Huang Che-Hsuan, Furukawa Kenji, Kusaba Nobuyuki, Baba Toshimi, Kawakami Junpei, Hagiya Koichi
Department of Life and Food Science, Obihiro University of Agriculture and Veterinary Medicine, Obihiro 080-8555, Japan; Field Center of Animal Science and Agriculture, Obihiro University of Agriculture and Veterinary Medicine, Obihiro 080-8555, Japan.
Tokachi Federation of Agricultural Cooperatives, Obihiro 080-0022, Japan.
J Dairy Sci. 2024 Jun;107(6):3738-3752. doi: 10.3168/jds.2023-24399. Epub 2024 Jan 20.
In this study, we aimed to improve current udder health genetic evaluations by addressing the limitations of monthly sampled somatic cell score (SCS) for distinguishing cows with robust innate immunity from those susceptible to chronic infections. The objectives were to (1) establish novel somatic cell traits by integrating SCS and the differential somatic cell count (DSCC), which represents the combined proportion of polymorphonuclear leukocytes and lymphocytes in somatic cells and (2) estimate genetic parameters for the new traits, including their daily heritability and genetic correlations with milk production traits and SCS, using a random regression test-day model (RRTDM). We derived 3 traits, termed ML_SCS_DSCC, SCS_4_DSCC_65_binary, and ML_SCS_DSCC_binary, by using milk loss (ML) estimates at corresponding SCS and DSCC levels, thresholds established in previous studies, and a threshold established from milk loss estimates, respectively. Data consisted of test-day records collected during January 2021 through March 2022 from 265 herds in Hokkaido, Japan. From these records, we extracted records between 7 to 305 d in milk (DIM) in the first lactation to fit the RRTDM. The model included the random effect of herd-test-day, the fixed effect of year-month, fixed lactation curves nested with calving age groups, and random regressions with Legendre polynomials of order 3 for additive genetic and permanent environmental effects. The analysis was performed using Gibbs sampling with Gibbsf90+ software. The averages (ranges) of the daily heritability estimates over lactation were 0.086 (0.075-0.095) for SCS, 0.104 (0.073-0.127) for ML_SCS_DSCC, 0.137 (0.014-0.297) for SCS_4_DSCC_65_binary, and 0.138 (0.115-0.185) for ML_SCS_DSCC_binary; the heritability curve for SCS_4_DSCC_65_binary was erratic. Genetic correlations within the trait decreased as the DIM interval widened, especially for those integrating DSCC, indicating that these traits should be analyzed using RRTDM rather than repeatability models. The averages (ranges) of genetic correlations with milk yield over lactation were 0.01 (-0.22 to 0.28) for SCS, -0.05 (-0.40 to 0.13) for ML_SCS_DSCC, -0.08 (-0.17 to 0.09) for SCS_4_DSCC_65_binary, and -0.08 (-0.22 to 0.27) for ML_SCS_DSCC_binary. Compared with SCS, the newly defined traits exhibited slightly stronger negative genetic correlations with milk yield. Especially in late lactation stages, the genetic correlation between ML_SCS_DSCC and milk yield was significantly below zero, with a posterior median of -0.40. Furthermore, the new traits showed positive correlations with SCS, having estimates varying from 0.68 to 0.85 for ML_SCS_DSCC, 0.14 to 0.47 for SCS_4_DSCC_65_binary, and 0.61 to 0.66 for ML_SCS_DSCC_binary, depending on DIM. Considering that ML_SCS_DSCC and ML_SCS_DSCC_binary have relatively high heritability (compared with SCS) and favorable genetic correlations with milk production traits and SCS, their incorporation into breeding programs appears promising. Nevertheless, their genetic relationships with (sub)clinical mastitis require further investigation.
在本研究中,我们旨在通过解决每月采样的体细胞评分(SCS)在区分具有强大先天免疫力的奶牛和易患慢性感染的奶牛方面的局限性,来改进当前的乳房健康遗传评估。目标是:(1)通过整合SCS和差异体细胞计数(DSCC)建立新的体细胞性状,DSCC代表体细胞中多形核白细胞和淋巴细胞的综合比例;(2)使用随机回归测定日模型(RRTDM)估计新性状的遗传参数,包括它们的日遗传力以及与产奶性状和SCS的遗传相关性。我们分别通过在相应的SCS和DSCC水平使用产奶损失(ML)估计值、先前研究中确定的阈值以及根据产奶损失估计值确定的阈值,得出了3个性状,分别称为ML_SCS_DSCC、SCS_4_DSCC_65_binary和ML_SCS_DSCC_binary。数据包括2021年1月至2022年3月期间从日本北海道265个牛群收集的测定日记录。从这些记录中,我们提取了头胎泌乳期7至305天的记录以拟合RRTDM。该模型包括牛群-测定日的随机效应、年月的固定效应、嵌套在产犊年龄组中的固定泌乳曲线,以及用于加性遗传和永久环境效应的3阶勒让德多项式的随机回归。使用Gibbsf90+软件通过吉布斯采样进行分析。泌乳期日遗传力估计值的平均值(范围)为:SCS为0.086(0.075 - 0.095),ML_SCS_DSCC为0.104(0.073 - 0.127),SCS_4_DSCC_65_binary为0.137(0.014 - 0.297),ML_SCS_DSCC_binary为0.138(0.115 - 0.185);SCS_4_DSCC_65_binary的遗传力曲线不稳定。性状内的遗传相关性随着泌乳间隔的延长而降低,特别是对于整合了DSCC的性状,这表明这些性状应使用RRTDM而不是重复性模型进行分析。泌乳期与产奶量的遗传相关性平均值(范围)为:SCS为0.01(-0.22至0.28),ML_SCS_DSCC为-0.05(-0.40至0.13),SCS_4_DSCC_65_binary为-0.08(-0.17至0.09),ML_SCS_DSCC_binary为-0.08(-0.22至0.27)。与SCS相比,新定义的性状与产奶量表现出略强的负遗传相关性。特别是在泌乳后期,ML_SCS_DSCC与产奶量之间的遗传相关性显著低于零,后验中位数为-0.40。此外,新性状与SCS呈正相关,根据泌乳天数,ML_SCS_DSCC的估计值在0.68至0.85之间,SCS_4_DSCC_65_binary在0.14至0.47之间,ML_SCS_DSCC_binary在0.61至0.66之间。考虑到ML_SCS_DSCC和ML_SCS_DSCC_binary具有相对较高的遗传力(与SCS相比)以及与产奶性状和SCS良好的遗传相关性,将它们纳入育种计划似乎很有前景。然而,它们与(亚)临床乳腺炎的遗传关系需要进一步研究。