Lameness detection challenges in automated milking systems addressed with partial least squares discriminant analysis

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

Lameness detection challenges in automated milking systems addressed with partial least squares discriminant analysis. / Garcia, Emanuel; Klaas, Ilka Christine; Amigo Rubio, Jose Manuel; Bro, Rasmus; Enevoldsen, Carsten.

In: Journal of Dairy Science, Vol. 97, No. 12, 2014, p. 7476-7486.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Garcia, E, Klaas, IC, Amigo Rubio, JM, Bro, R & Enevoldsen, C 2014, 'Lameness detection challenges in automated milking systems addressed with partial least squares discriminant analysis', Journal of Dairy Science, vol. 97, no. 12, pp. 7476-7486. https://doi.org/10.3168/jds.2014-7982

APA

Garcia, E., Klaas, I. C., Amigo Rubio, J. M., Bro, R., & Enevoldsen, C. (2014). Lameness detection challenges in automated milking systems addressed with partial least squares discriminant analysis. Journal of Dairy Science, 97(12), 7476-7486. https://doi.org/10.3168/jds.2014-7982

Vancouver

Garcia E, Klaas IC, Amigo Rubio JM, Bro R, Enevoldsen C. Lameness detection challenges in automated milking systems addressed with partial least squares discriminant analysis. Journal of Dairy Science. 2014;97(12):7476-7486. https://doi.org/10.3168/jds.2014-7982

Author

Garcia, Emanuel ; Klaas, Ilka Christine ; Amigo Rubio, Jose Manuel ; Bro, Rasmus ; Enevoldsen, Carsten. / Lameness detection challenges in automated milking systems addressed with partial least squares discriminant analysis. In: Journal of Dairy Science. 2014 ; Vol. 97, No. 12. pp. 7476-7486.

Bibtex

@article{5be4123762074148bd8f127752bcab57,
title = "Lameness detection challenges in automated milking systems addressed with partial least squares discriminant analysis",
abstract = "Lameness is prevalent in dairy herds. It causes decreased animal welfare and leads to higher production costs. This study explored data from an automatic milking system (AMS) to model on-farm gait scoring from a commercial farm. A total of 88 cows were gait scored once per week, for 2 5-wk periods. Eighty variables retrieved from AMS were summarized week-wise and used to predict 2 defined classes: nonlame and clinically lame cows. Variables were represented with 2 transformations of the week summarized variables, using 2-wk data blocks before gait scoring, totaling 320 variables (2 × 2 × 80). The reference gait scoring error was estimated in the first week of the study and was, on average, 15%. Two partial least squares discriminant analysis models were fitted to parity 1 and parity 2 groups, respectively, to assign the lameness class according to the predicted probability of being lame (score 3 or 4/4) or not lame (score 1/4). Both models achieved sensitivity and specificity values around 80%, both in calibration and cross-validation. At the optimum values in the receiver operating characteristic curve, the false-positive rate was 28% in the parity 1 model, whereas in the parity 2 model it was about half (16%), which makes it more suitable for practical application; the model error rates were, 23 and 19%, respectively. Based on data registered automatically from one AMS farm, we were able to discriminate nonlame and lame cows, where partial least squares discriminant analysis achieved similar performance to the reference method.",
keywords = "Cattle, lameness detection in AMS, animal welfare, pattern recognition, Partial Least Squares Discriminant Analysis",
author = "Emanuel Garcia and Klaas, {Ilka Christine} and {Amigo Rubio}, {Jose Manuel} and Rasmus Bro and Carsten Enevoldsen",
year = "2014",
doi = "10.3168/jds.2014-7982",
language = "English",
volume = "97",
pages = "7476--7486",
journal = "Journal of Dairy Science",
issn = "0022-0302",
publisher = "Elsevier",
number = "12",

}

RIS

TY - JOUR

T1 - Lameness detection challenges in automated milking systems addressed with partial least squares discriminant analysis

AU - Garcia, Emanuel

AU - Klaas, Ilka Christine

AU - Amigo Rubio, Jose Manuel

AU - Bro, Rasmus

AU - Enevoldsen, Carsten

PY - 2014

Y1 - 2014

N2 - Lameness is prevalent in dairy herds. It causes decreased animal welfare and leads to higher production costs. This study explored data from an automatic milking system (AMS) to model on-farm gait scoring from a commercial farm. A total of 88 cows were gait scored once per week, for 2 5-wk periods. Eighty variables retrieved from AMS were summarized week-wise and used to predict 2 defined classes: nonlame and clinically lame cows. Variables were represented with 2 transformations of the week summarized variables, using 2-wk data blocks before gait scoring, totaling 320 variables (2 × 2 × 80). The reference gait scoring error was estimated in the first week of the study and was, on average, 15%. Two partial least squares discriminant analysis models were fitted to parity 1 and parity 2 groups, respectively, to assign the lameness class according to the predicted probability of being lame (score 3 or 4/4) or not lame (score 1/4). Both models achieved sensitivity and specificity values around 80%, both in calibration and cross-validation. At the optimum values in the receiver operating characteristic curve, the false-positive rate was 28% in the parity 1 model, whereas in the parity 2 model it was about half (16%), which makes it more suitable for practical application; the model error rates were, 23 and 19%, respectively. Based on data registered automatically from one AMS farm, we were able to discriminate nonlame and lame cows, where partial least squares discriminant analysis achieved similar performance to the reference method.

AB - Lameness is prevalent in dairy herds. It causes decreased animal welfare and leads to higher production costs. This study explored data from an automatic milking system (AMS) to model on-farm gait scoring from a commercial farm. A total of 88 cows were gait scored once per week, for 2 5-wk periods. Eighty variables retrieved from AMS were summarized week-wise and used to predict 2 defined classes: nonlame and clinically lame cows. Variables were represented with 2 transformations of the week summarized variables, using 2-wk data blocks before gait scoring, totaling 320 variables (2 × 2 × 80). The reference gait scoring error was estimated in the first week of the study and was, on average, 15%. Two partial least squares discriminant analysis models were fitted to parity 1 and parity 2 groups, respectively, to assign the lameness class according to the predicted probability of being lame (score 3 or 4/4) or not lame (score 1/4). Both models achieved sensitivity and specificity values around 80%, both in calibration and cross-validation. At the optimum values in the receiver operating characteristic curve, the false-positive rate was 28% in the parity 1 model, whereas in the parity 2 model it was about half (16%), which makes it more suitable for practical application; the model error rates were, 23 and 19%, respectively. Based on data registered automatically from one AMS farm, we were able to discriminate nonlame and lame cows, where partial least squares discriminant analysis achieved similar performance to the reference method.

KW - Cattle

KW - lameness detection in AMS

KW - animal welfare

KW - pattern recognition

KW - Partial Least Squares Discriminant Analysis

U2 - 10.3168/jds.2014-7982

DO - 10.3168/jds.2014-7982

M3 - Journal article

C2 - 25282423

VL - 97

SP - 7476

EP - 7486

JO - Journal of Dairy Science

JF - Journal of Dairy Science

SN - 0022-0302

IS - 12

ER -

ID: 122897812