CTD: a resource for predicting chemical-gene-disease networks Carolyn Mattingly North Carolina State...

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CTD: a resource for predicting chemical-gene- disease networks Carolyn Mattingly North Carolina State University

Transcript of CTD: a resource for predicting chemical-gene-disease networks Carolyn Mattingly North Carolina State...

Page 1: CTD: a resource for predicting chemical-gene-disease networks Carolyn Mattingly North Carolina State University.

CTD: a resource for predicting chemical-gene-disease networks

Carolyn MattinglyNorth Carolina State University

Page 2: CTD: a resource for predicting chemical-gene-disease networks Carolyn Mattingly North Carolina State University.

Chemical landscape

• > 60,000

• ~2,000 added/year

• ~8,000 are carcinogens

• No toxicity data for ~40% of the 3,300 “high production volume” chemicals

• Full toxicity data for only 25% of chemicals in consumer products

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Crofton et al. Congenital Anomalies 2012; 52, 140–146

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Many disorders are on the rise

• Leukemia

• Cancers (Brain, breast, childhood)

• Asthma

• Fertility and full term pregnancies

• Birth defects

• Autism

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How does the environment

affect our health?

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Environment(chemicals)

Disease

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ABC

Evans and Rzhetsky, Science, 329:399 (2010)

AB

+

BC

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C-G interactions

C-D Relationships

G-D Relationships

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Breast Cancer163 Genes

5,896 Genes 57 curated>1,000 inferred

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http://ctdbase.org

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+

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PLoS One. 2012;7(11):e46524.

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Chemical-disease pathways

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CTD Data (June 2013) Status

Curated Chemicals 12,985

Curated Genes 32,464

Curated Diseases 6,354

Chemical-Gene Interactions 869,902

Unique Chemicals 10,150

Unique Genes 31,344

Unique Organisms 492

Curated Gene-Disease Relationship 27,397

Curated Chemical-Disease Relationships 186,986

>300 manuscripts using CTD data>30 public databases incorporating CTD data

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Exposure data

•Grounding CTD data in “real-world” exposure data

•Centralizing exposure data

• Integrating exposure information with other biological data

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Exposure StressorExposure Receptor

Interacts with

Exposure Event

via

Exposure Outcome

to result in

ExO

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Mattingly CJ, McKone TE, Callahan MA, Blake JA, Hubal EA. Environ Sci Technol. 2012. 46(6):3046.

•Status •~50 data points captured

•~3,000 priority articles: 600 curated, 16,000 exposure statements, 300 unique chemicals, 100 diseases

Exposure data

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Exposure data

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Basics Exposure Studies

bisphenol A

Exposure Levels

The following are measured exposure levels of bisphenol A or its descendants curated from various Exposure Studies.Click on DETAILS to find more information about the measurement and conditions of the study.

displays the actual

measurements curated from

multiple papers, providing a view of the different

ranges

displays the actual

measurements curated from

multiple papers, providing a view of the different

ranges

data displayed if chemical or its descendant is in the

“Stressor” or “Biomarker” column

data displayed if chemical or its descendant is in the

“Stressor” or “Biomarker” column

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Phenotype-disease curation

HypertensionHypotensionArrhythmias, Cardiac

Blood PressureHeart RateVasoconstriction

DiseasePhenotype

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Phenotype-disease analysis

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Nagiza Samatova. NCSU

Phenotype-disease analysis

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Scientific Curators

Allan Peter Davis

Cindy Murphy

Cynthia Richards

Kelley Lennon-Hopkins

Daniela Sciaky

Jean Lay

Scientific Software Engineers

Michael C. Rosenstein

Thomas Wiegers

Biostatistician

Benjamin King, MS

System Administrator

Roy McMorran

Funding

Acknowledgements