Spanner E A, de Graaf S P, Rickard J P
The University of Sydney, Faculty of Science, School of Life and Environmental Sciences, New South Wales, 2006, Australia.
The University of Sydney, Faculty of Science, School of Life and Environmental Sciences, New South Wales, 2006, Australia.
Theriogenology. 2025 Nov;247:117575. doi: 10.1016/j.theriogenology.2025.117575. Epub 2025 Jul 11.
Deciphering a ram or ewe's reproductive potential is crucial to ensure high reproductive performance and maximise production outcomes. This study validates the accuracy of an ovine fertility model created to predict the likelihood of pregnancy occurring following laparoscopic artificial insemination (AI) and proposes in vitro semen standards to improve pregnancy outcomes. Semen from Merino sires (N = 26) was inseminated into synchronised Merino ewes (N = 1269) across 3 breeding seasons (2021-2023). Uterine tone and intra-abdominal fat of ewes were scored at AI, while the freezing concentration, abnormal sperm, acrosome viability (6h) and CASA motility and velocity traits (0h) of semen inseminated was assessed post-thaw (6h; 37 °C). Pregnancy predictions were compared with ultrasound-confirmed pregnancies ∼55 days post-AI, using discrimination and calibration tests to correctly assess its ability to classify pregnant and non-pregnant ewes. The model demonstrated high accuracy (77 %), precision (96 %) and recall (76 %) but lower specificity (33 %). It recorded an F1-score of 0.85, with an Area Under the Curve (AUC) of 0.62. There was no statistical difference between predicted and actual pregnancy results (P = 0.184) despite an error value of 26 %. A cutting point split the data for each in vitro semen predictor and calculated the average pregnancy rate above and below this point. The cutting point with the greatest difference between pregnancy rates was chosen as the semen threshold. When entered into the model, these thresholds returned a cumulative pregnancy probability of 64.3 %. These standards could be used to screen semen before AI, reducing the variability of laparoscopic AI programs for the industry.
解读公羊或母羊的繁殖潜力对于确保高繁殖性能和最大化生产成果至关重要。本研究验证了一个绵羊生育力模型的准确性,该模型用于预测腹腔镜人工授精(AI)后怀孕的可能性,并提出了体外精液标准以改善怀孕结果。在3个繁殖季节(2021 - 2023年),将美利奴种公羊(N = 26)的精液授精到同步发情的美利奴母羊(N = 1269)体内。在人工授精时对母羊的子宫张力和腹内脂肪进行评分,同时在解冻后(6小时;37°C)评估所授精液的冷冻浓度、异常精子、顶体活力(6小时)以及计算机辅助精子分析(CASA)运动性和速度特征(0小时)。使用判别和校准测试将怀孕预测结果与人工授精后约55天经超声确认的怀孕情况进行比较,以正确评估其区分怀孕和未怀孕母羊的能力。该模型显示出较高的准确率(77%)、精确率(96%)和召回率(76%),但特异性较低(33%)。其F1分数为0.85,曲线下面积(AUC)为0.62。尽管误差值为26%,但预测和实际怀孕结果之间无统计学差异(P = 0.184)。一个切点将每个体外精液预测指标的数据进行划分,并计算该点上下的平均怀孕率。选择怀孕率差异最大的切点作为精液阈值。将这些阈值输入模型后,得到的累积怀孕概率为64.3%。这些标准可用于在人工授精前筛选精液,减少该行业腹腔镜人工授精程序的变异性。