Individualised automated lameness detection in dairy cows and the impact of historical window length on algorithm performance

Lameness is an important economic problem in the dairy sector, resulting in production loss and reduced welfare of dairy cows. Given the modern-day expansion of dairy herds, a tool to automatically detect lameness in real-time can therefore create added value for the farmer. The challenge in develop...

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Main Authors: D. Piette, T. Norton, V. Exadaktylos, D. Berckmans
Format: Article
Language:English
Published: Elsevier 2020-01-01
Series:Animal
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1751731119001642
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spelling doaj-21a21e6fd4294a349aae529ea159de3a2021-06-06T04:56:29ZengElsevierAnimal1751-73112020-01-01142409417Individualised automated lameness detection in dairy cows and the impact of historical window length on algorithm performanceD. Piette0T. Norton1V. Exadaktylos2D. Berckmans3M3-BIORES, Division Animal and Human Health Engineering, Department of Biosystems, KU Leuven, Kasteelpark Arenberg 30, 3001 Heverlee, Vlaams-Brabant, BelgiumM3-BIORES, Division Animal and Human Health Engineering, Department of Biosystems, KU Leuven, Kasteelpark Arenberg 30, 3001 Heverlee, Vlaams-Brabant, BelgiumBioRICS nv, Technologielaan 3, 3001 Leuven, Vlaams-Brabant, BelgiumM3-BIORES, Division Animal and Human Health Engineering, Department of Biosystems, KU Leuven, Kasteelpark Arenberg 30, 3001 Heverlee, Vlaams-Brabant, Belgium; BioRICS nv, Technologielaan 3, 3001 Leuven, Vlaams-Brabant, BelgiumLameness is an important economic problem in the dairy sector, resulting in production loss and reduced welfare of dairy cows. Given the modern-day expansion of dairy herds, a tool to automatically detect lameness in real-time can therefore create added value for the farmer. The challenge in developing camera-based tools is that one system has to work for all the animals on the farm despite each animal having its own individual lameness response. Individualising these systems based on animal-level historical data is a way to achieve accurate monitoring on farm scale. The goal of this study is to optimise a lameness monitoring algorithm based on back posture values derived from a camera for individual cows by tuning the deviation thresholds and the quantity of the historical data being used. Back posture values from a sample of 209 Holstein Friesian cows in a large herd of over 2000 cows were collected during 15 months on a commercial dairy farm in Sweden. A historical data set of back posture values was generated for each cow to calculate an individual healthy reference per cow. For a gold standard reference, manual scoring of lameness based on the Sprecher scale was carried out weekly by a single skilled observer during the final 6 weeks of data collection. Using an individual threshold, deviations from the healthy reference were identified with a specificity of 82.3%, a sensitivity of 79%, an accuracy of 82%, and a precision of 36.1% when the length of the healthy reference window was not limited. When the length of the healthy reference window was varied between 30 and 250 days, it was observed that algorithm performance was maximised with a reference window of 200 days. This paper presents a high-performing lameness detection system and demonstrates the importance of the historical window length for healthy reference calculation in order to ensure the use of meaningful historical data in deviation detection algorithms.http://www.sciencedirect.com/science/article/pii/S1751731119001642healthyreferencebackposturedata
collection DOAJ
language English
format Article
sources DOAJ
author D. Piette
T. Norton
V. Exadaktylos
D. Berckmans
spellingShingle D. Piette
T. Norton
V. Exadaktylos
D. Berckmans
Individualised automated lameness detection in dairy cows and the impact of historical window length on algorithm performance
Animal
healthy
reference
back
posture
data
author_facet D. Piette
T. Norton
V. Exadaktylos
D. Berckmans
author_sort D. Piette
title Individualised automated lameness detection in dairy cows and the impact of historical window length on algorithm performance
title_short Individualised automated lameness detection in dairy cows and the impact of historical window length on algorithm performance
title_full Individualised automated lameness detection in dairy cows and the impact of historical window length on algorithm performance
title_fullStr Individualised automated lameness detection in dairy cows and the impact of historical window length on algorithm performance
title_full_unstemmed Individualised automated lameness detection in dairy cows and the impact of historical window length on algorithm performance
title_sort individualised automated lameness detection in dairy cows and the impact of historical window length on algorithm performance
publisher Elsevier
series Animal
issn 1751-7311
publishDate 2020-01-01
description Lameness is an important economic problem in the dairy sector, resulting in production loss and reduced welfare of dairy cows. Given the modern-day expansion of dairy herds, a tool to automatically detect lameness in real-time can therefore create added value for the farmer. The challenge in developing camera-based tools is that one system has to work for all the animals on the farm despite each animal having its own individual lameness response. Individualising these systems based on animal-level historical data is a way to achieve accurate monitoring on farm scale. The goal of this study is to optimise a lameness monitoring algorithm based on back posture values derived from a camera for individual cows by tuning the deviation thresholds and the quantity of the historical data being used. Back posture values from a sample of 209 Holstein Friesian cows in a large herd of over 2000 cows were collected during 15 months on a commercial dairy farm in Sweden. A historical data set of back posture values was generated for each cow to calculate an individual healthy reference per cow. For a gold standard reference, manual scoring of lameness based on the Sprecher scale was carried out weekly by a single skilled observer during the final 6 weeks of data collection. Using an individual threshold, deviations from the healthy reference were identified with a specificity of 82.3%, a sensitivity of 79%, an accuracy of 82%, and a precision of 36.1% when the length of the healthy reference window was not limited. When the length of the healthy reference window was varied between 30 and 250 days, it was observed that algorithm performance was maximised with a reference window of 200 days. This paper presents a high-performing lameness detection system and demonstrates the importance of the historical window length for healthy reference calculation in order to ensure the use of meaningful historical data in deviation detection algorithms.
topic healthy
reference
back
posture
data
url http://www.sciencedirect.com/science/article/pii/S1751731119001642
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