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Quantitative Gait Feature Assessment on Two-Dimensional Body Axis Projection Planes Converted from Three-Dimensional Coordinates Estimated with a Deep Learning Smartphone App.

Shigeki YamadaYukihiko AoyagiChifumi IsekiToshiyuki KondoYoshiyuki KobayashiShigeo UedaKeisuke MoriTadanori FukamiMotoki TanikawaMitsuhito MaseMinoru HoshimaruMasatsune IshikawaYasuyuki Ohta
Published in: Sensors (Basel, Switzerland) (2023)
To assess pathological gaits quantitatively, three-dimensional coordinates estimated with a deep learning model were converted into body axis plane projections. First, 15 healthy volunteers performed four gait patterns; that is, normal, shuffling, short-stepped, and wide-based gaits, with the Three-Dimensional Pose Tracker for Gait Test (TDPT-GT) application. Second, gaits of 47 patients with idiopathic normal pressure hydrocephalus (iNPH) and 92 healthy elderly individuals in the Takahata cohort were assessed with the TDPT-GT. Two-dimensional relative coordinates were calculated from the three-dimensional coordinates by projecting the sagittal, coronal, and axial planes. Indices of the two-dimensional relative coordinates associated with a pathological gait were comprehensively explored. The candidate indices for the shuffling gait were the angle range of the hip joint < 30° and relative vertical amplitude of the heel < 0.1 on the sagittal projection plane. For the short-stepped gait, the angle range of the knee joint < 45° on the sagittal projection plane was a candidate index. The candidate index for the wide-based gait was the leg outward shift > 0.1 on the axial projection plane. In conclusion, the two-dimensional coordinates on the body axis projection planes calculated from the 3D relative coordinates estimated by the TDPT-GT application enabled the quantification of pathological gait features.
Keyphrases
  • deep learning
  • cerebral palsy
  • high resolution
  • machine learning
  • clinical trial
  • magnetic resonance imaging
  • study protocol
  • magnetic resonance
  • mass spectrometry
  • middle aged
  • cerebrospinal fluid
  • neural network