Missonnier Hélène, Jacques Alban, Bang JiSu, Daydé Jean, Mirleau-Thebaud Virginie
Department of Physiologie, Pathologie et Génétique Végétales (PPGV), Université de Toulouse, INP- PURPAN, Toulouse, France.
Syngenta France S.A.S., Saint-Sauveur, France.
PLoS One. 2017 Aug 17;12(8):e0181050. doi: 10.1371/journal.pone.0181050. eCollection 2017.
In breeding for disease resistance, the magnitude of the genetic response is difficult to appreciate because of environmental stresses that interact with the plant genotype. We discuss herein the fundamental problems in breeding for disease resistance with the aim being to better understand the interactions between plant, pathogen, and spatial patterns. The goal of this study is to fine tune breeding decisions by incorporating spatial patterns of such biotic factors into the definition of disease-occurrence probability. We use a preexisting statistics method based on geostatistics for a descriptive analysis of biotic factors for trial quality control. The plant-population structure used for spatial-pattern analysis consists of two F1-hybrid cultivars, defined as symptomatic and asymptomatic controls with respect to the studied pathogen. The controls are inserted at specific locations to establish a grid arrangement over the field that include the F1-hybrid cultivars under evaluation. We characterize the spatial structure of the pathogen population and of the general plant environment-with undetermined but present abiotic constraints-not by using direct notation such as flower time or rainfall but by using plant behavior (i.e., leaf symptom severity, indirect notation). The analysis indicates areas with higher or lower risk of disease and reveals a correlation between the symptomatic control and the effective level of disease for sunflowers. This result suggests that the pathogen and/or abiotic components are major factors in determining the probability that a plant develops the disease, which could lead to a misinterpretation of plant resistance.
在抗病育种中,由于与植物基因型相互作用的环境胁迫,遗传反应的程度难以评估。我们在此讨论抗病育种中的基本问题,目的是更好地理解植物、病原体和空间模式之间的相互作用。本研究的目标是通过将此类生物因子的空间模式纳入疾病发生概率的定义中,来微调育种决策。我们使用一种基于地统计学的现有统计方法,对生物因子进行描述性分析,以进行试验质量控制。用于空间模式分析的植物群体结构由两个F1杂交品种组成,相对于所研究的病原体,它们被定义为有症状和无症状对照。对照被插入到特定位置,以在田间建立网格布局,其中包括正在评估的F1杂交品种。我们不是通过使用诸如开花时间或降雨等直接标记,而是通过使用植物行为(即叶片症状严重程度,间接标记)来表征病原体群体和一般植物环境的空间结构,其中存在未确定但存在的非生物限制。分析表明了疾病风险较高或较低的区域,并揭示了有症状对照与向日葵疾病有效水平之间的相关性。这一结果表明,病原体和/或非生物成分是决定植物发病概率的主要因素,这可能导致对植物抗性的误解。