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Tracking Foot Drop Recovery Following Lumbar-Spine Surgery Applying Multiclass Gait Classification Using Machine Learning Techniques

机译:跟踪腰椎手术后的脚下降恢复使用机器学习技术应用多类步态分类

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摘要

The ability to accurately perform human gait evaluation is critical for orthopedic foot and ankle surgeons in tracking the recovery process of their patients. The assessment of gait in an objective and accurate manner can lead to improvement in diagnoses, treatments, and recovery. Currently, visual inspection is the most common clinical method for evaluating the gait, but this method can be subjective and inaccurate. The aim of this study is to evaluate the foot drop condition in an accurate and clinically applicable manner. The gait data were collected from 56 patients suffering from foot drop with L5 origin gathered via a system based on inertial measurement unit sensors at different stages of surgical treatment. Various machine learning (ML) algorithms were applied to categorize the data into specific groups associated with the recovery stages. The results revealed that the random forest algorithm performed best out of the selected ML algorithms, with an overall 84.89% classification accuracy and 0.3785 mean absolute error for regression.
机译:准确地进行人体步态评估的能力对于整形外科足踝外科医师追踪患者的康复过程至关重要。客观准确地评估步态可以改善诊断,治疗和恢复能力。当前,目视检查是评估步态的最常见的临床方法,但是这种方法可能是主观的且不准确的。这项研究的目的是以一种准确的,可临床应用的方式评估脚下垂的情况。步态数据收集自56名患有L5起源脚下垂的患者,这些数据是通过基于惯性测量单位传感器的系统在手术治疗的不同阶段收集的。应用了各种机器学习(ML)算法将数据分类为与恢复阶段相关的特定组。结果表明,随机森林算法在所选的ML算法中表现最佳,总体分类精度为84.89%,回归的平均绝对误差为0.3785。

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