Abstract

BackgroundAlthough visual locomotion scoring is inexpensive and simplistic, it is also time consuming and subjective. Automated lameness detection methods have been developed to replace the visual locomotion scoring and aid in early and accurate detection. Several types of sensors are measuring traits such as activity, lying behavior or temperature. Previous studies on automatic lameness detection have been unable to achieve high accuracy in combination with practical implementation in a on farm commercial setting. The objective of our research was to develop a prediction model for lameness in dairy cattle using a combination of remote sensor technology and other animal records that will translate sensor data into easy to interpret classified locomotion information for the farmer. During an 11-month period, data from 164 Holstein-Friesian dairy cows were gathered, housed at an Irish research farm. A neck-mounted accelerometer was used to gather behavioral metrics, additional automatically recorded data consisted of milk production and live weight. Locomotion scoring data were manually recorded, using a one-to-five scale (1 = non-lame, 5 = severely lame). Locomotion scores where then used to label the cows as sound (locomotion score 1) or unsound (locomotion score ≥ 2). Four supervised classification models, using a gradient boosted decision tree machine learning algorithm, were constructed to investigate whether cows could be classified as sound or unsound. Data available for model building included behavioral metrics, milk production and animal characteristics.ResultsThe resulting models were constructed using various combinations of the data sources. The accuracy of the models was then compared using confusion matrices, receiver-operator characteristic curves and calibration plots. The model which achieved the highest performance according to the accuracy measures, was the model combining all the available data, resulting in an area under the curve of 85% and a sensitivity and specificity of 78%.ConclusionThese results show that 85% of this model’s predictions were correct in identifying cows as sound or unsound, showing that the use of a neck-mounted accelerometer, in combination with production and other animal data, has potential to replace visual locomotion scoring as lameness detection method in dairy cows.

Highlights

  • With the ongoing growth of the world population and the abolition of the European Union (EU) milk quotas in 2015, opportunities for the expansion of the dairy sector persist

  • The objectives of this study were to use machine learning methods to develop a prediction model for lameness in dairy cattle, using commercially available remote sensor technology in combination with routinely available animal data translated into classified lameness predictions, useful for the farmer to replace visual locomotion scoring for early lameness detection

  • This study showed that inclusion of activity data alone into classification models for lameness detection achieved lower accuracy compared to models that included a combination of activity data, production data, lactation number and Days in milk (DIM) as data inputs, or a model that only included lactation and DIM

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Summary

Introduction

With the ongoing growth of the world population and the abolition of the EU milk quotas in 2015, opportunities for the expansion of the dairy sector persist. Efficiency, and thereby the milk production per cow, has been increased over the past decades by selective breeding, increased milking frequency and feeding [18] This intensification, together with specialization, has had implications on animal welfare. Lameness is an expression of pain, which can have several causes including trauma, infectious diseases and disfunction of one or more hooves or limbs [13, 52, 67] This diverse range of disorders and their multifactorial etiology, make lameness difficult to prevent and treat, resulting in potentially a major welfare issue on farms [13, 48]. The objective of our research was to develop a prediction model for lameness in dairy cattle using a combination of remote sensor technology and other animal records that will translate sensor data into easy to interpret classified locomotion information for the farmer. Data available for model building included behavioral metrics, milk production and animal characteristics

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