Department of Plant Breeding, Swedish University of Agricultural Sciences (SLU), P.O. Box 190, SE 23436, Lomma, Sweden.
Departamento de Matemáticas, Centro Universitario de Ciencias Exactas e Ingenierías (CUCEI), 44430, Guadalajara, México.
Sci Rep. 2023 Jun 19;13(1):9947. doi: 10.1038/s41598-023-37169-y.
It is of paramount importance in plant breeding to have methods dealing with large numbers of predictor variables and few sample observations, as well as efficient methods for dealing with high correlation in predictors and measured traits. This paper explores in terms of prediction performance the partial least squares (PLS) method under single-trait (ST) and multi-trait (MT) prediction of potato traits. The first prediction was for tested lines in tested environments under a five-fold cross-validation (5FCV) strategy and the second prediction was for tested lines in untested environments (herein denoted as leave one environment out cross validation, LOEO). There was a good performance in terms of predictions (with accuracy mostly > 0.5 for Pearson's correlation) the accuracy of 5FCV was better than LOEO. Hence, we have empirical evidence that the ST and MT PLS framework is a very valuable tool for prediction in the context of potato breeding data.
在植物育种中,拥有处理大量预测变量和少量样本观测的方法非常重要,同时还需要高效的方法来处理预测变量和测量性状之间的高度相关性。本文探讨了偏最小二乘法(PLS)在马铃薯性状的单性状(ST)和多性状(MT)预测中的预测性能。第一次预测是在五重交叉验证(5FCV)策略下对测试环境中的测试线进行的,第二次预测是对未测试环境中的测试线进行的(这里表示为留一环境外交叉验证,LOEO)。在预测方面表现出良好的性能(皮尔逊相关系数的准确性大多超过 0.5),5FCV 的准确性优于 LOEO。因此,我们有经验证据表明,ST 和 MT PLS 框架是马铃薯育种数据预测的非常有价值的工具。