Mechanical Engineering Department, University of Nebraska-Lincoln, Lincoln, NE 68588, USA.
Department of Biomechanics, University of Nebraska at Omaha, Omaha, NE 6160, USA.
Sensors (Basel). 2022 Sep 30;22(19):7432. doi: 10.3390/s22197432.
Peripheral artery disease (PAD) manifests from atherosclerosis, which limits blood flow to the legs and causes changes in muscle structure and function, and in gait performance. PAD is underdiagnosed, which delays treatment and worsens clinical outcomes. To overcome this challenge, the purpose of this study is to develop machine learning (ML) models that distinguish individuals with and without PAD. This is the first step to using ML to identify those with PAD risk early. We built ML models based on previously acquired overground walking biomechanics data from patients with PAD and healthy controls. Gait signatures were characterized using ankle, knee, and hip joint angles, torques, and powers, as well as ground reaction forces (GRF). ML was able to classify those with and without PAD using Neural Networks or Random Forest algorithms with 89% accuracy (0.64 Matthew's Correlation Coefficient) using all laboratory-based gait variables. Moreover, models using only GRF variables provided up to 87% accuracy (0.64 Matthew's Correlation Coefficient). These results indicate that ML models can classify those with and without PAD using gait signatures with acceptable performance. Results also show that an ML gait signature model that uses GRF features delivers the most informative data for PAD classification.
外周动脉疾病(PAD)源于动脉粥样硬化,其限制了腿部的血液流动,并导致肌肉结构和功能以及步态性能发生变化。PAD 诊断不足,这会延迟治疗并恶化临床结果。为了克服这一挑战,本研究的目的是开发能够区分有和无 PAD 个体的机器学习(ML)模型。这是使用 ML 来早期识别 PAD 风险的第一步。我们基于从 PAD 患者和健康对照组中获得的先前的地面行走生物力学数据构建了 ML 模型。步态特征采用踝关节、膝关节和髋关节角度、扭矩和功率以及地面反作用力(GRF)进行描述。使用所有基于实验室的步态变量,神经网络或随机森林算法能够以 89%的准确率(0.64 马修相关系数)对有和无 PAD 的个体进行分类。此外,仅使用 GRF 变量的模型可提供高达 87%的准确率(0.64 马修相关系数)。这些结果表明,ML 模型可以使用可接受性能的步态特征对有和无 PAD 的个体进行分类。结果还表明,使用 GRF 特征的 ML 步态特征模型为 PAD 分类提供了最具信息量的数据。