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奶牛跛行评分系统,使用测力板和人工智能。

Lameness scoring system for dairy cows using force plates and artificial intelligence.

机构信息

Department of Clinical Sciences, Faculty of Veterinary Medicine, University of Tehran, Tehran, Iran.

出版信息

Vet Rec. 2012 Feb 4;170(5):126. doi: 10.1136/vr.100429. Epub 2011 Dec 2.

Abstract

Lameness scoring is a routine procedure in dairy industry to screen the herds for new cases of lameness. Subjective lameness scoring, which is the most popular lameness detection and screening method in dairy herds, has several limitations. They include low intra-observer and inter-observer agreement and the discrete nature of the scores which limits its usage in monitoring the lameness. The aim of this study is to develop an automated lameness scoring system comparable with conventional subjective lameness scoring by means of artificial neural networks. The system is composed of four balanced force plates installed in a hoof-trimming box. A group of 105 dairy cows was used for the study. Twenty-three features extracted from ground reaction force (GRF) data were used in a computer training process which was performed on 60 per cent of the data. The remaining 40 per cent of the data were used to test the trained system. Repeatability of the lameness scoring system was determined by GRF samples from 25 cows, captured at two different times from the same animals. The mean sd was 0.31 and the mean coefficient of variation was 14.55 per cent, which represents a high repeatability in comparison with subjective vision-based scoring methods. Although the highest sensitivity and specificity values were seen in locomotion score groups 1 and 4, the automatic lameness system was both sensitive and specific in all groups. The sensitivity and specificity were higher than 72 per cent in locomotion score groups 1 to 4, and it was 100 per cent specific and 50 per cent sensitive for group 5.

摘要

跛行评分是乳品行业的常规程序,用于筛查新的跛行病例。主观跛行评分是奶牛场最流行的跛行检测和筛查方法,但存在一些局限性。其中包括观察者内和观察者间的一致性低,以及评分的离散性限制了其在跛行监测中的应用。本研究旨在通过人工神经网络开发一种与传统主观跛行评分相媲美的自动化跛行评分系统。该系统由安装在蹄修整箱中的四个平衡测力板组成。对 105 头奶牛进行了研究。从地面反力(GRF)数据中提取了 23 个特征,并在计算机训练过程中使用了这些特征,该过程在 60%的数据上进行。其余 40%的数据用于测试训练后的系统。通过从 25 头奶牛捕获的 GRF 样本,在同一动物的两个不同时间点确定跛行评分系统的重复性。平均值的标准差为 0.31,平均值的变异系数为 14.55%,与基于主观视觉的评分方法相比,重复性较高。尽管在运动评分组 1 和 4 中观察到最高的敏感性和特异性值,但自动跛行系统在所有组中均具有敏感性和特异性。在运动评分组 1 到 4 中,敏感性和特异性均高于 72%,在运动评分组 5 中,特异性为 100%,敏感性为 50%。

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