2019
DOI: 10.1016/j.compbiomed.2019.103456
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Comprehensive analysis of machine learning models for prediction of sub-clinical mastitis: Deep Learning and Gradient-Boosted Trees outperform other models

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Cited by 124 publications
(80 citation statements)
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“…With the advent of increased "big data" within farm animal medicine, the potential to translate this into "smart data" is increasing 26 ; making full use of data already being collected. Machine learning has been applied to epidemiological classification problems within cattle medicine, such as the prediction of bovine viral diarrhoea virus exposure at herd level 27 , and the distribution of exposure of herds to liver fluke 28 , and has recently been applied in the investigation of mastitis pathogen (Streptococcus uberis) transmission patterns in cattle 29 as well as in the diagnosis of both subclinical 30,31 and clinical 32 mastitis at an individual animal level. Whilst machine learning has been described in both medical and veterinary fields and has been explored in the individual diagnosis of mastitis, it has not yet been applied to accurately replicate a specialist clinical diagnosis for a population level diagnosis, in this case the herd level diagnosis of bovine mastitis.…”
mentioning
confidence: 99%
“…With the advent of increased "big data" within farm animal medicine, the potential to translate this into "smart data" is increasing 26 ; making full use of data already being collected. Machine learning has been applied to epidemiological classification problems within cattle medicine, such as the prediction of bovine viral diarrhoea virus exposure at herd level 27 , and the distribution of exposure of herds to liver fluke 28 , and has recently been applied in the investigation of mastitis pathogen (Streptococcus uberis) transmission patterns in cattle 29 as well as in the diagnosis of both subclinical 30,31 and clinical 32 mastitis at an individual animal level. Whilst machine learning has been described in both medical and veterinary fields and has been explored in the individual diagnosis of mastitis, it has not yet been applied to accurately replicate a specialist clinical diagnosis for a population level diagnosis, in this case the herd level diagnosis of bovine mastitis.…”
mentioning
confidence: 99%
“…Most commonly, the datasets contain highly diverse features in sizes, units, and range. Since most of the machine learning models use Euclidean distance, it can affect the performance of the models [43,44]. The range of ICU dataset points used in this paper is widely varied; therefore, feature scaling is necessary to suppress the mentioned effects on the performance of models.…”
Section: ) Feature Scalingmentioning
confidence: 99%
“…Machine learning and big data analytics have the potential to improve welfare and productivity in dairy cattle. They can be used to monitor and predict lameness and mastitis in dairy cattle, huge welfare issues that can have severe negative consequences on milk production (Ebrahimi et al, 2019;Taneja et al, 2020;Warner et al, 2020).…”
Section: Big Datamentioning
confidence: 99%