A Bayesian threshold-normal mixture model for analysis of a continuous mastitis-related trait

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Abstract

Mastitis is associated with elevated somatic cell count in milk, inducing a positive correlation between milk somatic cell score (SCS) and the absence or presence of the disease. In most countries, selection against mastitis has focused on selecting parents with genetic evaluations that have low SCS. Univariate or multivariate mixed linear models have been used for statistical description of SCS. However, an observation of SCS can be regarded as drawn from a 2- (or more) component mixture defined by the (usually) unknown health status of a cow at the test-day on which SCS is recorded. A hierarchical 2-component mixture model was developed, assuming that the health status affecting the recorded test-day SCS is completely specified by an underlying liability variable. Based on the observed SCS, inferences can be drawn about disease status and parameters of both SCS and liability to mastitis. The prior probability of putative mastitis was allowed to vary between subgroups (e.g., herds, families), by specifying fixed and random effects affecting both SCS and liability. Using simulation, it was found that a Bayesian model fitted to the data yielded parameter estimates close to their true values. The model provides selection criteria that are more appealing than selection for lower SCS. The proposed model can be extended to handle a wide range of problems related to genetic analyses of mixture traits. © American Dairy Science Association, 2005.

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Ødegård, J., Madsen, P., Gianola, D., Klemetsdal, G., Jensen, J., Heringstad, B., & Korsgaard, I. R. (2005). A Bayesian threshold-normal mixture model for analysis of a continuous mastitis-related trait. Journal of Dairy Science, 88(7), 2652–2659. https://doi.org/10.3168/jds.S0022-0302(05)72942-8

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