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Phenotyping: Using Machine Learning for Improved Pairwise Genotype Classification Based on Root Traits

机译:表型分析:利用机器学习改进基于根性状的成对基因型分类

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摘要

Phenotyping local crop cultivars is becoming more and more important, as they are an important genetic source for breeding – especially in regard to inherent root system architectures. Machine learning algorithms are promising tools to assist in the analysis of complex data sets; novel approaches are need to apply them on root phenotyping data of mature plants. A greenhouse experiment was conducted in large, sand-filled columns to differentiate 16 European Pisum sativum cultivars based on 36 manually derived root traits. Through combining random forest and support vector machine models, machine learning algorithms were successfully used for unbiased identification of most distinguishing root traits and subsequent pairwise cultivar differentiation. Up to 86% of pea cultivar pairs could be distinguished based on top five important root traits (Timp5) – Timp5 differed widely between cultivar pairs. Selecting top important root traits (Timp) provided a significant improved classification compared to using all available traits or randomly selected trait sets. The most frequent Timp of mature pea cultivars was total surface area of lateral roots originating from tap root segments at 0–5 cm depth. The high classification rate implies that culturing did not lead to a major loss of variability in root system architecture in the studied pea cultivars. Our results illustrate the potential of machine learning approaches for unbiased (root) trait selection and cultivar classification based on rather small, complex phenotypic data sets derived from pot experiments. Powerful statistical approaches are essential to make use of the increasing amount of (root) phenotyping information, integrating the complex trait sets describing crop cultivars.
机译:对当地作物品种进行表型鉴定变得越来越重要,因为它们是育种的重要遗传资源,特别是在固有的根系结构方面。机器学习算法是帮助分析复杂数据集的有前途的工具。需要将新方法应用于成熟植物的根表型数据。在充满沙子的大型圆柱中进行了温室试验,以基于36个手动衍生的根性状区分16个欧洲Pisum sativum品种。通过结合随机森林和支持向量机模型,机器学习算法已成功用于最有区别的根性特征的无偏识别和随后的成对品种分化。根据前五个重要的根系性状(Timp5)可以区分多达86%的豌豆品种-Timp5在品种对之间差异很大。与使用所有可用性状或随机选择的性状集相比,选择最重要的根系性状(Timp)可以显着改善分类。成熟豌豆品种最常见的Timp是来自0-5 cm深度的自来根段的侧根总表面积。较高的分类率表明,在研究的豌豆品种中,培养并未导致根系结构变异的重大损失。我们的结果说明了基于盆栽实验的相当小的复杂表型数据集的机器学习方法在无偏(根)性状选择和品种分类中的潜力。强大的统计方法对于利用越来越多的(根)表型信息,整合描述作物品种的复杂性状集至关重要。

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