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WP7
State of progress
State of progress of the ongoing tasks

• Task 7.1: Structuration/Mirroringof the consensus database (M1–
  M54)
   –   Applebreedmodelacquired
   –   Schemeof the GDR-FBdbdeveloped
   –   Modulesprogramming
   –   Naturaldiversitymoduleinstalled and tested
   –   Structurefor DB integration

• Task 7.2: Constructionofrelational database ofphenotypic data
  fortargetedtraits (M1– M48)
   –   Database structure developed – Peach and Apple
   –   Interface developed – Peach
   –   Data entry ongoing – Peach
   –   Interface for data retrival - Peach
State of progress of the ongoing tasks

• Task 7.3: Developmentofpipelinesofanalysis and
  storageofdetectedgenomicvariation (M8– M36)
  – Developmentof interface with GDR db
  – Localgenome browser

• Task7.4: Meta-analysis (M24– M48)

• Task 7.5: Toolsforfunctional and comparative
  analysisofidentifiedvariation (M12– M48)
Deliverables status

• D7.1 (M12) FruitBreedomics database frame
   – Report
      • Descriptionof the db structurescheme, DBMS and interface
        withsequence data
• D7.2 (M24): Complete collectionsof trait phenotypic data
  fromgenetic material available and complete
  listofidentifiedgenomicvariation
   – Peachphenotype
• D7.3 (M48) Complete operating pipeline for “model”
  traitsanalysisfor candidate genesdiscovery
• D7.4 (M54) Toolsforphenotypic and molecularmarker data
  analysisfor PBA/LD/MBA integrated in the FruitBreedomics
  DB.
Milestones status

• MS34 (M12): Developmentof the consensus database
  in coordinationwith GDR
   – DB scheme
   – Agreement on toolsdevelopment
• MS35 (M36): Alfa versionof the integrated database.
  Developmentofphenotypic data/genetic material
  network
• MS36 (M48): Modellingtraitsstudy
• MS37 (M54): Beta versionof the integrated database
  Correlationofphenotypic/genotypic data for
  PBA/LD/MBA.
Expected delays and problems
• Problems:
  – Some of tripal modules (GDR) stillunderdevelopment
     • Could cause delays
     •  corrective action:
        – Use mySQLbaseddb as a base structure
        – Automated interface to chado-like structure
  – Risk:most data willbeadded to dblater
     •  corrective action:
        – Use data frompreviousproject (Applebreed)
        – Start withexample data
Tasks to be done during the Annual
Meeting

• Task 7.1: Structuration/Mirroringof the consensus database
  (M1– M54)
   – Definemarker data input
       • Input interface and tablesconnections
       • Define format fordiversity data
   – Breeder toolbox
       • Differences and furtherdevelopmentsfromRosBreed BTB

• Task 7.2: Constructionofrelational database ofphenotypic
  data fortargetedtraits (M1– M48)
   – Definephenotypedescriptorsforapple and
     relationshipwithaccessions (cultivars) and locations
   – Fine tuningofphenotypequeriesforpeach
Tasks to be done during the Annual
Meeting

• Task 7.3: Developmentofpipelinesofanalysis and
  storageofdetectedgenomicvariation (M8– M36)
   – Choosedescriptorsfor QTL data
      • LA and PBA
      • Peach and apple
   – Choosedescriptorsforassociationanalysis
      • Ldanalysis
      • Peach and Apple


• Task 7.5: Toolsforfunctional and comparative
  analysisofidentifiedvariation (M12– M48)
   – Agree on fine annotationofidentifiedregionsof interest
   – Peach and Apple

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FruitBreedomics 1st Annual meeting 20120208 WP7 Overview of state of progress

  • 2. State of progress of the ongoing tasks • Task 7.1: Structuration/Mirroringof the consensus database (M1– M54) – Applebreedmodelacquired – Schemeof the GDR-FBdbdeveloped – Modulesprogramming – Naturaldiversitymoduleinstalled and tested – Structurefor DB integration • Task 7.2: Constructionofrelational database ofphenotypic data fortargetedtraits (M1– M48) – Database structure developed – Peach and Apple – Interface developed – Peach – Data entry ongoing – Peach – Interface for data retrival - Peach
  • 3. State of progress of the ongoing tasks • Task 7.3: Developmentofpipelinesofanalysis and storageofdetectedgenomicvariation (M8– M36) – Developmentof interface with GDR db – Localgenome browser • Task7.4: Meta-analysis (M24– M48) • Task 7.5: Toolsforfunctional and comparative analysisofidentifiedvariation (M12– M48)
  • 4. Deliverables status • D7.1 (M12) FruitBreedomics database frame – Report • Descriptionof the db structurescheme, DBMS and interface withsequence data • D7.2 (M24): Complete collectionsof trait phenotypic data fromgenetic material available and complete listofidentifiedgenomicvariation – Peachphenotype • D7.3 (M48) Complete operating pipeline for “model” traitsanalysisfor candidate genesdiscovery • D7.4 (M54) Toolsforphenotypic and molecularmarker data analysisfor PBA/LD/MBA integrated in the FruitBreedomics DB.
  • 5. Milestones status • MS34 (M12): Developmentof the consensus database in coordinationwith GDR – DB scheme – Agreement on toolsdevelopment • MS35 (M36): Alfa versionof the integrated database. Developmentofphenotypic data/genetic material network • MS36 (M48): Modellingtraitsstudy • MS37 (M54): Beta versionof the integrated database Correlationofphenotypic/genotypic data for PBA/LD/MBA.
  • 6. Expected delays and problems • Problems: – Some of tripal modules (GDR) stillunderdevelopment • Could cause delays •  corrective action: – Use mySQLbaseddb as a base structure – Automated interface to chado-like structure – Risk:most data willbeadded to dblater •  corrective action: – Use data frompreviousproject (Applebreed) – Start withexample data
  • 7. Tasks to be done during the Annual Meeting • Task 7.1: Structuration/Mirroringof the consensus database (M1– M54) – Definemarker data input • Input interface and tablesconnections • Define format fordiversity data – Breeder toolbox • Differences and furtherdevelopmentsfromRosBreed BTB • Task 7.2: Constructionofrelational database ofphenotypic data fortargetedtraits (M1– M48) – Definephenotypedescriptorsforapple and relationshipwithaccessions (cultivars) and locations – Fine tuningofphenotypequeriesforpeach
  • 8. Tasks to be done during the Annual Meeting • Task 7.3: Developmentofpipelinesofanalysis and storageofdetectedgenomicvariation (M8– M36) – Choosedescriptorsfor QTL data • LA and PBA • Peach and apple – Choosedescriptorsforassociationanalysis • Ldanalysis • Peach and Apple • Task 7.5: Toolsforfunctional and comparative analysisofidentifiedvariation (M12– M48) – Agree on fine annotationofidentifiedregionsof interest – Peach and Apple