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褐飞虱多个田间种群繁殖力预测的遗传基础。

The genetic basis of population fecundity prediction across multiple field populations of Nilaparvata lugens.

作者信息

Sun Zhong Xiang, Zhai Yi Fan, Zhang Jian Qing, Kang Kui, Cai Jing Heng, Fu Yonggui, Qiu Jie Qi, Shen Jia Wei, Zhang Wen Qing

机构信息

Key Laboratory of Biodiversity Dynamics and Conservation of Guangdong Higher Education Institutes, State Key Laboratory of Biocontrol, Sun Yat-sen University, Guangzhou, 510275, China.

出版信息

Mol Ecol. 2015 Feb;24(4):771-84. doi: 10.1111/mec.13069. Epub 2015 Feb 2.

Abstract

Identifying the molecular markers for complex quantitative traits in natural populations promises to provide novel insight into genetic mechanisms of adaptation and to aid in forecasting population dynamics. In this study, we investigated single nucleotide polymorphisms (SNPs) using candidate gene approach from high- and low-fecundity populations of the brown planthopper (BPH) Nilaparvata lugens Stål (Hemiptera: Delphacidae) divergently selected for fecundity. We also tested whether the population fecundity can be predicted by a few SNPs. Seven genes (ACE, fizzy, HMGCR, LpR, Sxl, Vg and VgR) were inspected for SNPs in N. lugens, which is a serious insect pest of rice. By direct sequencing of the complementary DNA and promoter sequences of these candidate genes, 1033 SNPs were discovered within high- and low-fecundity BPH populations. A panel of 121 candidate SNPs were selected and genotyped in 215 individuals from 2 laboratory populations (HFP and LFP) and 3 field populations (GZP, SGP and ZSP). Prior to association tests, population structure and linkage disequilibrium (LD) among the 3 field populations were analysed. The association results showed that 7 SNPs were significantly associated with population fecundity in BPH. These significant SNPs were used for constructing general liner models with stepwise regression. The best predictive model was composed of 2 SNPs (ACE-862 and VgR-816 ) with very good fitting degree. We found that 29% of the phenotypic variation in fecundity could be accounted for by only two markers. Using two laboratory populations and a complete independent field population, the predictive accuracy was 84.35-92.39%. The predictive model provides an efficient molecular method to predict BPH fecundity of field populations and provides novel insights for insect population management.

摘要

识别自然种群中复杂数量性状的分子标记,有望为适应的遗传机制提供新的见解,并有助于预测种群动态。在本研究中,我们采用候选基因法,对褐飞虱(Nilaparvata lugens Stål,半翅目:飞虱科)高繁殖力和低繁殖力种群的单核苷酸多态性(SNP)进行了研究,这些种群是针对繁殖力进行了不同方向选择的。我们还测试了种群繁殖力是否可以通过少数几个SNP来预测。对褐飞虱(一种严重的水稻害虫)的7个基因(ACE、fizzy、HMGCR、LpR、Sxl、Vg和VgR)进行了SNP检测。通过对这些候选基因的互补DNA和启动子序列进行直接测序,在高繁殖力和低繁殖力的褐飞虱种群中发现了1033个SNP。从2个实验室种群(HFP和LFP)和3个田间种群(GZP、SGP和ZSP)的215个个体中选择了一组121个候选SNP进行基因分型。在进行关联测试之前,分析了3个田间种群的种群结构和连锁不平衡(LD)。关联结果表明,7个SNP与褐飞虱的种群繁殖力显著相关。这些显著的SNP用于构建逐步回归的一般线性模型。最佳预测模型由2个SNP(ACE - 862和VgR - 816)组成,拟合度非常好。我们发现,仅两个标记就可以解释繁殖力表型变异的29%。使用两个实验室种群和一个完全独立的田间种群,预测准确率为84.35 - 92.39%。该预测模型为预测田间种群褐飞虱的繁殖力提供了一种有效的分子方法,并为昆虫种群管理提供了新的见解。

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