Abstract
Abstract
Key message
Genome-wide association revealed that resistance to Striga hermonthica is influenced by multiple genomic regions with moderate effects. It is possible to increase genetic gains from selection for Striga resistance using genomic prediction.
Abstract
Striga hermonthica (Del.) Benth., commonly known as the purple witchweed or giant witchweed, is a serious problem for maize-dependent smallholder farmers in sub-Saharan Africa. Breeding for Striga resistance in maize is complicated due to limited genetic variation, complexity of resistance and challenges with phenotyping. This study was conducted to (i) evaluate a set of diverse tropical maize lines for their responses to Striga under artificial infestation in three environments in Kenya; (ii) detect quantitative trait loci associated with Striga resistance through genome-wide association study (GWAS); and (iii) evaluate the effectiveness of genomic prediction (GP) of Striga-related traits. An association mapping panel of 380 inbred lines was evaluated in three environments under artificial Striga infestation in replicated trials and genotyped with 278,810 single-nucleotide polymorphism (SNP) markers. Genotypic and genotype x environment variations were significant for measured traits associated with Striga resistance. Heritability estimates were moderate (0.42) to high (0.92) for measured traits. GWAS revealed 57 SNPs significantly associated with Striga resistance indicator traits and grain yield (GY) under artificial Striga infestation with low to moderate effect. A set of 32 candidate genes physically near the significant SNPs with roles in plant defense against biotic stresses were identified. GP with different cross-validations revealed that prediction of performance of lines in new environments is better than prediction of performance of new lines for all traits. Predictions across environments revealed high accuracy for all the traits, while inclusion of GWAS-detected SNPs led to slight increase in the accuracy. The item-based collaborative filtering approach that incorporates related traits evaluated in different environments to predict GY and Striga-related traits outperformed GP for Striga resistance indicator traits. The results demonstrated the polygenic nature of resistance to S. hermonthica, and that implementation of GP in Striga resistance breeding could potentially aid in increasing genetic gain for this important trait.
Publisher
Springer Science and Business Media LLC
Subject
Genetics,Agronomy and Crop Science,General Medicine,Biotechnology
Reference85 articles.
1. Adewale SA, Badu-Apraku B, Akinwale RO et al (2020) Genome-wide association study of Striga resistance in early maturing white tropical maize inbred lines. BMC Plant Biol 20:203. https://doi.org/10.1186/s12870-020-02360-0
2. Alvarado G, López M, Vargas M, Pacheco A, Rodríguez F, Burgueño J et al (2015) META-R (Multi environment trail analysis with R for windows) version 5.0-CIMMYT research software dataverse-CIMMYT dataverse network. https://data.cimmyt.org/dataset.xhtml?persistentId=hdl:11529/10201. Accessed 25 Mar 2020
3. Baba T, Momen M, Campbell MT, Walia H, Morota G (2020) Multi-trait random regression models increase genomic prediction accuracy for a temporal physiological trait derived from high-throughput phenotyping. PLoS ONE 15(2):e0228118
4. Badu-Apraku B, Akinwale RO (2011) Cultivar evaluation and trait analysis of tropical early maturing maize under Striga-infested and Striga-free environments. Field Crops Res 121:186–194
5. Badu-Apraku B, Fakorede MAB (1999) Progress in breeding for Striga hermonthica resistant early and extra-early maize varieties. In: Impact, challenges and prospects of maize research and development in West and Central Africa. Proceedings of a regional maize workshop. pp 4–7
Cited by
21 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献