Li Mao, Liu Zhengbin, Jiang Ni, Laws Benjamin, Tiskevich Christine, Moose Stephen P, Topp Christopher N
Donald Danforth Plant Science Center, St. Louis, MO, United States.
Department of Crop Sciences, University of Illinois at Urbana-Champaign, Urbana, IL, United States.
Front Plant Sci. 2024 Jan 15;14:1260005. doi: 10.3389/fpls.2023.1260005. eCollection 2023.
A central goal of biology is to understand how genetic variation produces phenotypic variation, which has been described as a genotype to phenotype (G to P) map. The plant form is continuously shaped by intrinsic developmental and extrinsic environmental inputs, and therefore plant phenomes are highly multivariate and require comprehensive approaches to fully quantify. Yet a common assumption in plant phenotyping efforts is that a few pre-selected measurements can adequately describe the relevant phenome space. Our poor understanding of the genetic basis of root system architecture is at least partially a result of this incongruence. Root systems are complex 3D structures that are most often studied as 2D representations measured with relatively simple univariate traits. In prior work, we showed that persistent homology, a topological data analysis method that does not pre-suppose the salient features of the data, could expand the phenotypic trait space and identify new G to P relations from a commonly used 2D root phenotyping platform. Here we extend the work to entire 3D root system architectures of maize seedlings from a mapping population that was designed to understand the genetic basis of maize-nitrogen relations. Using a panel of 84 univariate traits, persistent homology methods developed for 3D branching, and multivariate vectors of the collective trait space, we found that each method captures distinct information about root system variation as evidenced by the majority of non-overlapping QTL, and hence that root phenotypic trait space is not easily exhausted. The work offers a data-driven method for assessing 3D root structure and highlights the importance of non-canonical phenotypes for more accurate representations of the G to P map.
生物学的一个核心目标是了解遗传变异如何产生表型变异,这被描述为基因型到表型(G到P)的映射。植物形态不断受到内在发育和外在环境因素的塑造,因此植物表型组具有高度的多变量性,需要综合方法来全面量化。然而,植物表型分析工作中一个常见的假设是,一些预先选择的测量可以充分描述相关的表型组空间。我们对根系结构遗传基础的了解不足至少部分是这种不一致的结果。根系是复杂的三维结构,最常作为用相对简单的单变量性状测量的二维表示来研究。在先前的工作中,我们表明,持久同调,一种不预先假定数据显著特征的拓扑数据分析方法,可以扩展表型性状空间,并从常用的二维根系表型平台中识别新的G到P关系。在这里,我们将这项工作扩展到来自一个旨在了解玉米-氮关系遗传基础的作图群体的玉米幼苗的整个三维根系结构。使用一组84个单变量性状、为三维分支开发的持久同调方法以及集体性状空间的多变量向量,我们发现每种方法都捕获了关于根系变异的不同信息,这由大多数不重叠的QTL证明,因此根系表型性状空间不容易被穷尽。这项工作提供了一种数据驱动的方法来评估三维根系结构,并强调了非典型表型对于更准确表示G到P映射的重要性。