Validation of a handheld smartphone markerless gait-analysis tool

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      Validation of a handheld smartphone markerless gait-analysis tool using an estimated groundline in horses

      Equine Vet J. 2026 Jan 16. doi: 10.1002/evj.70149. Online ahead of print.
      Authors
      Karsten Key 1 , Jakob Kirkegaard 1 , Katja Berg 1 , Kristian Ringkjær Andresen 2 , Sabrina Skov Hansen 3
      Affiliations

      1 Keydiagnostics (RealHorse®), Fredensborg, Denmark.
      2 iKeyVet®, Fredensborg, Denmark.
      3 Department of Veterinary Clinical Sciences, University of Copenhagen, Copenhagen, Denmark.

      PMID: 41546456
      DOI: 10.1002/evj.70149

      Abstract

      Background: A handheld smartphone-based computer vision algorithm (RealHorse® [RH]) offers accessible alternatives for equine gait analysis but requires validation against a gold-standard three-dimensional multicamera optical motion capture system (Qualisys® [QS]).

      Objectives: To evaluate the accuracy and precision of RH in measuring vertical displacement signals (VDS) at the eye, withers, back and croup in horses trotting on a straight line and on a circle.

      Study design: Cross-sectional comparative validation study of a markerless computer vision algorithm.

      Methods: Fifty-nine horses were recorded while trotting on a straight line and 24 were lunged on a circle. RH detected two-dimensional anatomical keypoints on each frame, which were used to estimate a dynamic groundline and compute ground relative VDS with stride-based difference in maxima (Maxdiff) and minima (Mindiff). QS provided synchronous ground-relative VDS reference values. Agreement was evaluated using mean signed error, mean absolute error and Bland-Altman analysis.

      Results: On the straight line (n = 2620 strides), the pooled stride-level MAE for Maxdiff and Mindiff was 3.8 mm. Keypoint-specific errors were 5.1 mm (eye), 4.3 mm (withers) and 3.0 mm (croup). On the circle (n = 2419 strides), pooled stride-level error increased to 5.5 mm. Trial-level analysis (n = 58 trials) showed much lower errors: 1.4 mm for both eye and withers and 1.1 mm for croup. On the circle (n = 24 trials), trial-level errors were higher, with 2.8 mm for the eye, 1.8 mm for the withers and 3.3 mm for the croup. The back keypoint consistently showed the lowest errors across both stride and trial levels.

      Main limitations: RH measurements of the croup Mindiff during circling resulted in higher values and showed the largest error.

      Conclusions: RH measured vertical displacement of all keypoints with high accuracy and precision (trial-level MAE 1.1-1.4 mm straight, 1.8-3.3 mm circle), supporting its use for equine gait analysis.

      Keywords: Groundline; Maxdiff; Mindiff; computer vision algorithm; equine lameness; gait analysis; horse; vision‐based algorithm.

      © 2026 The Author(s). Equine Veterinary Journal published by John Wiley & Sons Ltd on behalf of EVJ Ltd.

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