更为明显。
对患者的生物力学表型进行分类可为治疗干预提供有价值的见解。结果实现了数据驱动分类算法的自动化,从而对生物力学表型进行高效、准确和可靠的分类,支持基于证据的个性化治疗决策和临床管理。