Department of Horticulture, University of Wisconsin-Madison, Madison, WI, 53706, USA.
Theor Appl Genet. 2023 Mar 22;136(4):65. doi: 10.1007/s00122-023-04298-x.
R/StageWise enables fully efficient, two-stage analysis of multi-environment, multi-trait datasets for genomic selection, including support for dominance heterosis and polyploidy. Plant breeders interested in genomic selection often face challenges to fully utilizing multi-trait, multi-environment datasets. R package StageWise was developed to go beyond the capabilities of most specialized software for genomic prediction, without requiring the programming skills needed for more general-purpose software for mixed models. As the name suggests, one of the core features is a fully efficient, two-stage analysis for multiple environments, in which the full variance-covariance matrix of the Stage 1 genotype means is used in Stage 2. Another feature is directional dominance, including for polyploids, to account for inbreeding depression in outbred crops. StageWise enables selection with multi-trait indices, including restricted indices with one or more traits constrained to have zero response. For a potato dataset with 943 genotypes evaluated over 6 years, including the Stage 1 errors in Stage 2 reduced the Akaike Information Criterion (AIC) by 29, 67, and 104 for maturity, yield, and fry color, respectively. The proportion of variation explained by heterosis was largest for yield but still only 0.03, likely because of limited variation for the genomic inbreeding coefficient. Due to the large additive genetic correlation (0.57) between yield and maturity, naïve selection on an index combining yield and fry color led to an undesirable response for later maturity. The restricted index coefficients to maximize genetic merit without delaying maturity were identified. The software and three vignettes are available at https://github.com/jendelman/StageWise .
R/StageWise 支持基因组选择的多环境、多性状数据的完全有效、两阶段分析,包括对显性杂种优势和多倍体的支持。对基因组选择感兴趣的植物育种者经常面临充分利用多性状、多环境数据集的挑战。R 包 StageWise 的开发超越了大多数基因组预测专用软件的功能,而无需具备用于混合模型的更通用软件所需的编程技能。顾名思义,其核心功能之一是针对多个环境的完全有效、两阶段分析,其中阶段 1 基因型均值的完整方差协方差矩阵用于阶段 2。另一个功能是方向显性,包括多倍体,以解释异交作物的自交衰退。StageWise 支持使用多性状指数进行选择,包括具有一个或多个性状响应约束为零的受限指数。对于一个马铃薯数据集,其中 943 个基因型在 6 年内进行评估,包括在第 2 阶段中包括第 1 阶段误差在内,成熟度、产量和薯条颜色的 Akaike 信息准则(AIC)分别降低了 29、67 和 104。杂种优势解释的变异比例最大的是产量,但仍仅为 0.03,可能是由于基因组近交系数的变异有限。由于产量和成熟度之间的加性遗传相关性(0.57)较大,对产量和薯条颜色结合的指数进行盲目选择会导致成熟度延迟的不良响应。确定了最大化遗传优势而不延迟成熟度的受限指数系数。软件和三个简介可在 https://github.com/jendelman/StageWise 获得。