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Factors Influencing Genomic Prediction Accuracies of Tropical Maize Resistance to Fall Armyworm and Weevils

Genomic selection (GS) can accelerate variety improvement when training set (TS) size and its relationship with the breeding set (BS) are optimized for prediction accuracies (PAs) of genomic prediction (GP) models. Sixteen GP algorithms were run on phenotypic best linear unbiased predictors (BLUPs)...

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Autores principales: Badji, Arfang, Machida, Lewis, Kwemoi, Daniel Bomet, Kumi, Frank, Okii, Dennis, Mwila, Natasha, Agbahoungba, Symphorien, Ibanda, Angele, Bararyenya, Astere, Nghituwamhata, Selma Ndapewa, Odong, Thomas, Wasswa, Peter, Otim, Michael, Ochwo-Ssemakula, Mildred, Talwana, Herbert, Asea, Godfrey, Kyamanywa, Samuel, Rubaihayo, Patrick
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7823878/
https://www.ncbi.nlm.nih.gov/pubmed/33374402
http://dx.doi.org/10.3390/plants10010029
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author Badji, Arfang
Machida, Lewis
Kwemoi, Daniel Bomet
Kumi, Frank
Okii, Dennis
Mwila, Natasha
Agbahoungba, Symphorien
Ibanda, Angele
Bararyenya, Astere
Nghituwamhata, Selma Ndapewa
Odong, Thomas
Wasswa, Peter
Otim, Michael
Ochwo-Ssemakula, Mildred
Talwana, Herbert
Asea, Godfrey
Kyamanywa, Samuel
Rubaihayo, Patrick
author_facet Badji, Arfang
Machida, Lewis
Kwemoi, Daniel Bomet
Kumi, Frank
Okii, Dennis
Mwila, Natasha
Agbahoungba, Symphorien
Ibanda, Angele
Bararyenya, Astere
Nghituwamhata, Selma Ndapewa
Odong, Thomas
Wasswa, Peter
Otim, Michael
Ochwo-Ssemakula, Mildred
Talwana, Herbert
Asea, Godfrey
Kyamanywa, Samuel
Rubaihayo, Patrick
author_sort Badji, Arfang
collection PubMed
description Genomic selection (GS) can accelerate variety improvement when training set (TS) size and its relationship with the breeding set (BS) are optimized for prediction accuracies (PAs) of genomic prediction (GP) models. Sixteen GP algorithms were run on phenotypic best linear unbiased predictors (BLUPs) and estimators (BLUEs) of resistance to both fall armyworm (FAW) and maize weevil (MW) in a tropical maize panel. For MW resistance, 37% of the panel was the TS, and the BS was the remainder, whilst for FAW, random-based training sets (RBTS) and pedigree-based training sets (PBTSs) were designed. PAs achieved with BLUPs varied from 0.66 to 0.82 for MW-resistance traits, and for FAW resistance, 0.694 to 0.714 for RBTS of 37%, and 0.843 to 0.844 for RBTS of 85%, and these were at least two-fold those from BLUEs. For PBTS, FAW resistance PAs were generally higher than those for RBTS, except for one dataset. GP models generally showed similar PAs across individual traits whilst the TS designation was determinant, since a positive correlation (R = 0.92***) between TS size and PAs was observed for RBTS, and for the PBTS, it was negative (R = 0.44**). This study pioneered the use of GS for maize resistance to insect pests in sub-Saharan Africa.
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spelling pubmed-78238782021-01-24 Factors Influencing Genomic Prediction Accuracies of Tropical Maize Resistance to Fall Armyworm and Weevils Badji, Arfang Machida, Lewis Kwemoi, Daniel Bomet Kumi, Frank Okii, Dennis Mwila, Natasha Agbahoungba, Symphorien Ibanda, Angele Bararyenya, Astere Nghituwamhata, Selma Ndapewa Odong, Thomas Wasswa, Peter Otim, Michael Ochwo-Ssemakula, Mildred Talwana, Herbert Asea, Godfrey Kyamanywa, Samuel Rubaihayo, Patrick Plants (Basel) Article Genomic selection (GS) can accelerate variety improvement when training set (TS) size and its relationship with the breeding set (BS) are optimized for prediction accuracies (PAs) of genomic prediction (GP) models. Sixteen GP algorithms were run on phenotypic best linear unbiased predictors (BLUPs) and estimators (BLUEs) of resistance to both fall armyworm (FAW) and maize weevil (MW) in a tropical maize panel. For MW resistance, 37% of the panel was the TS, and the BS was the remainder, whilst for FAW, random-based training sets (RBTS) and pedigree-based training sets (PBTSs) were designed. PAs achieved with BLUPs varied from 0.66 to 0.82 for MW-resistance traits, and for FAW resistance, 0.694 to 0.714 for RBTS of 37%, and 0.843 to 0.844 for RBTS of 85%, and these were at least two-fold those from BLUEs. For PBTS, FAW resistance PAs were generally higher than those for RBTS, except for one dataset. GP models generally showed similar PAs across individual traits whilst the TS designation was determinant, since a positive correlation (R = 0.92***) between TS size and PAs was observed for RBTS, and for the PBTS, it was negative (R = 0.44**). This study pioneered the use of GS for maize resistance to insect pests in sub-Saharan Africa. MDPI 2020-12-24 /pmc/articles/PMC7823878/ /pubmed/33374402 http://dx.doi.org/10.3390/plants10010029 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Badji, Arfang
Machida, Lewis
Kwemoi, Daniel Bomet
Kumi, Frank
Okii, Dennis
Mwila, Natasha
Agbahoungba, Symphorien
Ibanda, Angele
Bararyenya, Astere
Nghituwamhata, Selma Ndapewa
Odong, Thomas
Wasswa, Peter
Otim, Michael
Ochwo-Ssemakula, Mildred
Talwana, Herbert
Asea, Godfrey
Kyamanywa, Samuel
Rubaihayo, Patrick
Factors Influencing Genomic Prediction Accuracies of Tropical Maize Resistance to Fall Armyworm and Weevils
title Factors Influencing Genomic Prediction Accuracies of Tropical Maize Resistance to Fall Armyworm and Weevils
title_full Factors Influencing Genomic Prediction Accuracies of Tropical Maize Resistance to Fall Armyworm and Weevils
title_fullStr Factors Influencing Genomic Prediction Accuracies of Tropical Maize Resistance to Fall Armyworm and Weevils
title_full_unstemmed Factors Influencing Genomic Prediction Accuracies of Tropical Maize Resistance to Fall Armyworm and Weevils
title_short Factors Influencing Genomic Prediction Accuracies of Tropical Maize Resistance to Fall Armyworm and Weevils
title_sort factors influencing genomic prediction accuracies of tropical maize resistance to fall armyworm and weevils
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7823878/
https://www.ncbi.nlm.nih.gov/pubmed/33374402
http://dx.doi.org/10.3390/plants10010029
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