Equine Department, Vetsuisse Faculty, University of Zurich, Zürich, Switzerland.
Equine Department, Vetsuisse Faculty, University of Zurich, Zürich, Switzerland.
J Biomech. 2021 Jan 4;114:110146. doi: 10.1016/j.jbiomech.2020.110146. Epub 2020 Nov 21.
Objectively assessing horse movement symmetry as an adjunctive to the routine lameness evaluation is on the rise with several commercially available systems on the market. Prerequisites for quantifying such symmetries include knowledge of the gait and gait events, such as hoof to ground contact patterns over consecutive strides. Extracting this information in a robust and reliable way is essential to accurately calculate many kinematic variables commonly used in the field. In this study, optical motion capture was used to measure 222 horses of various breeds, performing a total of 82 664 steps in walk and trot under different conditions, including soft, hard and treadmill surfaces as well as moving on a straight line and in circles. Features were extracted from the pelvis and withers vertical movement and from pelvic rotations. The features were then used in a quadratic discriminant analysis to classify gait and to detect if the left/right hind limb was in contact with the ground on a step by step basis. The predictive model achieved 99.98% accuracy on the test data of 120 horses and 21 845 steps, all measured under clinical conditions. One of the benefits of the proposed method is that it does not require the use of limb kinematics making it especially suited for clinical applications where ease of use and minimal error intervention are a priority. Future research could investigate the extension of this functionality to classify other gaits and validating the use of the algorithm for inertial measurement units.
客观评估马的运动对称性作为常规跛行评估的辅助手段,随着市场上几种商业化系统的出现,其应用越来越广泛。量化这些对称性的前提包括对步态和步态事件的了解,例如连续步幅中蹄与地面的接触模式。以稳健可靠的方式提取这些信息对于准确计算运动学变量至关重要,这些变量在该领域中经常使用。在这项研究中,使用光学运动捕捉技术测量了 222 匹不同品种的马,在不同条件下(包括软、硬和跑步机表面,以及直线和圆形运动)行走和小跑时共完成了 82664 步。从骨盆和肩部的垂直运动以及骨盆旋转中提取特征。然后,将这些特征用于二次判别分析,以对步态进行分类,并检测每一步中左右后肢是否与地面接触。在对 120 匹马和 21845 步的测试数据的分析中,预测模型的准确率达到了 99.98%,所有数据都是在临床条件下测量的。该方法的一个优点是,它不需要使用肢体运动学,这使其特别适合临床应用,在这些应用中,易用性和最小的误差干预是优先考虑的因素。未来的研究可以探讨将这种功能扩展到其他步态的分类,并验证该算法在惯性测量单元中的使用。