Multifactor Analysis of a Genome-Wide Selection System in Brassica napus L
Wanqing Tan, Zhiyuan Wang, Jia Wang, Sayedehsaba Bilgrami, Liezhao Liu

TL;DR
This study evaluates factors affecting genome-wide selection in Brassica napus, identifying optimal models and marker strategies for improving breeding efficiency.
Contribution
The study establishes a genome-wide selection system for Brassica napus with insights into model, marker, and population design.
Findings
The RF model showed the highest prediction accuracy for most traits in Brassica napus.
Using 5000 markers and 400 samples or a training population three times the breeding population size achieved optimal performance.
Trait-specific SNPs with p-values less than 0.1 significantly improved prediction accuracy.
Abstract
Brassica napus is one of the most important oil crops. Rapid breeding of excellent genotypes is an important aspect of breeding. As a cutting-edge and reliable technique, genome-wide selection (GS) has been widely used and is influenced by many factors. In this study, ten phenotypic traits of two populations were studied, including oleic acid (C18:1), linoleic acid (C18:2), linolenic acid (C18:3), glucosinolate (GSL), seed oil content (SOC), and seed protein content (SPC), silique length (SL), days to initial flowering (DIF), days to final flowering (DFF), and the flowering period (FP). The effects of different GS models, marker densities, population designs, and the inclusion of nonadditive effects, trait-specific SNPs, and deleterious mutations on GS were evaluated. The results highlight the superior prediction accuracy (PA) under the RF model. Among the ten traits, the PA of…
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Taxonomy
TopicsMicrobial Metabolic Engineering and Bioproduction
