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      Utilizing genomics and historical data to optimize gene pools for new breeding programs: A case study in winter wheat

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          Abstract

          With the rapid generation and preservation of both genomic and phenotypic information for many genotypes within crops and across locations, emerging breeding programs have a valuable opportunity to leverage these resources to 1) establish the most appropriate genetic foundation at program inception and 2) implement robust genomic prediction platforms that can effectively select future breeding lines. Integrating genomics-enabled 1 breeding into cultivar development can save costs and allow resources to be reallocated towards advanced (i.e., later) stages of field evaluation, which can facilitate an increased number of testing locations and replicates within locations. In this context, a reestablished winter wheat breeding program was used as a case study to understand best practices to leverage and tailor existing genomic and phenotypic resources to determine optimal genetics for a specific target population of environments. First, historical multi-environment phenotype data, representing 1,285 advanced breeding lines, were compiled from multi-institutional testing as part of the SunGrains cooperative and used to produce GGE biplots and PCA for yield. Locations were clustered based on highly correlated line performance among the target population of environments into 22 subsets. For each of the subsets generated, EMMs and BLUPs were calculated using linear models with the ‘lme4’ R package. Second, for each subset, TPs representative of the new SC breeding lines were determined based on genetic relatedness using the ‘STPGA’ R package. Third, for each TP, phenotypic values and SNP data were incorporated into the ‘rrBLUP’ mixed models for generation of GEBVs of YLD, TW, HD and PH. Using a five-fold cross-validation strategy, an average accuracy of r = 0.42 was obtained for yield between all TPs. The validation performed with 58 SC elite breeding lines resulted in an accuracy of r = 0.62 when the TP included complete historical data. Lastly, QTL-by-environment interaction for 18 major effect genes across three geographic regions was examined. Lines harboring major QTL in the absence of disease could potentially underperform (e.g., Fhb1 R-gene), whereas it is advantageous to express a major QTL under biotic pressure (e.g., stripe rust R-gene). This study highlights the importance of genomics-enabled breeding and multi-institutional partnerships to accelerate cultivar development.

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          Fitting Linear Mixed-Effects Models Usinglme4

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            Fast and accurate short read alignment with Burrows–Wheeler transform

            Motivation: The enormous amount of short reads generated by the new DNA sequencing technologies call for the development of fast and accurate read alignment programs. A first generation of hash table-based methods has been developed, including MAQ, which is accurate, feature rich and fast enough to align short reads from a single individual. However, MAQ does not support gapped alignment for single-end reads, which makes it unsuitable for alignment of longer reads where indels may occur frequently. The speed of MAQ is also a concern when the alignment is scaled up to the resequencing of hundreds of individuals. Results: We implemented Burrows-Wheeler Alignment tool (BWA), a new read alignment package that is based on backward search with Burrows–Wheeler Transform (BWT), to efficiently align short sequencing reads against a large reference sequence such as the human genome, allowing mismatches and gaps. BWA supports both base space reads, e.g. from Illumina sequencing machines, and color space reads from AB SOLiD machines. Evaluations on both simulated and real data suggest that BWA is ∼10–20× faster than MAQ, while achieving similar accuracy. In addition, BWA outputs alignment in the new standard SAM (Sequence Alignment/Map) format. Variant calling and other downstream analyses after the alignment can be achieved with the open source SAMtools software package. Availability: http://maq.sourceforge.net Contact: rd@sanger.ac.uk
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              Shifting the limits in wheat research and breeding using a fully annotated reference genome

              An annotated reference sequence representing the hexaploid bread wheat genome in 21 pseudomolecules has been analyzed to identify the distribution and genomic context of coding and noncoding elements across the A, B, and D subgenomes. With an estimated coverage of 94% of the genome and containing 107,891 high-confidence gene models, this assembly enabled the discovery of tissue- and developmental stage-related coexpression networks by providing a transcriptome atlas representing major stages of wheat development. Dynamics of complex gene families involved in environmental adaptation and end-use quality were revealed at subgenome resolution and contextualized to known agronomic single-gene or quantitative trait loci. This community resource establishes the foundation for accelerating wheat research and application through improved understanding of wheat biology and genomics-assisted breeding.
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                Author and article information

                Contributors
                Journal
                Front Genet
                Front Genet
                Front. Genet.
                Frontiers in Genetics
                Frontiers Media S.A.
                1664-8021
                07 October 2022
                2022
                : 13
                : 964684
                Affiliations
                [1] 1 Department of Plant and Environmental Sciences , Clemson University , Clemson, SC, United States
                [2] 2 Pee Dee Research and Education Center , Clemson University , Florence, SC, United States
                [3] 3 Crop and Soil Sciences Department , North Carolina State University , Raleigh, NC, United States
                [4] 4 U.S. Department of Agriculture-Agricultural Research Service (USDA-ARS) , Raleigh, NC, United States
                [5] 5 Agronomy Department , University of Florida , Gainesville, FL, United States
                [6] 6 School of Plant , Environmental and Soil Sciences , Louisiana State University , Baton Rouge, LA, United States
                [7] 7 College of Agricultural Sciences , Colorado State University , Fort Collins, CO, United States
                [8] 8 Department of Crop and Soil Sciences , University of Georgia , Griffin, GA, United States
                [9] 9 Department of Soil and Crop Sciences , Texas A&M University , Commerce, TX, United States
                [10] 10 School of Plant and Environmental Sciences , Virginia Tech , Blacksburg, VA, United States
                Author notes

                Edited by: Muhammad Sajjad, COMSATS University Islamabad, Pakistan

                Reviewed by: Elena Gultyaeva, All-Russian Institute of Plant Protection, Russia

                Ivica G. Djalovic, Institute of Field and Vegetable Crops, Serbia

                *Correspondence: Richard E. Boyles, rboyles@ 123456clemson.edu

                This article was submitted to Evolutionary and Population Genetics, a section of the journal Frontiers in Genetics

                Article
                964684
                10.3389/fgene.2022.964684
                9585219
                36276956
                974a2ac6-1774-4697-b906-f2fe3c995427
                Copyright © 2022 Ballén-Taborda, Lyerly, Smith, Howell, Brown-Guedira, Babar, Harrison, Mason, Mergoum, Murphy, Sutton, Griffey and Boyles.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

                History
                : 08 June 2022
                : 05 August 2022
                Funding
                Funded by: National Institute of Food and Agriculture , doi 10.13039/100005825;
                Award ID: 2021-67014-33941
                Categories
                Genetics
                Original Research

                Genetics
                breeding,winter wheat (triticum aestivum l.),historical data,training populations,genomic selection,prediction accuracy,yield

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