Analysis of Motor Functions of Hemiplegic Patients Based on Dual-mode Signal Fusion

Sichao Qin*, Daowei Gao, Xi Chen, Shuangqian Ning, Zhonghua Liu, Pengfei Li

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Accurate assessment of mobility is of great significance for disease diagnosis and rehabilitation guidance. In response to the needs of hemiplegic patients for accurate quantitative assessment of mobility during disease diagnosis and rehabilitation, this paper proposes a gait analysis method based on the fusion of bimodal gait signals from human electrostatic field and Kinect, which can objectively and quantitatively assess the gait abnormalities of hemiplegic patients. Kinematic data and human electrostatic gait signals were recorded simultaneously during the walking process of the subjects, and 10 quantitative indexes of motion ability and symmetry of hip, knee, and ankle joint, muscle force control ability, gait symmetry, gait balance, and gait stability were extracted. Gait index of hemiplegic patients was quantitatively assessed by an improved principal component analysis method, which was used to quantitatively assess the lower limb motor function of hemiplegic patients. The results showed that the hemiplegic gait index was effective in differentiating hemiplegic patients with different Brunnstrom stages, and showed a significant negative correlation with the Fugl-Meyer lower extremity motor function scale scores (P<0.05), with an absolute value of the correlation coefficient as high as 0.96. This paper suggests that the hemiplegic gait index is a reliable mobility assessment tool to better support traditional clinical decision-making and improve the efficiency of rehabilitation therapy.

Original languageEnglish
JournalIEEE Sensors Journal
DOIs
Publication statusAccepted/In press - 2024

Keywords

  • electrostatic gait signal
  • gait analysis
  • hemiplegic gait index
  • Kinect kinematic data
  • Multi-mode information fusion

Fingerprint

Dive into the research topics of 'Analysis of Motor Functions of Hemiplegic Patients Based on Dual-mode Signal Fusion'. Together they form a unique fingerprint.

Cite this