Integrating multi-trait genomic selection with simulation strategies to improve grain yield and parental line selection in rice

IF 2.2 3区 农林科学 Q2 AGRICULTURE, MULTIDISCIPLINARY
Chandrappa Anilkumar, Rameswar Prasad Sah, T. P. Muhammed Azharudheen, Sasmita Behera, Soumya Priyadarshini Mohanty, Annamalai Anandan, Bishnu Charan Marndi, Sanghamitra Samantaray
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引用次数: 0

Abstract

Inclusion of correlated secondary traits in the prediction of primary trait in multi-trait genomic selection (GS) models can improve the predictive ability. Our objectives in the present investigations were to (i) evaluate the effectiveness of multi-trait and single-trait GS models for the higher predictive ability and (ii) compare the breeding potential of parental lines selected based on phenotype and GS for grain yield in rice. We used phenotype data of five correlated traits as secondary traits evaluated to predict the grain yield, a primary trait. Yield related functional markers were used for prediction. Breeding populations were simulated using the best parents selected through GS and phenotype based selection. Results suggest that the multi-trait model resulted in higher predictive abilities (0.82 for grain yield) than single-trait models (0.76 for grain yield) and parents selected through GS have potential to produce superior progenies. We conclude that the use of a multi-trait GS approach is advantageous over single-trait models, and the GS also help selecting potential parents for developing improved populations. The results of the study have potential scope for improving quantitative traits using GS in rice.

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来源期刊
Annals of Applied Biology
Annals of Applied Biology 生物-农业综合
CiteScore
5.50
自引率
0.00%
发文量
71
审稿时长
18-36 weeks
期刊介绍: Annals of Applied Biology is an international journal sponsored by the Association of Applied Biologists. The journal publishes original research papers on all aspects of applied research on crop production, crop protection and the cropping ecosystem. The journal is published both online and in six printed issues per year. Annals papers must contribute substantially to the advancement of knowledge and may, among others, encompass the scientific disciplines of: Agronomy Agrometeorology Agrienvironmental sciences Applied genomics Applied metabolomics Applied proteomics Biodiversity Biological control Climate change Crop ecology Entomology Genetic manipulation Molecular biology Mycology Nematology Pests Plant pathology Plant breeding & genetics Plant physiology Post harvest biology Soil science Statistics Virology Weed biology Annals also welcomes reviews of interest in these subject areas. Reviews should be critical surveys of the field and offer new insights. All papers are subject to peer review. Papers must usually contribute substantially to the advancement of knowledge in applied biology but short papers discussing techniques or substantiated results, and reviews of current knowledge of interest to applied biologists will be considered for publication. Papers or reviews must not be offered to any other journal for prior or simultaneous publication and normally average seven printed pages.
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