Hadley G L, Wolf C A, Harsh S B
Department of Agricultural Economics, University of Wisconsin-River Falls, River Falls 54022, USA.
J Dairy Sci. 2006 Jun;89(6):2286-96. doi: 10.3168/jds.S0022-0302(06)72300-1.
Culling patterns in the Upper Midwest and Northeast regions were examined from Dairy Herd Improvement records from 1993 through 1999. There were 7,087,699 individual cow lactation observations of which 1,458,936 were complete. A probit regression model was used to determine how individual cow and herd characteristics affected the likelihood of a cow being culled. The model predicted whether individual cows were culled each month. With a combination of observable cow and herd characteristics, as well as variables to capture state, year, and farm effects, the model was able to explain, with a 79.5 and 79.9% accuracy rate, individual cow cull decisions in the Upper Midwest and Northeast regions, respectively. Summer (- 11.5% in the Upper Midwest; - 6.4% in the Northeast) and fall (- 18.7% in the Upper Midwest; - 7.9% in the Northeast) calving vs. spring calving, higher than average milk production (- 1.7% per hundredweight in the Upper Midwest; - 0.5% in the Northeast), higher than average protein content (- 0.2% per additional percentage milk protein in the Upper Midwest; - 0.1% in the Northeast), higher milk production persistency (- 2.1% per additional percent persistent in the Upper Midwest; - 1.8% in the Northeast), and expansion (during the early years following the expansion) were associated with a reduced likelihood of a cow being culled. Lower than average fat content (0.04% per additional percentage butterfat in the Upper Midwest; 0.02% in the Northeast), and higher than average somatic cell count (8.8% for each unit increase in somatic cell count score in the Upper Midwest; 7.8% in the Northeast) were associated with an increased likelihood of a cow being culled. The study results are useful in describing patterns of culling and relating them to cow, herd, geographic, and time variables and can act as a benchmark for producers.
利用1993年至1999年奶牛群改良记录,对上中西部和东北部地区的淘汰模式进行了研究。共有7087699条个体奶牛泌乳观测记录,其中1458936条完整。采用概率回归模型来确定个体奶牛和牛群特征如何影响奶牛被淘汰的可能性。该模型预测每头奶牛每月是否会被淘汰。结合可观测的奶牛和牛群特征以及用于捕捉州、年份和农场效应的变量,该模型能够分别以上中西部地区79.5%和东北部地区79.9%的准确率解释个体奶牛的淘汰决策。与春季产犊相比,夏季(上中西部地区为-11.5%;东北部地区为-6.4%)和秋季(上中西部地区为-18.7%;东北部地区为-7.9%)产犊、高于平均产奶量(上中西部地区每百磅产奶量为-1.7%;东北部地区为-0.5%)、高于平均蛋白质含量(上中西部地区每增加一个百分点的乳蛋白为-0.2%;东北部地区为-0.1%)、更高的产奶持续性(上中西部地区每增加一个百分点的持续性为-2.1%;东北部地区为-1.8%)以及扩张(在扩张后的早期阶段)与奶牛被淘汰的可能性降低相关。低于平均脂肪含量(上中西部地区每增加一个百分点的乳脂为0.04%;东北部地区为0.02%)以及高于平均体细胞计数(上中西部地区体细胞计数得分每增加一个单位为8.8%;东北部地区为7.8%)与奶牛被淘汰的可能性增加相关。研究结果有助于描述淘汰模式,并将其与奶牛、牛群、地理和时间变量联系起来,可为生产者提供一个基准。