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Are there different gait profiles in patients with advanced knee osteoarthritis? A machine learning approach. | LitMetric

Are there different gait profiles in patients with advanced knee osteoarthritis? A machine learning approach.

Clin Biomech (Bristol)

Universidade Federal de São Paulo, Escola Paulista de Medicina, Programa de Pós Graduação em Radiologia Clínica, São Paulo, Brazil.

Published: August 2021


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Article Abstract

Background: Determine whether knee kinematics features analyzed using machine-learning algorithms can identify different gait profiles in knee OA patients.

Methods: 3D gait kinematic data were recorded from 42 patients (Kellgren-Lawrence stages III and IV) walking barefoot at individual maximal gait speed (0.98 ± 0.34 m/s). Principal component analysis, self-organizing maps, and k-means were applied to the data to identify the most relevant and discriminative knee kinematic features and to identify gait profiles.

Findings: Four different gait profiles were identified and clinically characterized as type 1: gait with the knee in excessive varus and flexion (n = 6, 14%, increased knee adduction and increased maximum and minimum knee flexion, p < 0.01); type 2: gait with knee external rotation, either in varus or valgus (n = 11, 26%, excessive maximum and minimum external rotation, p < 0.001); type 3: gait with a stiff knee (n = 17, 40%, decreased knee flexion range of motion, p < 0.001); and type 4: gait with knee varus 'thrust' and decreased rotation (n = 8, 19%, increased and reduced range of motion in the coronal and transverse plane, respectively, p < 0.05).

Interpretation: In a group of patients with homogeneous Kellgren-Lawrence classification of knee OA, gait kinematics data permitted to identify four different gait profiles. These gait profiles can be a valuable tool for helping surgical decisions and treatment. To allow generalization, further studies should be carried with a larger and heterogeneous population.

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http://dx.doi.org/10.1016/j.clinbiomech.2021.105447DOI Listing

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