首页> 外文期刊>Animal Reproduction Science >Use of a stochastic simulation model to assess effects of diagnostic specificity of systems for detecting ovulating cows on herd reproductive performance in year-round calving dairy herds.
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Use of a stochastic simulation model to assess effects of diagnostic specificity of systems for detecting ovulating cows on herd reproductive performance in year-round calving dairy herds.

机译:使用随机模拟模型评估检测排卵母牛的系统的诊断特异性对全年产犊的牛群的繁殖性能的影响。

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Many automated systems for detecting ovulating cows in dairy herds require decisions when designing algorithms and selecting cutpoints that require a compromise between diagnostic sensitivity (probability of classifying an ovulating cow as ovulating) and diagnostic specificity [daily probability of not classifying a non-ovulating cow (whether open or pregnant but not yet diagnosed as pregnant) as ovulating]. Because sensitivity must be moderately high, this compromise often results in specificity below 100%. However, little is understood about the effects of reduced specificity on herd reproductive performance. A stochastic model was developed that simulates the reproductive process in a year-round calving dairy herd to assess effects of changes in specificity at various combinations of sensitivity and conception rate (proportion of inseminations resulting in pregnancy) on herd reproductive measures of economic importance. The model included effects of inseminations in pregnant cows on probability of conceptus loss, and variation in the interval from conceptus loss to next ovulation (i.e. the next opportunity to reconceive). Using moderate assumptions of the probability of conceptus loss following insemination in pregnant cows, reductions in specificity from 99.9 to 99.5, 99, 98 and 97%, resulted in decreases in mean 100 day in-calf rate (100DICR; the proportion of cows with a positive pregnancy diagnosis to an insemination on or before 100 days since calving) of 1.2, 3.3, 6.8 and 9.7 percentage points, respectively. These same reductions in Sp resulted in increases in mean 200 day not in-calf rate (200DNICR; the proportion of cows with negative pregnancy diagnosis results to all inseminations on or before 200 days since calving) of 0.5, 1.6, 3.6 and 6 percentage points, and increases in mean number of inseminations per calving (Insems/Calving; the total number of inseminations in the herd divided by the number of cows that recalved) by factors of 1.2, 1.5, 2.1 and 2.8, respectively. The relationship between specificity for detecting ovulating cows and the 100DICR, 200DNICR and Insems/Calving was sensitive to changes in the probability of conceptus loss following inseminations in pregnant cows. However, even with conservative assumptions, specificity still had important effects on 100DICR and 200DNICR. Varying parameters for the interval from conceptus loss to next ovulation had little effect on the relationships between specificity and these measures. These results demonstrate that specificity is an important consideration when designing algorithms and selecting cutpoints in automated systems for detecting ovulating cows. Low specificity not only increases Insems/Calving but also prolongs intervals from calving to the establishment of a sustained pregnancy resulting in substantial reductions in 100DICR and increases in 200DNICR. This model could assist when determining economically optimal combinations of ovulation detection sensitivity and specificity when developing automated systems for selecting ovulating cows in commercial herds.Digital Object Identifier http://dx.doi.org/10.1016/j.anireprosci.2010.08.009
机译:在设计算法和选择切点时,许多用于检测奶牛群中排卵牛的自动化系统都需要做出决策,这些断点需要在诊断敏感性(将排卵牛分类为排卵的可能性)和诊断特异性(每日不对非排卵牛进行分类的概率( (无论是开放的还是怀孕的,但尚未诊断为怀孕)。由于灵敏度必须适度较高,因此这种折衷通常会导致特异性低于100%。然而,人们对特异性降低对牛群繁殖性能的影响了解甚少。建立了一个随机模型,该模型模拟了一个全年产犊牛群的繁殖过程,以评估敏感性和受孕率(受孕导致的授精比例)的各种组合对特异性变化的影响对具有重要经济意义的成年繁殖指标的影响。该模型包括受精母牛受精对受精的可能性的影响以及从受精的损失到下一次排卵的时间间隔的变化(即下一次重新受孕的机会)。使用对怀孕的母牛授精后失去概念的可能性的中等假设,特异性从99.9%降低到99.5%,99%,98%和97%,导致平均100天犊牛率降低(100DICR;体重降低的母牛的比例产后100天或之前授精的阳性妊娠诊断)分别为1.2、3.3、6.8和9.7个百分点。 Sp的这些相同降低导致平均200天非犊牛率(200DNICR;产后200天或之前产后妊娠诊断结果为阴性的母牛与所有授精的比例)增加了0.5、1.6、3.6和6个百分点,并且每胎产犊的平均受精次数(同胎次/产犊数;畜群中的受精总数除以再产犊的母牛数)分别为1.2、1.5、2.1和2.8倍。检测排卵母牛的特异性与100DICR,200DNICR和Insems / Calving之间的关系对受精母牛受精后受孕率的改变很敏感。但是,即使有保守的假设,特异性仍对100DICR和200DNICR具有重要影响。从概念丧失到下一次排卵的间隔参数的变化对特异性与这些指标之间的关系影响很小。这些结果表明,在自动化系统中设计算法和选择切点以检测排卵牛时,特异性是重要的考虑因素。低特异性不仅会增加Insems /产犊的时间,而且会延长从产犊到建立持续妊娠的间隔,从而导致100DICR的显着减少和200DNICR的增加。在开发用于选择商业猪群中排卵牛的自动化系统时,该模型可以在确定排卵检测灵敏度和特异性的经济最佳组合时提供帮助。数字对象标识符http://dx.doi.org/10.1016/j.anireprosci.2010.08.009

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