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Two Shank-Mounted IMUs-Based Gait Analysis and Classification for Neurological Disease Patients

Lei Wang, Yun Sun, Qingguo Li, Tao Liu, Jingang Yi

Year
2020
Citations
91

Abstract

Automatic gait measurement and analysis is an enabling tool for intelligent healthcare and robotics-assisted rehabilitation. This letter proposes a novel two shank-mounted inertial measurement units (IMU)-based method on gait analysis and classification for three different neurological diseases. The IMU-based gait analysis and design aims to be applied in personal daily activities and environment for remote diagnosis and rehabilitation guidance. In the design, eight spatial-temporal and kinematic gait parameters are extracted from two shank-mounted IMUs. A support vector machine-based classifier is developed to classify four types of gait patterns with different neurological diseases (healthy control, peripheral neuropathy, post-stroke and Parkinson's disease). A total of 49 subjects are recruited and 93.9% of them are assigned to the right group after the leave-one-subject-out cross validation. The results demonstrate that the proposed IMU-based gait parameters and classifier are capable of differentiating the four types of gait patterns. The analysis and design have great potentials for use in clinical applications.

Keywords

Inertial measurement unitPhysical medicine and rehabilitationGaitGait analysisRehabilitationArtificial intelligenceKinematicsComputer scienceSupport vector machineMedicine

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