Institut for Crop Science, Biostatistics Unit, University of Hohenheim, Stuttgart, Germany.
Theor Appl Genet. 2023 Jan;136(1):21. doi: 10.1007/s00122-023-04266-5. Epub 2023 Jan 23.
VCU trials can provide unbiased estimates of post-breeding trends given that all data is used. Dropping data of genotypes tested for up to two years may result in biased post-breeding trend estimates. Increasing yield trends are seen on-farm in Germany. The increase is based on genetic trend in registered genotypes and changes in agronomic practices and climate. To estimate both genetic and non-genetic trends, historical wheat data from variety trials evaluating a varieties' value for cultivation und use (VCU) were analyzed. VCU datasets include information on varieties as well as on genotypes that were submitted by breeders and tested in trials but could not make it to registration. Therefore, the population of registered varieties (post-registration population) is a subset of the population of genotypes tested in VCU trials (post-breeding population). To assess post-registration genetic trend, historical VCU trial datasets are often reduced, e.g. to registered varieties only. This kind of drop-out mechanism is statistically informative which affects variance component estimates and which can affect trend estimates. To investigate the effect of this informative drop-out on trend estimates, a simulation study was conducted mimicking the structure of German winter wheat VCU trials. Zero post-breeding trends were simulated. Results showed unbiased estimates of post-breeding trends when using all data. When restricting data to genotypes tested for at least three years, a positive genetic trend of 0.11 dt ha year and a negative non-genetic trend (- 0.11 dt ha year) were observed. Bias increased with increasing genotype-by-year variance and disappeared with random selection. We simulated single-trait selection, whereas decisions in VCU trials consider multiple traits, so selection intensity per trait is considerably lower. Hence, our results provide an upper bound for the bias expected in practice.
VCU 试验可以提供无偏的繁殖后趋势估计,因为所有数据都被使用。丢弃最多两年测试的基因型数据可能会导致繁殖后趋势估计的偏差。德国农场的产量趋势呈上升趋势。这种增长是基于登记基因型的遗传趋势以及农业实践和气候的变化。为了估计遗传和非遗传趋势,对评估品种栽培和利用价值的品种试验(VCU)的历史小麦数据进行了分析。VCU 数据集包括品种信息以及由育种者提交并在试验中测试但未能注册的基因型信息。因此,登记品种的群体(注册后群体)是在 VCU 试验中测试的基因型群体(繁殖后群体)的一个子集。为了评估注册后的遗传趋势,历史 VCU 试验数据集通常会被简化,例如仅包括登记品种。这种淘汰机制在统计上是有信息的,会影响方差分量估计,并可能影响趋势估计。为了研究这种信息性淘汰对趋势估计的影响,进行了一项模拟德国冬小麦 VCU 试验结构的模拟研究。模拟了零繁殖后趋势。结果表明,使用所有数据可以得到无偏的繁殖后趋势估计。当将数据限制为至少测试三年的基因型时,观察到 0.11 dt ha 年的正遗传趋势和 0.11 dt ha 年的负非遗传趋势。偏差随着基因型-年份方差的增加而增加,并随着随机选择而消失。我们模拟了单个性状选择,而 VCU 试验中的决策考虑了多个性状,因此每个性状的选择强度要低得多。因此,我们的结果为实践中预期的偏差提供了上限。