Gadea J, Sellés E, Marco M A
Department of Physiology, Faculty of Veterinary Medicine, University of Murcia, Spain.
Reprod Domest Anim. 2004 Oct;39(5):303-8. doi: 10.1111/j.1439-0531.2004.00513.x.
The aim of this study was to address the question of whether differences in farrowing rate and litter size after the use of different ejaculates could be predicted using the standard semen parameters under commercial conditions. In this study, a total of 1818 sows were used to evaluate the fertility predictive value of different sperm parameters. Logistic regression analysis (univariate and multivariate) was used to correlate the dichotomous farrowing rate data to the sperm parameters. Linear regression was also used to determine the relationship between litter size and semen parameters (Pearson correlation and multiple regression). Receiver-operating curves (ROC) were used to determine the overall performance characteristics of each semen variable in the logistic regression model. Semen analysis, under commercial conditions, allows to identify ejaculates with very low fertility potential but the pre-selection of the samples, the high number of sperm per doses and the high quality of the semen used in artificial insemination (AI) programmes reduces the variability. Therefore, it is unlikely to detect fertility differences associated with seminal parameters.
本研究的目的是解决在商业条件下,能否使用标准精液参数预测使用不同射精量后产仔率和窝产仔数差异的问题。在本研究中,共使用了1818头母猪来评估不同精子参数的生育预测价值。采用逻辑回归分析(单变量和多变量)将二分法产仔率数据与精子参数相关联。线性回归也用于确定窝产仔数与精液参数之间的关系(Pearson相关性和多元回归)。采用受试者工作特征曲线(ROC)来确定逻辑回归模型中每个精液变量的整体性能特征。在商业条件下进行精液分析,可以识别出生育潜力极低的射精量,但样本的预选、每剂精子数量多以及人工授精(AI)程序中使用的精液质量高,降低了变异性。因此,不太可能检测到与精液参数相关的生育差异。