Literature DB >> 20655431

Detection of clinical mastitis with sensor data from automatic milking systems is improved by using decision-tree induction.

C Kamphuis1, H Mollenhorst, J A P Heesterbeek, H Hogeveen.   

Abstract

The objective was to develop and validate a clinical mastitis (CM) detection model by means of decision-tree induction. For farmers milking with an automatic milking system (AMS), it is desirable that the detection model has a high level of sensitivity (Se), especially for more severe cases of CM, at a very high specificity (Sp). In addition, an alert for CM should be generated preferably at the quarter milking (QM) at which the CM infection is visible for the first time. Data were collected from 9 Dutch dairy herds milking automatically during a 2.5-yr period. Data included sensor data (electrical conductivity, color, and yield) at the QM level and visual observations of quarters with CM recorded by the farmers. Visual observations of quarters with CM were combined with sensor data of the most recent automatic milking recorded for that same quarter, within a 24-h time window before the visual assessment time. Sensor data of 3.5 million QM were collected, of which 348 QM were combined with a CM observation. Data were divided into a training set, including two-thirds of all data, and a test set. Cows in the training set were not included in the test set and vice versa. A decision-tree model was trained using only clear examples of healthy (n=24,717) or diseased (n=243) QM. The model was tested on 105 QM with CM and a random sample of 50,000 QM without CM. While keeping the Se at a level comparable to that of models currently used by AMS, the decision-tree model was able to decrease the number of false-positive alerts by more than 50%. At an Sp of 99%, 40% of the CM cases were detected. Sixty-four percent of the severe CM cases were detected and only 12.5% of the CM that were scored as watery milk. The Se increased considerably from 40% to 66.7% when the time window increased from less than 24h before the CM observation, to a time window from 24h before to 24h after the CM observation. Even at very wide time windows, however, it was impossible to reach an Se of 100%. This indicates the inability to detect all CM cases based on sensor data alone. Sensitivity levels varied largely when the decision tree was validated per herd. This trend was confirmed when decision trees were trained using data from 8 herds and tested on data from the ninth herd. This indicates that when using the decision tree as a generic CM detection model in practice, some herds will continue having difficulties in detecting CM using mastitis alert lists, whereas others will perform well. Copyright (c) 2010 American Dairy Science Association. Published by Elsevier Inc. All rights reserved.

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Year:  2010        PMID: 20655431     DOI: 10.3168/jds.2010-3228

Source DB:  PubMed          Journal:  J Dairy Sci        ISSN: 0022-0302            Impact factor:   4.034


  5 in total

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Journal:  Animals (Basel)       Date:  2022-05-12       Impact factor: 3.231

Review 2.  Sensors and clinical mastitis--the quest for the perfect alert.

Authors:  Henk Hogeveen; Claudia Kamphuis; Wilma Steeneveld; Herman Mollenhorst
Journal:  Sensors (Basel)       Date:  2010-08-27       Impact factor: 3.576

Review 3.  Integrating novel data streams to support biosurveillance in commercial livestock production systems in developed countries: challenges and opportunities.

Authors:  M Carolyn Gates; Lindsey K Holmstrom; Keith E Biggers; Tammy R Beckham
Journal:  Front Public Health       Date:  2015-04-28

4.  Prediction of lameness using automatically recorded activity, behavior and production data in post-parturient Irish dairy cows.

Authors:  G M Borghart; L E O'Grady; J R Somers
Journal:  Ir Vet J       Date:  2021-02-06       Impact factor: 2.146

5.  Sensitivity and Specificity for the Detection of Clinical Mastitis by Automatic Milking Systems in Bavarian Dairy Herds.

Authors:  Mathias Bausewein; Rolf Mansfeld; Marcus G Doherr; Jan Harms; Ulrike S Sorge
Journal:  Animals (Basel)       Date:  2022-08-19       Impact factor: 3.231

  5 in total

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