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番茄在高温下良好表现的基因组预测及耐热性响应相关基因座的鉴定

Tomato genomic prediction for good performance under high-temperature and identification of loci involved in thermotolerance response.

作者信息

Cappetta Elisa, Andolfo Giuseppe, Guadagno Anna, Di Matteo Antonio, Barone Amalia, Frusciante Luigi, Ercolano Maria Raffaella

机构信息

Department of Agricultural Sciences, University of Naples Federico II, Via Università 100, 80055, Portici, Naples, Italy.

Institute of Bioscience and BioResources, National Research Council, Via Università 100, 80055, Portici, Italy.

出版信息

Hortic Res. 2021 Oct 1;8(1):212. doi: 10.1038/s41438-021-00647-3.

Abstract

Many studies showed that few degrees above tomato optimum growth temperature threshold can lead to serious loss in production. Therefore, the development of innovative strategies to obtain tomato cultivars with improved yield under high temperature conditions is a main goal both for basic genetic studies and breeding activities. In this paper, a F4 segregating population was phenotypically evaluated for quantitative and qualitative traits under heat stress conditions. Moreover, a genotyping by sequencing (GBS) approach has been employed for building up genomic selection (GS) models both for yield and soluble solid content (SCC). Several parameters, including training population size, composition and marker quality were tested to predict genotype performance under heat stress conditions. A good prediction accuracy for the two analyzed traits (0.729 for yield production and 0.715 for SCC) was obtained. The predicted models improved the genetic gain of selection in the next breeding cycles, suggesting that GS approach is a promising strategy to accelerate breeding for heat tolerance in tomato. Finally, the annotation of SNPs located in gene body regions combined with QTL analysis allowed the identification of five candidates putatively involved in high temperatures response, and the building up of a GS model based on calibrated panel of SNP markers.

摘要

许多研究表明,比番茄最佳生长温度阈值高几度就会导致产量严重损失。因此,开发创新策略以获得在高温条件下产量提高的番茄品种,是基础遗传学研究和育种活动的主要目标。本文对一个F4分离群体在热胁迫条件下的数量和质量性状进行了表型评估。此外,采用简化基因组测序(GBS)方法建立了产量和可溶性固形物含量(SCC)的基因组选择(GS)模型。测试了几个参数,包括训练群体大小、组成和标记质量,以预测热胁迫条件下的基因型表现。获得了对两个分析性状的良好预测准确性(产量为0.729,SCC为0.715)。预测模型提高了下一个育种周期的选择遗传增益,表明GS方法是加速番茄耐热性育种的一种有前途的策略。最后,对位于基因体区域的单核苷酸多态性(SNP)进行注释并结合数量性状位点(QTL)分析,鉴定出五个可能参与高温响应的候选基因,并基于校准的SNP标记构建了GS模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5564/8484564/ee1a818268a8/41438_2021_647_Fig1_HTML.jpg

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