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在植物育种中,通过基于模拟的优化后代分配策略,利用人工智能辅助选择交配组合。

AI-assisted selection of mating pairs through simulation-based optimized progeny allocation strategies in plant breeding.

作者信息

Hamazaki Kosuke, Iwata Hiroyoshi

机构信息

Laboratory of Biometry and Bioinformatics, Department of Agricultural and Environmental Biology, Graduate School of Agricultural and Life Sciences, The University of Tokyo, Tokyo, Japan.

出版信息

Front Plant Sci. 2024 Mar 28;15:1361894. doi: 10.3389/fpls.2024.1361894. eCollection 2024.

Abstract

Emerging technologies such as genomic selection have been applied to modern plant and animal breeding to increase the speed and efficiency of variety release. However, breeding requires decisions regarding parent selection and mating pairs, which significantly impact the ultimate genetic gain of a breeding scheme. The selection of appropriate parents and mating pairs to increase genetic gain while maintaining genetic diversity is still an urgent need that breeders are facing. This study aimed to determine the best progeny allocation strategies by combining future-oriented simulations and numerical black-box optimization for an improved selection of parents and mating pairs. In this study, we focused on optimizing the allocation of progenies, and the breeding process was regarded as a black-box function whose input is a set of parameters related to the progeny allocation strategies and whose output is the ultimate genetic gain of breeding schemes. The allocation of progenies to each mating pair was parameterized according to a softmax function, whose input is a weighted sum of multiple features for the allocation, including expected genetic variance of progenies and selection criteria such as different types of breeding values, to balance genetic gains and genetic diversity optimally. The weighting parameters were then optimized by the black-box optimization algorithm called StoSOO via future-oriented breeding simulations. Simulation studies to evaluate the potential of our novel method revealed that the breeding strategy based on optimized weights attained almost 10% higher genetic gain than that with an equal allocation of progenies to all mating pairs within just four generations. Among the optimized strategies, those considering the expected genetic variance of progenies could maintain the genetic diversity throughout the breeding process, leading to a higher ultimate genetic gain than those without considering it. These results suggest that our novel method can significantly improve the speed and efficiency of variety development through optimized decisions regarding the selection of parents and mating pairs. In addition, by changing simulation settings, our future-oriented optimization framework for progeny allocation strategies can be easily implemented into general breeding schemes, contributing to accelerated plant and animal breeding with high efficiency.

摘要

基因组选择等新兴技术已应用于现代动植物育种,以提高品种发布的速度和效率。然而,育种需要对亲本选择和交配组合做出决策,这对育种计划的最终遗传增益有重大影响。选择合适的亲本和交配组合以增加遗传增益同时保持遗传多样性,仍然是育种者面临的迫切需求。本研究旨在通过结合面向未来的模拟和数值黑箱优化来确定最佳后代分配策略,以改进亲本和交配组合的选择。在本研究中,我们专注于优化后代的分配,育种过程被视为一个黑箱函数,其输入是一组与后代分配策略相关的参数,输出是育种计划的最终遗传增益。根据softmax函数对每个交配组合的后代分配进行参数化,其输入是分配的多个特征的加权和,包括后代的预期遗传方差和不同类型育种值等选择标准,以最优地平衡遗传增益和遗传多样性。然后通过称为StoSOO的黑箱优化算法,通过面向未来的育种模拟对加权参数进行优化。评估我们新方法潜力的模拟研究表明,基于优化权重的育种策略在短短四代内比将后代平均分配到所有交配组合的策略获得的遗传增益高出近10%。在优化策略中,考虑后代预期遗传方差的策略在整个育种过程中能够保持遗传多样性,从而比不考虑的策略获得更高的最终遗传增益。这些结果表明,我们的新方法可以通过优化亲本和交配组合的选择决策显著提高品种培育的速度和效率。此外,通过改变模拟设置,我们面向未来的后代分配策略优化框架可以轻松应用于一般育种计划,有助于高效加速动植物育种。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1b75/11138345/6efa8946726b/fpls-15-1361894-g001.jpg

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