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奶牛体细胞评分、产奶量及乳成分的区间和复合区间定位

Interval and composite interval mapping of somatic cell score, yield, and components of milk in dairy cattle.

作者信息

Rodriguez-Zas S L, Southey B R, Heyen D W, Lewin H A

机构信息

Department of Animal Sciences, University of Illinois, Urbana 61801, USA.

出版信息

J Dairy Sci. 2002 Nov;85(11):3081-91. doi: 10.3168/jds.S0022-0302(02)74395-6.

Abstract

Single-marker, interval-mapping (IM) and composite interval mapping (CIM) were used to detect quantitative trait loci (QTL) controlling milk, fat and protein yields, and somatic cell score (SCS). A granddaughter design was used to combine molecular genetic information with predicted transmitting abilities (PTA) and estimated daughter yield deviations (DYD) from eight Dairy Bull DNA Repository Holstein families. Models that included and excluded weights accounting for the uncertainty of the response variable were evaluated in each trait, family and phenotype (DYD and PTA) combination. The genotypic information consisted of 174 microsatellite markers along 29 Bos taurus autosomes. The average number of informative markers per autosome was three and the number of informative sons per family and marker varied between 21 and 173. Within-family results from the least squares single-marker analyses were used in expectation-maximization likelihood IM and CIM implemented with QTL Cartographer. Different CIM model specifications, offering complementary control on the background QTL outside the interval under study, were evaluated. Permutation techniques were used to calculate the genome-wide threshold test statistic values based on 1,000 samples. Results from the DYD and PTA analyses were highly consistent across traits and families. The minor differences in the estimates from the models that accounted for or ignored the uncertainty of the DYD (variance) and PTA (inverse of reliability) may be associated to the elevated and consistent precision of the DYD and PTA among sons. The CIM model best supported by the data had 10 markers controlling for background effects. On autosome (BTA) three, a QTL at 32 cM influencing protein yield was located in family five and a QTL at 74 cM for fat yield was located in family eight. Two map positions associated with SCS were detected on BTA 21, one at 33 cM in family one and the other at 84 cM in family three. A QTL for protein yield was detected between 26 and 36 cM on BTA six, family six, and a QTL for milk yield was detected at 116 cM on BTA seven in family three. The IM and CIM approaches detected a QTL at 3 cM on BTA 14 influencing fat yield in family four. Two map positions on BTA 29 were associated with significant variation of milk (0 cM) and fat yield (14 cM) in family seven. These results suggest the presence of one QTL with pleiotropic effects on multiple traits or multiple QTL within the marker interval. Findings from this study could be used in subsequent fine-mapping work and applied to marker-assisted selection of dairy production and health traits.

摘要

采用单标记、区间作图(IM)和复合区间作图(CIM)来检测控制牛奶、脂肪和蛋白质产量以及体细胞评分(SCS)的数量性状基因座(QTL)。利用孙女设计将分子遗传信息与来自八个奶牛DNA库荷斯坦家族的预测传递能力(PTA)和估计女儿产量偏差(DYD)相结合。在每个性状、家族和表型(DYD和PTA)组合中,评估了包含和排除考虑响应变量不确定性权重的模型。基因型信息由沿29条牛常染色体的174个微卫星标记组成。每条常染色体上信息性标记的平均数量为3个,每个家族和标记的信息性儿子数量在21至173之间变化。最小二乘单标记分析的家系内结果用于通过QTL Cartographer实现的期望最大化似然IM和CIM。评估了不同的CIM模型规格,这些规格对研究区间外的背景QTL提供了互补控制。采用置换技术基于1000个样本计算全基因组阈值检验统计量值。DYD和PTA分析的结果在性状和家族间高度一致。考虑或忽略DYD(方差)和PTA(可靠性倒数)不确定性的模型估计中的微小差异可能与儿子中DYD和PTA的高精度和一致性有关。数据最支持的CIM模型有10个控制背景效应的标记。在常染色体(BTA)3上,位于5号家族的一个影响蛋白质产量的QTL位于32 cM处,位于8号家族的一个影响脂肪产量的QTL位于74 cM处。在BTA 21上检测到两个与SCS相关的图谱位置,一个在1号家族的33 cM处,另一个在3号家族的84 cM处。在6号家族的BTA 6上26至36 cM之间检测到一个影响蛋白质产量的QTL,在3号家族的BTA 7上116 cM处检测到一个影响牛奶产量的QTL。IM和CIM方法在4号家族的BTA 14上3 cM处检测到一个影响脂肪产量的QTL。在7号家族中,BTA 29上的两个图谱位置与牛奶(0 cM)和脂肪产量(14 cM)的显著变异相关。这些结果表明在标记区间内存在一个对多个性状具有多效性的QTL或多个QTL。本研究的结果可用于后续的精细定位工作,并应用于奶牛生产和健康性状的标记辅助选择。

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