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http://www.cropontology.org

The Crop Ontology
a resource for enabling access to
breeders’ data
Elizabeth Arnaud1*, Luca Matteis1, Marie Angelique Laporte1, Herlin Espinosa2, Glenn Hyman2, Rosemary Shrestha3, Arlett
Portugal4, Pierre Yves Chibon5, Medha Devare6, Akinnola Akintunde7, Jeffrey W. White8, Mark Wilkinson9, Caterina Caracciolo10,
Fabrizio Celli10, Graham McLaren4
1Bioversity

International, France, 2International Center for Tropical Agriculture (CIAT), Colombia, 3Genetic Resources Program (GRP), Centro
Internacional de Mejoramiento de Maíz y Trigo (CIMMYT), Mexico, 4Generation Challenge Programme (GCP) c/o CIMMYT, 5 UR Plant Breeding, Univ.
of Wageningen, The Netherlands, 6 International Maize and Wheat Improvement Center - South Asia Regional Office (CIMMYT-SARO), NepaL,
7International Black Sea University (IBSU) Georgia, 9 Centro de Biotecnología y Genómica de Plantas UPM-INIA, Spain, 10Food and Agriculture
Organization (FAO) of the United Nations, Office for Partnership, Italy

Generation Challenge Programme Workshop, 13th January 2014
In Plant and Animal Genomics Conference, San Diego, USA, 11-15th January 2014
CGIAR Crop Lead Centers

Since 2008
The scientific context
The Knowledge domain:
plant breeding
Understanding the relationships between plant
genotype and environment, develop the
adaptive traits to respond to biotic and abiotic
stress, promote the adequate agronomic
practices to cultivate it and understand the
heritability of adaptive traits
Dimensions of a phenotype
Environmental
Conditions

Cultural
Socio Economic

Light

Agronomic
Developmental

Water
Nutrients
Temperature

Physiologica
l
Chemical
Molecular

Soil

Understanding the GxE
interaction and the
heritability of adaptive
traits

Time
High Throughput Data Generation
needs standardized trait concepts
• Next Generation Sequencing (NGS) platforms for
detailed analysis of largest plant genomes

• Phenotyping platforms measure a wide range of
structural and functional plant traits at the same time as
collecting meticulous metadata on the environment and
experimental setup [Fiorani and Schurr, 2013]

•GWAS typically focus on associations between a
single-nucleotide polymorphisms (SNPs) and traits.
Developing
the Crop Ontology content as
a Community of Practice
•

Harmonization and access to data
‘Fruit colour‘
Breeders’ data are often

•

unstructured data - Complex
free text used for phenotypes
description
No semantic coherence :

Bean pod color

•

•

•

Same trait given different
names by scientists
One trait named the same way Rice grain or
for various species but refers to caryopsis colour
different plant structures

Data and metadata are NOT
interoperable and often not
online

Maize Kernel
Colour
Integrated Breeding Platform
www.integratedbreeding.net
•

one-stop shop for services to design and carry out
breeding projects – Integrated breeding workflow

•

Breeders’s databases share a common schema and are
being published online

•

IB Fielbook is available with a standard list of traits per
crop
Phenotype
It is a composite of an entity (e.g. fruit) and an
attribute (e.g. shape) with a value (e.g. round):

Entity + Attribute = Trait
Entity + (Attribute + Value) = Phenotype
(observed)

fruit + (shape + round) = fruit shape round
-> round fruit is the phenotype
A range of controlled vocabularies

Web 2.0

 From the controlled vocabularies build valid semantic ontologies consumabke
by Web 2.0
Best practices
Crop Ontology
• Crop Ontology is primarily an application
Ontology for fielbooks
• A visualization tool supporting communitybased development tool of trait
dictionaries and crop specific ontologies
• Compare and validate terms in common

Rosemary Shretha, CIMMYT
CO coordinator until 2012,
Community based development
process
•
•

•
•
•

Domain experts (breeders, pathologists, agronomists, etc) and
Data managers identify the list of concepts
For an variety evaluation project, Data Managers and
breeders produce the IBfieldbook template with the traits and
submit new terms
Crop ontology curators in the Crop Lead centers curate,
validate, compile the list and upload on the site
The Global Crop Ontology Curator curates the crop ontology
with the Crop Lead Centers’ curators
Web development expert maintains the site
Crop curators and associated scientists
Crop Ontology themes
General germplasm information
Phenotype and traits
Plant anatomy and development
Location and environment
Trial management and experimental
design
Structural and functional genomics
Traits and Phenotypes
Crop Ontology
www.cropontology.org
14 CGP crops

• Banana
• Cassava
• Chickpea
• Common beans
• Cowpea
• Groundnut
• Maize

• Pearl millet
• Pigeon Pea
• Potato
• Rice
• Sorghum
• Wheat
• Yam

For 2014, adding
 Barley
 Lentil
 Soybean
 Sweet Potato
Ontology Engineering
• With OBO-edit - http://oboedit.org/
• Creating multi-relationships between concepts
• cross referencing with Plant Ontology and Trait
Ontology
Trait Description
Crop Trait Dictionary Template
simple to share with breeders
Name of submitting
scientist
Institution
Language of submission
Date of submission
Bibliographic Reference
Comments

n

Method ID
Name of Method
Describe how measured (method)
Growth Stage
Field, greenhouse
1

1

Crop Name
Name of Trait
Abbreviated name
Synonyms (separate by commas)
Trait ID for modification, Blank for New
Description of Trait
How is this trait routinely used?
Trait Class

n
Scale ID
Type of Measure (Continuous, Discrete or
Categorical)
For Continuous: units of measurement,
reporting units, minimum. maximum
For Discrete: Name of scale or
units of measurement
For Categorical: Name of rating scale, Class #
value = meaning
Online visualization of Trait dictionaries
Methods & Scales for annotations

• Precomposed relationships between Trait, Methods and
Scales required for annotations in phenotype databases
• On going discussion for revising the structure and get the 3
separated in 3 namespaces
Methods & scales for the
standard lists of the Breeders’ fieldbook

Visualization & download
In Crop database and
Fieldbook template
Easy to use the site - Partners published
their Trait ontologies

Soybean

Solanaceae
France

Grape
Barley
Multilingual versions of the crop ontologies

Multiple languages
Experimental design ontology
Trial management tasks
•

CROP - PLANTING

•

SEED TREATMENT

•

IRRIGATION

•

FERTILIZER

•

PESTICIDE

•

SOIL

•

BIOTIC STRESS

•

ABIOTIC STRESS

•

HARVEST-YIELD

Medha Devare
CSISA-Nepal Coordinator, CIMMYT –SARO
Design of the Fieldbook and coordination

Akinnola Akintunde,
International Black Sea Univ. (IBSU), Georgia
Development of the ontology and fieldbook
Dictionary for Trial Management
Concepts

From Medha Devare, CSISA-Nepal Coordinator
CIMMYT -SARO
Environmental Ontology

Jeffrey W. White
Research Plant Physiologist & Research Leader
Arid-Land Agricultural Research Center
USDA-ARS, Arizona, USA

Sheryl Porter
Coordinator, Computer Research Applications
University of Florida, Gainesville, FL, USA
Environment Ontology and
Trial management Ontology
Environmental Ontology
• Improve the current list of concepts
•International Consortium for Agricultural
System Applications (ICASA)
• Integration of a Master list of 600 variables
for describing crop management and
recording plant responses.
• ICASA promotes the use of standards in
relation to crop field research and for
ecophysiological models.
• One objective is the application of ICASA
variables by the Agricultural Model
Intercomparison and Improvement Project
(AgMIP) (http://www.agmip.org/ ).
Synchronization with the Crop databases
and IBWS
Synchronization of Crop Ontology
with Integrated Breeding Workflow
Graham Mc Laren,
Generation Challenge
Programme

Rebecca Berrigan,
Efficio Technology
Service

Arllet Portugal
IBP Data Management Leader

Luca Matteis, CO Web Site
developer, Bioversity
International
Harold Durufle, CO curator,
Bioversity International
Application Programming Interface
(API)
• Developed by Luca Matteis
• Provide access services to 3rd party web sites or software
• Support open collaboration and use of the Crop Ontology
Local Databases
Breeders & Data Managers

Breeders’
Trait Dictionaries

Crop Database
Data Manager

Curation of the Crop
Ontology

Fieldbook Template

Data Annotation
& new terms addition

Cross referencing terms with Plant Ontology &Trait Ontology
Submission of new traits through the term tracker
IBWS - Key elements of the Logical
Data Model to store phenotypic data
Annotation for storing phenotypic data in
the IBWS
Property (Trait)- CO_ID
Requires
Method - CO_ID
3 namespaces
Scale – CO_ID
continuous
discrete
categorical
Class1-value – CO_ID
Class2-value – CO_ID
Class3-value – CO_ID
A unique combination of IDs for P+M+S+C
= A Standard Variable
Is_a_valid_value_of
Data

Controlled
vocabulary

Term ID
Synchronization flow
The IBWS accepts updates sent by Crop ontologies

Schema from Rebecca Berrigan, Efficio LLC
Synchronization flow
Crop ontology accepts new addition from local ontologies

Schema from Rebecca Berrigan, Efficio LLC
The crop Ontology web site
A Concept name server on the Cloud

Luca Matteis, Web developer, Bioversity International
Crop
Ontology
API access by

rd
3

Party Web sites

IBP Crop Databases

IB Fieldbook

Genotype Data MS

[Text]
API
Phenomics Ontology
Driven DB (PODD)

EU-SOL
Solanaceae Breeding DB
Wageningen.

[Text]
International cassava DB

Agtrials -CCAFS
Global Agricultural Trial Repository
and database
www.agtrials.org
Glenn Hyman, geographer, CIAT

Herlin R. Espinosa G. , web developper, CIAT

Luca Matteis, Web developer, Bioversity International
Global Agricultural Trial Repository
http://www.agtrials.org/
• To store
evaluation data
files described
with metadata
• To produce an
Atlas of the
trials

1,029 trials for
Cassava
1. Annotating Evaluation data files
2. Searching evaluation data files

Agtrials uses the Crop
Ontology trait terms
3. Display the Trial Information

Access to the definition
of the Trait in
the Crop Ontology
Integration of Crop Ontology in IBP
Fred Okono, IBP Project Administrator

Brandon Tooke, IBP web developer

Luca Matteis, CO Web developer, Bioversity
International
Integration of Crop Ontology in IBP
CO Semantic Web Compliance
Marie Angelique Laporte, Ontology
development, RDF & SKOS conversion,
Bioversity International

Luca Matteis, CO Web developer,
Bioversity International

Mark Wilkinson, Centro de Biotecnología y
Genómica de Plantas UPM-INIA, Spain
Linked Open Data Cloud
• A term used to describe a recommended best practice for exposing,
sharing, and connecting pieces of data, information and knowledge
• It builds upon standard Web technologies such as HTTP, RDF and
URIs
• Rather than using them to serve web pages for human readers, it
extends them to share information in a way that can be read
automatically by computers.
Wikipedia
• This enables data from different sources to be connected and
queried.
Crop Ontology in the Linked Open Data
recommended format
•

Conversion from OBO to RDF/SKOS
resolvable HTTP URIs

•

A conversion into Simple Knowledge Organization
System (SKOS) is going on
<http://www.cropontology.org/rdf/CO_324:0000002>
a
skos:Concept ;
rdfs:label "Flag leaf weight"@en ;
dc:creator _:b1 ;
skos:definition "Weight of the flag leaf (the one just below the
panicle)." ;
skos:inScheme co:sorghum ;
skosxl:prefLabel
[a
skosxl:Label ;
co:acronym
[a
skosxl:Label ;
skosxl:literalForm "FLGWT"
];
skosxl:literalForm "Flag leaf weight"@en
].
Linked Open Data publishing and
Aligning Crop Ontology with
AGROVOC
Caterina Caracciolo,
Food and Agriculture
Organization (FAO),
AIMES, Italy
Fabrizzio Celli,
Food and Agriculture
Organization (FAO),
AIMES, Italy

Marie Angelique Laporte,
Bioversity International

Luca MatteisBioversity
International
Agrovoc - Agricultural Thesaurus

•

32,000 concepts organized in a hierarchy

•

each concept may have labels in up to 22 languages

•

is now available as a linked data set published,
aligned (linked) with several vocabularies
Release of Agris 2.0
agris.fao.org
• AGRIS bibliographic records contain rich metadata and are largely
indexed by AGROVOC FAO’s multilingual thesaurus
AGRIS 2.0 and Phenotypic Data
• AGRIS 2.0 uses the Linked Open Data Methodology to link
various source of data in the mash up site
• Proof of concept done with the Collecting mission database of
Bioversity International
• 3 steps
1.

The AGRIS datasets were converted to RDF creating some 200
million triples. AGROVOC was aligned to other thesauri.

2.

Sparql endpoints, web services and APIs were discovered.

3.

AGRIS RDF was interlinked – using AGROVOC LOD as a backbone
– to external datasets.

• Align Crop Ontology with AGROVOC in SKOS/RDF
• Promote the publishing of Phenotypic data into RDF
• Objective : Retrieve bibliographic references and data from
phenotypic databases in the mash up site
Partners collaborating to the informatics
and integration formats
• IBFieldbook and IBWS teams and Efficio LLC
• Plant Breeding dept. of Wageningen for the
Resource Description Format (RDF)
• CIAT-DAPA, for the synchronization of The Global
Repository of Evaluation trials (Agtrials) of CCAFS
• FAO-AIMES for the use of Linked Open data with
AGRIS 2.0
Partners collaborating to the content
engineering & the looking forward to a
Reference Ontology for plants
•

Plant Ontology, Jaiswal Lab., Oregon State University,
USA

•

Soybase, USDA-ARS, USA

•

Solanaceae Genomic Network (SGN), USA

•

Cornell University, USA

•

Institut National de Recherche d’Agronomie (INRA),
France

•

Centro de Biotecnología y Genómica de Plantas UPMINIA, Spain

•

POLAPGEN, Poland

•

Australian Plant Phenomics Data Repository
Any questions, please contact us
Send a mail at :
e.arnaud@cgiar.org
h.durufle@cgiar.org
l.matteis@cgiar.org
helpdesk@cropontology-curationtool.org

Poster #981
Plant Genomics Outreach Booth # 305

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PAG XXII 2014 – The Crop Ontology: A resource for enabling access to breeders’ data – E Arnaud

  • 1. http://www.cropontology.org The Crop Ontology a resource for enabling access to breeders’ data Elizabeth Arnaud1*, Luca Matteis1, Marie Angelique Laporte1, Herlin Espinosa2, Glenn Hyman2, Rosemary Shrestha3, Arlett Portugal4, Pierre Yves Chibon5, Medha Devare6, Akinnola Akintunde7, Jeffrey W. White8, Mark Wilkinson9, Caterina Caracciolo10, Fabrizio Celli10, Graham McLaren4 1Bioversity International, France, 2International Center for Tropical Agriculture (CIAT), Colombia, 3Genetic Resources Program (GRP), Centro Internacional de Mejoramiento de Maíz y Trigo (CIMMYT), Mexico, 4Generation Challenge Programme (GCP) c/o CIMMYT, 5 UR Plant Breeding, Univ. of Wageningen, The Netherlands, 6 International Maize and Wheat Improvement Center - South Asia Regional Office (CIMMYT-SARO), NepaL, 7International Black Sea University (IBSU) Georgia, 9 Centro de Biotecnología y Genómica de Plantas UPM-INIA, Spain, 10Food and Agriculture Organization (FAO) of the United Nations, Office for Partnership, Italy Generation Challenge Programme Workshop, 13th January 2014 In Plant and Animal Genomics Conference, San Diego, USA, 11-15th January 2014
  • 2. CGIAR Crop Lead Centers Since 2008
  • 4. The Knowledge domain: plant breeding Understanding the relationships between plant genotype and environment, develop the adaptive traits to respond to biotic and abiotic stress, promote the adequate agronomic practices to cultivate it and understand the heritability of adaptive traits
  • 5. Dimensions of a phenotype Environmental Conditions Cultural Socio Economic Light Agronomic Developmental Water Nutrients Temperature Physiologica l Chemical Molecular Soil Understanding the GxE interaction and the heritability of adaptive traits Time
  • 6. High Throughput Data Generation needs standardized trait concepts • Next Generation Sequencing (NGS) platforms for detailed analysis of largest plant genomes • Phenotyping platforms measure a wide range of structural and functional plant traits at the same time as collecting meticulous metadata on the environment and experimental setup [Fiorani and Schurr, 2013] •GWAS typically focus on associations between a single-nucleotide polymorphisms (SNPs) and traits.
  • 7. Developing the Crop Ontology content as a Community of Practice
  • 8. • Harmonization and access to data ‘Fruit colour‘ Breeders’ data are often • unstructured data - Complex free text used for phenotypes description No semantic coherence : Bean pod color • • • Same trait given different names by scientists One trait named the same way Rice grain or for various species but refers to caryopsis colour different plant structures Data and metadata are NOT interoperable and often not online Maize Kernel Colour
  • 9. Integrated Breeding Platform www.integratedbreeding.net • one-stop shop for services to design and carry out breeding projects – Integrated breeding workflow • Breeders’s databases share a common schema and are being published online • IB Fielbook is available with a standard list of traits per crop
  • 10. Phenotype It is a composite of an entity (e.g. fruit) and an attribute (e.g. shape) with a value (e.g. round): Entity + Attribute = Trait Entity + (Attribute + Value) = Phenotype (observed) fruit + (shape + round) = fruit shape round -> round fruit is the phenotype
  • 11. A range of controlled vocabularies Web 2.0  From the controlled vocabularies build valid semantic ontologies consumabke by Web 2.0 Best practices
  • 12. Crop Ontology • Crop Ontology is primarily an application Ontology for fielbooks • A visualization tool supporting communitybased development tool of trait dictionaries and crop specific ontologies • Compare and validate terms in common Rosemary Shretha, CIMMYT CO coordinator until 2012,
  • 13. Community based development process • • • • • Domain experts (breeders, pathologists, agronomists, etc) and Data managers identify the list of concepts For an variety evaluation project, Data Managers and breeders produce the IBfieldbook template with the traits and submit new terms Crop ontology curators in the Crop Lead centers curate, validate, compile the list and upload on the site The Global Crop Ontology Curator curates the crop ontology with the Crop Lead Centers’ curators Web development expert maintains the site
  • 14. Crop curators and associated scientists
  • 15. Crop Ontology themes General germplasm information Phenotype and traits Plant anatomy and development Location and environment Trial management and experimental design Structural and functional genomics
  • 17. Crop Ontology www.cropontology.org 14 CGP crops • Banana • Cassava • Chickpea • Common beans • Cowpea • Groundnut • Maize • Pearl millet • Pigeon Pea • Potato • Rice • Sorghum • Wheat • Yam For 2014, adding  Barley  Lentil  Soybean  Sweet Potato
  • 18. Ontology Engineering • With OBO-edit - http://oboedit.org/ • Creating multi-relationships between concepts • cross referencing with Plant Ontology and Trait Ontology
  • 20. Crop Trait Dictionary Template simple to share with breeders Name of submitting scientist Institution Language of submission Date of submission Bibliographic Reference Comments n Method ID Name of Method Describe how measured (method) Growth Stage Field, greenhouse 1 1 Crop Name Name of Trait Abbreviated name Synonyms (separate by commas) Trait ID for modification, Blank for New Description of Trait How is this trait routinely used? Trait Class n Scale ID Type of Measure (Continuous, Discrete or Categorical) For Continuous: units of measurement, reporting units, minimum. maximum For Discrete: Name of scale or units of measurement For Categorical: Name of rating scale, Class # value = meaning
  • 21. Online visualization of Trait dictionaries
  • 22. Methods & Scales for annotations • Precomposed relationships between Trait, Methods and Scales required for annotations in phenotype databases • On going discussion for revising the structure and get the 3 separated in 3 namespaces
  • 23. Methods & scales for the standard lists of the Breeders’ fieldbook Visualization & download In Crop database and Fieldbook template
  • 24. Easy to use the site - Partners published their Trait ontologies Soybean Solanaceae France Grape Barley
  • 25. Multilingual versions of the crop ontologies Multiple languages
  • 26. Experimental design ontology Trial management tasks • CROP - PLANTING • SEED TREATMENT • IRRIGATION • FERTILIZER • PESTICIDE • SOIL • BIOTIC STRESS • ABIOTIC STRESS • HARVEST-YIELD Medha Devare CSISA-Nepal Coordinator, CIMMYT –SARO Design of the Fieldbook and coordination Akinnola Akintunde, International Black Sea Univ. (IBSU), Georgia Development of the ontology and fieldbook
  • 27. Dictionary for Trial Management Concepts From Medha Devare, CSISA-Nepal Coordinator CIMMYT -SARO
  • 28. Environmental Ontology Jeffrey W. White Research Plant Physiologist & Research Leader Arid-Land Agricultural Research Center USDA-ARS, Arizona, USA Sheryl Porter Coordinator, Computer Research Applications University of Florida, Gainesville, FL, USA
  • 29. Environment Ontology and Trial management Ontology
  • 30. Environmental Ontology • Improve the current list of concepts •International Consortium for Agricultural System Applications (ICASA) • Integration of a Master list of 600 variables for describing crop management and recording plant responses. • ICASA promotes the use of standards in relation to crop field research and for ecophysiological models. • One objective is the application of ICASA variables by the Agricultural Model Intercomparison and Improvement Project (AgMIP) (http://www.agmip.org/ ).
  • 31. Synchronization with the Crop databases and IBWS
  • 32. Synchronization of Crop Ontology with Integrated Breeding Workflow Graham Mc Laren, Generation Challenge Programme Rebecca Berrigan, Efficio Technology Service Arllet Portugal IBP Data Management Leader Luca Matteis, CO Web Site developer, Bioversity International Harold Durufle, CO curator, Bioversity International
  • 33. Application Programming Interface (API) • Developed by Luca Matteis • Provide access services to 3rd party web sites or software • Support open collaboration and use of the Crop Ontology
  • 34. Local Databases Breeders & Data Managers Breeders’ Trait Dictionaries Crop Database Data Manager Curation of the Crop Ontology Fieldbook Template Data Annotation & new terms addition Cross referencing terms with Plant Ontology &Trait Ontology Submission of new traits through the term tracker
  • 35. IBWS - Key elements of the Logical Data Model to store phenotypic data
  • 36. Annotation for storing phenotypic data in the IBWS Property (Trait)- CO_ID Requires Method - CO_ID 3 namespaces Scale – CO_ID continuous discrete categorical Class1-value – CO_ID Class2-value – CO_ID Class3-value – CO_ID A unique combination of IDs for P+M+S+C = A Standard Variable Is_a_valid_value_of Data Controlled vocabulary Term ID
  • 37. Synchronization flow The IBWS accepts updates sent by Crop ontologies Schema from Rebecca Berrigan, Efficio LLC
  • 38. Synchronization flow Crop ontology accepts new addition from local ontologies Schema from Rebecca Berrigan, Efficio LLC
  • 39. The crop Ontology web site A Concept name server on the Cloud Luca Matteis, Web developer, Bioversity International
  • 41. API access by rd 3 Party Web sites IBP Crop Databases IB Fieldbook Genotype Data MS [Text] API Phenomics Ontology Driven DB (PODD) EU-SOL Solanaceae Breeding DB Wageningen. [Text] International cassava DB Agtrials -CCAFS
  • 42. Global Agricultural Trial Repository and database www.agtrials.org Glenn Hyman, geographer, CIAT Herlin R. Espinosa G. , web developper, CIAT Luca Matteis, Web developer, Bioversity International
  • 43. Global Agricultural Trial Repository http://www.agtrials.org/ • To store evaluation data files described with metadata • To produce an Atlas of the trials 1,029 trials for Cassava
  • 45. 2. Searching evaluation data files Agtrials uses the Crop Ontology trait terms
  • 46. 3. Display the Trial Information Access to the definition of the Trait in the Crop Ontology
  • 47. Integration of Crop Ontology in IBP Fred Okono, IBP Project Administrator Brandon Tooke, IBP web developer Luca Matteis, CO Web developer, Bioversity International
  • 48. Integration of Crop Ontology in IBP
  • 49. CO Semantic Web Compliance Marie Angelique Laporte, Ontology development, RDF & SKOS conversion, Bioversity International Luca Matteis, CO Web developer, Bioversity International Mark Wilkinson, Centro de Biotecnología y Genómica de Plantas UPM-INIA, Spain
  • 50. Linked Open Data Cloud • A term used to describe a recommended best practice for exposing, sharing, and connecting pieces of data, information and knowledge • It builds upon standard Web technologies such as HTTP, RDF and URIs • Rather than using them to serve web pages for human readers, it extends them to share information in a way that can be read automatically by computers. Wikipedia • This enables data from different sources to be connected and queried.
  • 51. Crop Ontology in the Linked Open Data recommended format • Conversion from OBO to RDF/SKOS resolvable HTTP URIs • A conversion into Simple Knowledge Organization System (SKOS) is going on <http://www.cropontology.org/rdf/CO_324:0000002> a skos:Concept ; rdfs:label "Flag leaf weight"@en ; dc:creator _:b1 ; skos:definition "Weight of the flag leaf (the one just below the panicle)." ; skos:inScheme co:sorghum ; skosxl:prefLabel [a skosxl:Label ; co:acronym [a skosxl:Label ; skosxl:literalForm "FLGWT" ]; skosxl:literalForm "Flag leaf weight"@en ].
  • 52. Linked Open Data publishing and Aligning Crop Ontology with AGROVOC Caterina Caracciolo, Food and Agriculture Organization (FAO), AIMES, Italy Fabrizzio Celli, Food and Agriculture Organization (FAO), AIMES, Italy Marie Angelique Laporte, Bioversity International Luca MatteisBioversity International
  • 53. Agrovoc - Agricultural Thesaurus • 32,000 concepts organized in a hierarchy • each concept may have labels in up to 22 languages • is now available as a linked data set published, aligned (linked) with several vocabularies
  • 54. Release of Agris 2.0 agris.fao.org • AGRIS bibliographic records contain rich metadata and are largely indexed by AGROVOC FAO’s multilingual thesaurus
  • 55. AGRIS 2.0 and Phenotypic Data • AGRIS 2.0 uses the Linked Open Data Methodology to link various source of data in the mash up site • Proof of concept done with the Collecting mission database of Bioversity International • 3 steps 1. The AGRIS datasets were converted to RDF creating some 200 million triples. AGROVOC was aligned to other thesauri. 2. Sparql endpoints, web services and APIs were discovered. 3. AGRIS RDF was interlinked – using AGROVOC LOD as a backbone – to external datasets. • Align Crop Ontology with AGROVOC in SKOS/RDF • Promote the publishing of Phenotypic data into RDF • Objective : Retrieve bibliographic references and data from phenotypic databases in the mash up site
  • 56. Partners collaborating to the informatics and integration formats • IBFieldbook and IBWS teams and Efficio LLC • Plant Breeding dept. of Wageningen for the Resource Description Format (RDF) • CIAT-DAPA, for the synchronization of The Global Repository of Evaluation trials (Agtrials) of CCAFS • FAO-AIMES for the use of Linked Open data with AGRIS 2.0
  • 57. Partners collaborating to the content engineering & the looking forward to a Reference Ontology for plants • Plant Ontology, Jaiswal Lab., Oregon State University, USA • Soybase, USDA-ARS, USA • Solanaceae Genomic Network (SGN), USA • Cornell University, USA • Institut National de Recherche d’Agronomie (INRA), France • Centro de Biotecnología y Genómica de Plantas UPMINIA, Spain • POLAPGEN, Poland • Australian Plant Phenomics Data Repository
  • 58. Any questions, please contact us Send a mail at : e.arnaud@cgiar.org h.durufle@cgiar.org l.matteis@cgiar.org helpdesk@cropontology-curationtool.org Poster #981 Plant Genomics Outreach Booth # 305

Notes de l'éditeur

  1. These elements are sufficient for managing phenotyping data from any field experiment, however a sixth component is required to facilitate integration of phenotyping data across studies. This is the Ontology Management System (OMS) which identifies comparable elements – labels, variates and values across studies.
  2. Precomposition for annoattion
  3. Turtle (Terse RDF Triple Language) is a format for expressing data in the Resource Description Framework (RDF) data model, similar to SPARQL.RDF represents information using triples, each of which consist of a subject, predicate and an object. Each of those items is expressed as a web URI