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Leveraging the Use of Historical Data Gathered During Seed Regeneration of an ex Situ Genebank Collection of Wheat

Genebanks are a rich source of genetic variation. Most of this variation is absent in breeding programs but may be useful for further crop plant improvement. However, the lack of phenotypic information forms a major obstacle for the educated choice of genebank accessions for research and breeding. A...

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Autores principales: Philipp, Norman, Weise, Stephan, Oppermann, Markus, Börner, Andreas, Graner, Andreas, Keilwagen, Jens, Kilian, Benjamin, Zhao, Yusheng, Reif, Jochen C., Schulthess, Albert W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5953327/
https://www.ncbi.nlm.nih.gov/pubmed/29868066
http://dx.doi.org/10.3389/fpls.2018.00609
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author Philipp, Norman
Weise, Stephan
Oppermann, Markus
Börner, Andreas
Graner, Andreas
Keilwagen, Jens
Kilian, Benjamin
Zhao, Yusheng
Reif, Jochen C.
Schulthess, Albert W.
author_facet Philipp, Norman
Weise, Stephan
Oppermann, Markus
Börner, Andreas
Graner, Andreas
Keilwagen, Jens
Kilian, Benjamin
Zhao, Yusheng
Reif, Jochen C.
Schulthess, Albert W.
author_sort Philipp, Norman
collection PubMed
description Genebanks are a rich source of genetic variation. Most of this variation is absent in breeding programs but may be useful for further crop plant improvement. However, the lack of phenotypic information forms a major obstacle for the educated choice of genebank accessions for research and breeding. A promising approach to fill this information gap is to exploit historical information gathered routinely during seed regeneration cycles. Still, this data is characterized by a high non-orthogonality hampering their analysis. By examining historical data records for flowering time, plant height, and thousand grain weight collected during 70 years of regeneration of 6,207 winter wheat (Triticum aestivum L.) accessions at the German Federal ex situ Genebank, we aimed to elaborate a strategy to analyze and validate non-orthogonal historical data in order to charge genebank information platforms with high quality ready-to-use phenotypic information. First, a three-step quality control assessment considering the plausibility of trait values and a standard as well as a weather parameter index based outlier detection was implemented, resulting in heritability estimates above 0.90 for all three traits. Then, the data was analyzed by estimating best linear unbiased estimations (BLUEs) applying a linear mixed-model approach. An in silico resampling study mimicking different missing data patterns revealed that accessions should be regenerated in a random fashion and not blocked by origin or acquisition date in order to minimize estimation biases in historical data sets. Validation data was obtained from multi-environmental orthogonal field trials considering a random subsample of 3,083 accessions. Correlations above 0.84 between BLUEs estimated for historical data and validation trials outperformed previous approaches and confirmed the robustness of our strategy as well as the high quality of the historical data. The results indicate that the IPK winter wheat collection reveals an extraordinary high phenotypic diversity compared to other collections. The quality checked ready-to-use phenotypic information resulting from this study is the first brick to extend traditional, conservation driven genebanks into bio-digital resource centers.
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spelling pubmed-59533272018-06-04 Leveraging the Use of Historical Data Gathered During Seed Regeneration of an ex Situ Genebank Collection of Wheat Philipp, Norman Weise, Stephan Oppermann, Markus Börner, Andreas Graner, Andreas Keilwagen, Jens Kilian, Benjamin Zhao, Yusheng Reif, Jochen C. Schulthess, Albert W. Front Plant Sci Plant Science Genebanks are a rich source of genetic variation. Most of this variation is absent in breeding programs but may be useful for further crop plant improvement. However, the lack of phenotypic information forms a major obstacle for the educated choice of genebank accessions for research and breeding. A promising approach to fill this information gap is to exploit historical information gathered routinely during seed regeneration cycles. Still, this data is characterized by a high non-orthogonality hampering their analysis. By examining historical data records for flowering time, plant height, and thousand grain weight collected during 70 years of regeneration of 6,207 winter wheat (Triticum aestivum L.) accessions at the German Federal ex situ Genebank, we aimed to elaborate a strategy to analyze and validate non-orthogonal historical data in order to charge genebank information platforms with high quality ready-to-use phenotypic information. First, a three-step quality control assessment considering the plausibility of trait values and a standard as well as a weather parameter index based outlier detection was implemented, resulting in heritability estimates above 0.90 for all three traits. Then, the data was analyzed by estimating best linear unbiased estimations (BLUEs) applying a linear mixed-model approach. An in silico resampling study mimicking different missing data patterns revealed that accessions should be regenerated in a random fashion and not blocked by origin or acquisition date in order to minimize estimation biases in historical data sets. Validation data was obtained from multi-environmental orthogonal field trials considering a random subsample of 3,083 accessions. Correlations above 0.84 between BLUEs estimated for historical data and validation trials outperformed previous approaches and confirmed the robustness of our strategy as well as the high quality of the historical data. The results indicate that the IPK winter wheat collection reveals an extraordinary high phenotypic diversity compared to other collections. The quality checked ready-to-use phenotypic information resulting from this study is the first brick to extend traditional, conservation driven genebanks into bio-digital resource centers. Frontiers Media S.A. 2018-05-08 /pmc/articles/PMC5953327/ /pubmed/29868066 http://dx.doi.org/10.3389/fpls.2018.00609 Text en Copyright © 2018 Philipp, Weise, Oppermann, Börner, Graner, Keilwagen, Kilian, Zhao, Reif and Schulthess. http://creativecommons.org/licenses/by/4.0/ 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 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.
spellingShingle Plant Science
Philipp, Norman
Weise, Stephan
Oppermann, Markus
Börner, Andreas
Graner, Andreas
Keilwagen, Jens
Kilian, Benjamin
Zhao, Yusheng
Reif, Jochen C.
Schulthess, Albert W.
Leveraging the Use of Historical Data Gathered During Seed Regeneration of an ex Situ Genebank Collection of Wheat
title Leveraging the Use of Historical Data Gathered During Seed Regeneration of an ex Situ Genebank Collection of Wheat
title_full Leveraging the Use of Historical Data Gathered During Seed Regeneration of an ex Situ Genebank Collection of Wheat
title_fullStr Leveraging the Use of Historical Data Gathered During Seed Regeneration of an ex Situ Genebank Collection of Wheat
title_full_unstemmed Leveraging the Use of Historical Data Gathered During Seed Regeneration of an ex Situ Genebank Collection of Wheat
title_short Leveraging the Use of Historical Data Gathered During Seed Regeneration of an ex Situ Genebank Collection of Wheat
title_sort leveraging the use of historical data gathered during seed regeneration of an ex situ genebank collection of wheat
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5953327/
https://www.ncbi.nlm.nih.gov/pubmed/29868066
http://dx.doi.org/10.3389/fpls.2018.00609
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