The look ahead trace back optimizer for genomic selection under transparent and opaque simulators

Abstract Recent advances in genomic selection (GS) have demonstrated the importance of not only the accuracy of genomic prediction but also the intelligence of selection strategies. The look ahead selection algorithm, for example, has been found to significantly outperform the widely used truncation...

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Main Authors: Fatemeh Amini, Felipe Restrepo Franco, Guiping Hu, Lizhi Wang
Format: Article
Language:English
Published: Nature Publishing Group 2021-02-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-83567-5
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spelling doaj-a67fbd731d2943b980a01ac66833725c2021-02-21T12:33:39ZengNature Publishing GroupScientific Reports2045-23222021-02-0111111310.1038/s41598-021-83567-5The look ahead trace back optimizer for genomic selection under transparent and opaque simulatorsFatemeh Amini0Felipe Restrepo Franco1Guiping Hu2Lizhi Wang3Department of Industrial and Manufacturing Systems Engineering, Iowa State UniversityDepartment of Industrial and Manufacturing Systems Engineering, Iowa State UniversityDepartment of Industrial and Manufacturing Systems Engineering, Iowa State UniversityDepartment of Industrial and Manufacturing Systems Engineering, Iowa State UniversityAbstract Recent advances in genomic selection (GS) have demonstrated the importance of not only the accuracy of genomic prediction but also the intelligence of selection strategies. The look ahead selection algorithm, for example, has been found to significantly outperform the widely used truncation selection approach in terms of genetic gain, thanks to its strategy of selecting breeding parents that may not necessarily be elite themselves but have the best chance of producing elite progeny in the future. This paper presents the look ahead trace back algorithm as a new variant of the look ahead approach, which introduces several improvements to further accelerate genetic gain especially under imperfect genomic prediction. Perhaps an even more significant contribution of this paper is the design of opaque simulators for evaluating the performance of GS algorithms. These simulators are partially observable, explicitly capture both additive and non-additive genetic effects, and simulate uncertain recombination events more realistically. In contrast, most existing GS simulation settings are transparent, either explicitly or implicitly allowing the GS algorithm to exploit certain critical information that may not be possible in actual breeding programs. Comprehensive computational experiments were carried out using a maize data set to compare a variety of GS algorithms under four simulators with different levels of opacity. These results reveal how differently a same GS algorithm would interact with different simulators, suggesting the need for continued research in the design of more realistic simulators. As long as GS algorithms continue to be trained in silico rather than in planta, the best way to avoid disappointing discrepancy between their simulated and actual performances may be to make the simulator as akin to the complex and opaque nature as possible.https://doi.org/10.1038/s41598-021-83567-5
collection DOAJ
language English
format Article
sources DOAJ
author Fatemeh Amini
Felipe Restrepo Franco
Guiping Hu
Lizhi Wang
spellingShingle Fatemeh Amini
Felipe Restrepo Franco
Guiping Hu
Lizhi Wang
The look ahead trace back optimizer for genomic selection under transparent and opaque simulators
Scientific Reports
author_facet Fatemeh Amini
Felipe Restrepo Franco
Guiping Hu
Lizhi Wang
author_sort Fatemeh Amini
title The look ahead trace back optimizer for genomic selection under transparent and opaque simulators
title_short The look ahead trace back optimizer for genomic selection under transparent and opaque simulators
title_full The look ahead trace back optimizer for genomic selection under transparent and opaque simulators
title_fullStr The look ahead trace back optimizer for genomic selection under transparent and opaque simulators
title_full_unstemmed The look ahead trace back optimizer for genomic selection under transparent and opaque simulators
title_sort look ahead trace back optimizer for genomic selection under transparent and opaque simulators
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-02-01
description Abstract Recent advances in genomic selection (GS) have demonstrated the importance of not only the accuracy of genomic prediction but also the intelligence of selection strategies. The look ahead selection algorithm, for example, has been found to significantly outperform the widely used truncation selection approach in terms of genetic gain, thanks to its strategy of selecting breeding parents that may not necessarily be elite themselves but have the best chance of producing elite progeny in the future. This paper presents the look ahead trace back algorithm as a new variant of the look ahead approach, which introduces several improvements to further accelerate genetic gain especially under imperfect genomic prediction. Perhaps an even more significant contribution of this paper is the design of opaque simulators for evaluating the performance of GS algorithms. These simulators are partially observable, explicitly capture both additive and non-additive genetic effects, and simulate uncertain recombination events more realistically. In contrast, most existing GS simulation settings are transparent, either explicitly or implicitly allowing the GS algorithm to exploit certain critical information that may not be possible in actual breeding programs. Comprehensive computational experiments were carried out using a maize data set to compare a variety of GS algorithms under four simulators with different levels of opacity. These results reveal how differently a same GS algorithm would interact with different simulators, suggesting the need for continued research in the design of more realistic simulators. As long as GS algorithms continue to be trained in silico rather than in planta, the best way to avoid disappointing discrepancy between their simulated and actual performances may be to make the simulator as akin to the complex and opaque nature as possible.
url https://doi.org/10.1038/s41598-021-83567-5
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