Asti Vittoria, Ablondi Michela, Molle Arnaud, Zanotti Andrea, Vasini Matteo, Sabbioni Alberto
Department of Veterinary Sciences, University of Parma, Parma, Italy.
Italian Breeding Association for Equine and Donkey Breeds (ANAREAI), Roma, Italy.
Front Vet Sci. 2024 Oct 16;11:1459553. doi: 10.3389/fvets.2024.1459553. eCollection 2024.
The shift of the horse breeding sector from agricultural to leisure and sports purposes led to a decrease in local breeds' population size due to the loss of their original breeding purposes. Most of the Italian breeds must adapt to modern market demands, and gait traits are suitable phenotypes to help this process. Inertial measurement unit (IMU) technology can be used to objectively assess them. This work aims to investigate on IMU recorded data (i) the influence of environmental factors and biometric measurements, (ii) their repeatability, (iii) the correlation with judge evaluations, and (iv) their predictive value.
The Equisense Motion S was used to collect phenotypes on 135 horses, Bardigiano (101) and Murgese (34) and the data analysis was conducted using R (v.4.1.2). Analysis of variance (ANOVA) was employed to assess the effects of biometric measurements and environmental and animal factors on the traits.
Variations in several traits depending on the breed were identified, highlighting different abilities among Bardigiano and Murgese horses. Repeatability of horse performance was assessed on a subset of horses, with regularity and elevation at walk being the traits with the highest repeatability (0.63 and 0.72). The positive correlation between judge evaluations and sensor data indicates judges' ability to evaluate overall gait quality. Three different algorithms were employed to predict the judges score from the IMU measurements: Support Vector Machine (SVM), Gradient Boosting Machine (GBM), and K-Nearest Neighbors (KNN). A high variability was observed in the accuracy of the SVM model, ranging from 55 to 100% while the other two models showed higher consistency, with accuracy ranging from 74 to 100% for the GBM and from 64 to 88% for the KNN. Overall, the GBM model exhibits the highest accuracy and the lowest error. In conclusion, integrating IMU technology into horse performance evaluation offers valuable insights, with implications for breeding and training.
由于失去了原本的育种目的,马匹养殖行业从农业用途转向休闲和体育用途,导致本地品种的种群数量减少。大多数意大利品种必须适应现代市场需求,而步态特征是有助于这一过程的合适表型。惯性测量单元(IMU)技术可用于客观评估它们。这项工作旨在研究IMU记录的数据:(i)环境因素和生物特征测量的影响;(ii)它们的可重复性;(iii)与裁判评估的相关性;(iv)它们的预测价值。
使用Equisense Motion S收集135匹马(101匹巴尔迪贾诺马和34匹穆尔杰赛马)的表型,并使用R(v.4.1.2)进行数据分析。采用方差分析(ANOVA)来评估生物特征测量以及环境和动物因素对这些特征的影响。
确定了几个因品种而异的特征差异,突出了巴尔迪贾诺马和穆尔杰赛马之间不同的能力。在一部分马匹中评估了马匹表现的可重复性,行走时的规律性和高度是可重复性最高的特征(分别为0.63和0.72)。裁判评估与传感器数据之间的正相关表明裁判能够评估整体步态质量。采用了三种不同的算法从IMU测量值预测裁判分数:支持向量机(SVM)、梯度提升机(GBM)和K近邻算法(KNN)。观察到SVM模型的准确率存在很大差异,范围从55%到100%,而其他两个模型表现出更高的一致性,GBM模型的准确率范围为74%到100%,KNN模型的准确率范围为64%到88%。总体而言,GBM模型表现出最高的准确率和最低的误差。总之,将IMU技术整合到马匹性能评估中提供了有价值的见解,对育种和训练具有重要意义。