Leveraging soil mapping and machine learning to improve spatial adjustments in plant breeding trials

IF 2 3区 农林科学 Q2 AGRONOMY
Crop Science Pub Date : 2024-09-11 DOI:10.1002/csc2.21336
Matthew E. Carroll, Luis G. Riera, Bradley A. Miller, Philip M. Dixon, Baskar Ganapathysubramanian, Soumik Sarkar, Asheesh K. Singh
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引用次数: 0

Abstract

Spatial adjustments are used to improve the estimate of plot seed yield across crops and geographies. Moving means (MM) and P-Spline are examples of spatial adjustment methods used in plant breeding trials to deal with field heterogeneity. Within the trial, spatial variability primarily comes from soil feature gradients, such as nutrients, but a study of the importance of various soil factors including nutrients is lacking. We analyzed plant breeding progeny row (PR) and preliminary yield trial (PYT) data of a public soybean breeding program across 3 years consisting of 43,545 plots. We compared several spatial adjustment methods: unadjusted (as a control), MM adjustment, P-spline adjustment, and a machine learning-based method called XGBoost. XGBoost modeled soil features at: (a) the local field scale for each generation and per year, and (b) all inclusive field scale spanning all generations and years. We report the usefulness of spatial adjustments at both PR and PYT stages of field testing and additionally provide ways to utilize interpretability insights of soil features in spatial adjustments. Our work shows that using soil features for spatial adjustments increased the relative efficiency by 81%, reduced the similarity of selection by 30%, and reduced the Moran's I from 0.13 to 0.01 on average across all experiments. These results empower breeders to further refine selection criteria to make more accurate selections and select for macro- and micro-nutrients stress tolerance.

Abstract Image

利用土壤制图和机器学习改进植物育种试验中的空间调整
空间调整用于改进跨作物和跨地域的小区种子产量估算。移动平均值 (MM) 和 P-Spline 是植物育种试验中用于处理田间异质性的空间调整方法的实例。在试验中,空间变异性主要来自土壤特性梯度,如养分,但缺乏对包括养分在内的各种土壤因子重要性的研究。我们分析了一个公共大豆育种项目的植物育种后代行(PR)和初步产量试验(PYT)数据,该项目历时 3 年,包括 43,545 个地块。我们比较了几种空间调整方法:未调整(作为对照)、MM 调整、P-样条曲线调整和一种名为 XGBoost 的基于机器学习的方法。XGBoost 在以下方面对土壤特征进行建模:(a) 每一代和每一年的局部田间尺度,以及 (b) 跨越所有世代和年份的所有田间尺度。我们报告了在田间试验的 PR 和 PYT 阶段进行空间调整的有用性,并提供了在空间调整中利用土壤特性的可解释性见解的方法。我们的工作表明,利用土壤特性进行空间调整可将相对效率提高 81%,将选择相似度降低 30%,并将所有实验中的莫兰 I 平均值从 0.13 降至 0.01。这些结果使育种者有能力进一步完善选择标准,以做出更准确的选择,并选择耐受宏观和微观养分胁迫的品种。
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来源期刊
Crop Science
Crop Science 农林科学-农艺学
CiteScore
4.50
自引率
8.70%
发文量
197
审稿时长
3 months
期刊介绍: Articles in Crop Science are of interest to researchers, policy makers, educators, and practitioners. The scope of articles in Crop Science includes crop breeding and genetics; crop physiology and metabolism; crop ecology, production, and management; seed physiology, production, and technology; turfgrass science; forage and grazing land ecology and management; genomics, molecular genetics, and biotechnology; germplasm collections and their use; and biomedical, health beneficial, and nutritionally enhanced plants. Crop Science publishes thematic collections of articles across its scope and includes topical Review and Interpretation, and Perspectives articles.
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