IEEE Access (Jan 2022)

Piezoresistive-Based Gait Monitoring Technique for the Recognition of Knee Osteoarthritis Patients

  • Aobo Wang,
  • Deyi Li,
  • Ning Fan,
  • Shuo Yuan,
  • Qichao Wu,
  • Zhe Fu,
  • Zheng Liu,
  • Lei Zang

DOI
https://doi.org/10.1109/ACCESS.2022.3224047
Journal volume & issue
Vol. 10
pp. 123874 – 123884

Abstract

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Knee osteoarthritis (Knee OA) is a degenerative disease that often perplexes the elderly and the whole society, and its timely recognition receives interest worldwide. However, traditional imaging examinations cannot reflect dynamic function nor implement long-term monitoring. To address this issue, this article suggests a piezoresistive-based gait monitoring method to recognize patients with Knee OA by assessing the plantar pressure signals during the subjects’ walking, which is mobile, wearable, low-cost, and convenient. Eighteen subjects diagnosed with Knee OA and twenty-two control subjects participated in the experiment. Considering the asymmetric pressure distribution in feet and the landing habits of Knee OA patients, the plantar surface was split into eight areas, calculating the contact time and maximum force of each area in a gait cycle. Using these characteristics to train, the support vector machine (SVM) reached an accuracy of 93.15%, a precision of 92.39%, and a recall of 92.79%. Furthermore, a prediction model was proposed for the application that aggregates all the results in one test and gives a more accurate result, and the classification accuracy for individuals in the ensemble model is 90.90%. Our technique fills the vacancy of the recognition of patients with Knee OA based on wearable instruments. It provides ideas for intelligent healthcare, which benefits potential Knee OA patients’ early diagnosis and treatment.

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