<didl:DIDL xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xmlns:didl="urn:mpeg:mpeg21:2002:02-DIDL-NS" xmlns:dii="urn:mpeg:mpeg21:2002:01-DII-NS" xmlns:dip="urn:mpeg:mpeg21:2002:01-DIP-NS" xmlns:dcterms="http://purl.org/dc/terms/" DIDLDocumentId="http://oar.icrisat.org/id/eprint/10287" xsi:schemaLocation="urn:mpeg:mpeg21:2002:02-DIDL-NS http://standards.iso.org/ittf/PubliclyAvailableStandards/MPEG-21_schema_files/did/didl.xsd urn:mpeg:mpeg21:2002:01-DII-NS http://standards.iso.org/ittf/PubliclyAvailableStandards/MPEG-21_schema_files/dii/dii.xsd urn:mpeg:mpeg21:2005:01-DIP-NS http://standards.iso.org/ittf/PubliclyAvailableStandards/MPEG-21_schema_files/dip/dip.xsd">
  <didl:Item>
    <didl:Descriptor>
      <didl:Statement mimeType="application/xml">
        <dii:Identifier>http://oar.icrisat.org/id/eprint/10287</dii:Identifier>
      </didl:Statement>
    </didl:Descriptor>
    <didl:Descriptor>
      <didl:Statement mimeType="application/xml">
        <dcterms:modified>2018-08-06T08:24:45Z</dcterms:modified>
      </didl:Statement>
    </didl:Descriptor>
    <didl:Component>
      <didl:Resource mimeType="application/xml" ref="http://oar.icrisat.org/cgi/export/eprint/10287/DIDL/icrisat-eprint-10287.xml"/>
    </didl:Component>
    <didl:Item>
      <didl:Descriptor>
        <didl:Statement mimeType="application/xml">
          <dip:ObjectType>info:eu-repo/semantics/descriptiveMetadata</dip:ObjectType>
        </didl:Statement>
      </didl:Descriptor>
      <didl:Component>
        <didl:Resource mimeType="application/xml">
          <oai_dc:dc xmlns:oai_dc="http://www.openarchives.org/OAI/2.0/oai_dc/" xmlns:dc="http://purl.org/dc/elements/1.1/" xsi:schemaLocation="http://www.openarchives.org/OAI/2.0/oai_dc/ http://www.openarchives.org/OAI/2.0/oai_dc.xsd">
        <dc:relation>http://oar.icrisat.org/10287/</dc:relation>
        <dc:title>Genomic-enabled prediction model with genotype × environment interaction in elite&#13;
chickpea lines</dc:title>
        <dc:creator>Roorkiwal, M</dc:creator>
        <dc:creator>Jarquin, D</dc:creator>
        <dc:creator>Jain, A</dc:creator>
        <dc:creator>Garg, V</dc:creator>
        <dc:creator>Kale, S M</dc:creator>
        <dc:creator>Singh, M K</dc:creator>
        <dc:creator>Samineni, S</dc:creator>
        <dc:creator>Gaur, P M</dc:creator>
        <dc:creator>Rathore, A</dc:creator>
        <dc:creator>Chellapilla, B</dc:creator>
        <dc:creator>Tripathi, S</dc:creator>
        <dc:creator>Crossa, J</dc:creator>
        <dc:creator>Varshney, R K</dc:creator>
        <dc:subject>Chickpea</dc:subject>
        <dc:subject>Genetics and Genomics</dc:subject>
        <dc:description>Genomic selection (GS) allows safe phenotyping and reduces&#13;
cost and shortening selection cycles. Incorporating of genotype&#13;
× environment (G×E) interactions in genomic prediction models&#13;
improves the predictive ability of lines performance across environments&#13;
and in target environments. Phenotyping data on a set&#13;
of 320 elite chickpea breeding lines on different traits (e.g., plant&#13;
height, days to maturity, and seed yield), from three consecutive&#13;
years for two different treatments at two locations were recorded.&#13;
These lines were genotyped on DArTseq(1.6K) and Genotyping-&#13;
by-Sequencing (GBS; 89K SNPs) platforms. Five different&#13;
models were fitted, four of which included genomic information&#13;
as main effects (baseline model) and/or G×E interactions. Three&#13;
different cross-validation schemes that mimic real scenarios that&#13;
breeders might face on fields were considered to assess the predictive&#13;
ability of the models (CV2: incomplete field trials; CV1:&#13;
newly developed lines; and CV0: new previously untested environments).&#13;
Different prediction models gave different results for&#13;
the different traits; however, some interesting patterns were observed.&#13;
For CV1, analyzing yield seed interaction models improved&#13;
baseline counterparts on an average between 55 and 92% using&#13;
DArT and DArT combined with GBS data, respectively [between&#13;
9 and 112% for all traits]. While for CV2 these improvements varied&#13;
b tween 65 and 102% [between 8 and 130% remaining traits].&#13;
In CV0, no clear advantage was observed considering the interaction&#13;
term. These results suggest that GS models hold potential for&#13;
breeder’s applications on chickpea cultivar improvements.</dc:description>
        <dc:date>2017-02</dc:date>
        <dc:type>Conference or Workshop Item</dc:type>
        <dc:type>PeerReviewed</dc:type>
        <dc:format>application/pdf</dc:format>
        <dc:language>en</dc:language>
        <dc:identifier>http://oar.icrisat.org/10287/1/Abstract_Book_112.pdf</dc:identifier>
        <dc:identifier>  Roorkiwal, M and Jarquin, D and Jain, A and Garg, V and Kale, S M and Singh, M K and Samineni, S and Gaur, P M and Rathore, A and Chellapilla, B and Tripathi, S and Crossa, J and Varshney, R K  (2017) Genomic-enabled prediction model with genotype × environment interaction in elite chickpea lines.  In: InterDrought-V, February 21-25, 2017, Hyderabad, India.     </dc:identifier></oai_dc:dc>
        </didl:Resource>
      </didl:Component>
    </didl:Item>
    <didl:Item>
      <didl:Descriptor>
        <didl:Statement mimeType="application/xml">
          <dip:ObjectType>info:eu-repo/semantics/objectFile</dip:ObjectType>
        </didl:Statement>
      </didl:Descriptor>
      <didl:Component>
        <didl:Resource mimeType="application/pdf" ref="http://oar.icrisat.org/10287/1/Abstract_Book_112.pdf"/>
      </didl:Component>
    </didl:Item>
    <didl:Item>
      <didl:Descriptor>
        <didl:Statement mimeType="application/xml">
          <dip:ObjectType>info:eu-repo/semantics/humanStartPage</dip:ObjectType>
        </didl:Statement>
      </didl:Descriptor>
      <didl:Component>
        <didl:Resource mimeType="application/html" ref="http://oar.icrisat.org/10287/"/>
      </didl:Component>
    </didl:Item>
  </didl:Item>
</didl:DIDL>