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DRAGON-Data: a platform and protocol for integrating genomic and phenotypic data across large psychiatric cohorts

BACKGROUND: Current psychiatric diagnoses, although heritable, have not been clearly mapped onto distinct underlying pathogenic processes. The same symptoms often occur in multiple disorders, and a substantial proportion of both genetic and environmental risk factors are shared across disorders. How...

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Autores principales: Lynham, Amy J., Knott, Sarah, Underwood, Jack F. G., Hubbard, Leon, Agha, Sharifah S., Bisson, Jonathan I., van den Bree, Marianne B. M., Chawner, Samuel J. R. A., Craddock, Nicholas, O'Donovan, Michael, Jones, Ian R., Kirov, George, Langley, Kate, Martin, Joanna, Rice, Frances, Roberts, Neil P., Thapar, Anita, Anney, Richard, Owen, Michael J., Hall, Jeremy, Pardiñas, Antonio F., Walters, James T. R.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cambridge University Press 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9970169/
https://www.ncbi.nlm.nih.gov/pubmed/36752340
http://dx.doi.org/10.1192/bjo.2022.636
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author Lynham, Amy J.
Knott, Sarah
Underwood, Jack F. G.
Hubbard, Leon
Agha, Sharifah S.
Bisson, Jonathan I.
van den Bree, Marianne B. M.
Chawner, Samuel J. R. A.
Craddock, Nicholas
O'Donovan, Michael
Jones, Ian R.
Kirov, George
Langley, Kate
Martin, Joanna
Rice, Frances
Roberts, Neil P.
Thapar, Anita
Anney, Richard
Owen, Michael J.
Hall, Jeremy
Pardiñas, Antonio F.
Walters, James T. R.
author_facet Lynham, Amy J.
Knott, Sarah
Underwood, Jack F. G.
Hubbard, Leon
Agha, Sharifah S.
Bisson, Jonathan I.
van den Bree, Marianne B. M.
Chawner, Samuel J. R. A.
Craddock, Nicholas
O'Donovan, Michael
Jones, Ian R.
Kirov, George
Langley, Kate
Martin, Joanna
Rice, Frances
Roberts, Neil P.
Thapar, Anita
Anney, Richard
Owen, Michael J.
Hall, Jeremy
Pardiñas, Antonio F.
Walters, James T. R.
author_sort Lynham, Amy J.
collection PubMed
description BACKGROUND: Current psychiatric diagnoses, although heritable, have not been clearly mapped onto distinct underlying pathogenic processes. The same symptoms often occur in multiple disorders, and a substantial proportion of both genetic and environmental risk factors are shared across disorders. However, the relationship between shared symptoms and shared genetic liability is still poorly understood. AIMS: Well-characterised, cross-disorder samples are needed to investigate this matter, but few currently exist. Our aim is to develop procedures to purposely curate and aggregate genotypic and phenotypic data in psychiatric research. METHOD: As part of the Cardiff MRC Mental Health Data Pathfinder initiative, we have curated and harmonised phenotypic and genetic information from 15 studies to create a new data repository, DRAGON-Data. To date, DRAGON-Data includes over 45 000 individuals: adults and children with neurodevelopmental or psychiatric diagnoses, affected probands within collected families and individuals who carry a known neurodevelopmental risk copy number variant. RESULTS: We have processed the available phenotype information to derive core variables that can be reliably analysed across groups. In addition, all data-sets with genotype information have undergone rigorous quality control, imputation, copy number variant calling and polygenic score generation. CONCLUSIONS: DRAGON-Data combines genetic and non-genetic information, and is available as a resource for research across traditional psychiatric diagnostic categories. Algorithms and pipelines used for data harmonisation are currently publicly available for the scientific community, and an appropriate data-sharing protocol will be developed as part of ongoing projects (DATAMIND) in partnership with Health Data Research UK.
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spelling pubmed-99701692023-02-28 DRAGON-Data: a platform and protocol for integrating genomic and phenotypic data across large psychiatric cohorts Lynham, Amy J. Knott, Sarah Underwood, Jack F. G. Hubbard, Leon Agha, Sharifah S. Bisson, Jonathan I. van den Bree, Marianne B. M. Chawner, Samuel J. R. A. Craddock, Nicholas O'Donovan, Michael Jones, Ian R. Kirov, George Langley, Kate Martin, Joanna Rice, Frances Roberts, Neil P. Thapar, Anita Anney, Richard Owen, Michael J. Hall, Jeremy Pardiñas, Antonio F. Walters, James T. R. BJPsych Open Paper BACKGROUND: Current psychiatric diagnoses, although heritable, have not been clearly mapped onto distinct underlying pathogenic processes. The same symptoms often occur in multiple disorders, and a substantial proportion of both genetic and environmental risk factors are shared across disorders. However, the relationship between shared symptoms and shared genetic liability is still poorly understood. AIMS: Well-characterised, cross-disorder samples are needed to investigate this matter, but few currently exist. Our aim is to develop procedures to purposely curate and aggregate genotypic and phenotypic data in psychiatric research. METHOD: As part of the Cardiff MRC Mental Health Data Pathfinder initiative, we have curated and harmonised phenotypic and genetic information from 15 studies to create a new data repository, DRAGON-Data. To date, DRAGON-Data includes over 45 000 individuals: adults and children with neurodevelopmental or psychiatric diagnoses, affected probands within collected families and individuals who carry a known neurodevelopmental risk copy number variant. RESULTS: We have processed the available phenotype information to derive core variables that can be reliably analysed across groups. In addition, all data-sets with genotype information have undergone rigorous quality control, imputation, copy number variant calling and polygenic score generation. CONCLUSIONS: DRAGON-Data combines genetic and non-genetic information, and is available as a resource for research across traditional psychiatric diagnostic categories. Algorithms and pipelines used for data harmonisation are currently publicly available for the scientific community, and an appropriate data-sharing protocol will be developed as part of ongoing projects (DATAMIND) in partnership with Health Data Research UK. Cambridge University Press 2023-02-08 /pmc/articles/PMC9970169/ /pubmed/36752340 http://dx.doi.org/10.1192/bjo.2022.636 Text en © The Author(s) 2023 https://creativecommons.org/licenses/by/4.0/This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
spellingShingle Paper
Lynham, Amy J.
Knott, Sarah
Underwood, Jack F. G.
Hubbard, Leon
Agha, Sharifah S.
Bisson, Jonathan I.
van den Bree, Marianne B. M.
Chawner, Samuel J. R. A.
Craddock, Nicholas
O'Donovan, Michael
Jones, Ian R.
Kirov, George
Langley, Kate
Martin, Joanna
Rice, Frances
Roberts, Neil P.
Thapar, Anita
Anney, Richard
Owen, Michael J.
Hall, Jeremy
Pardiñas, Antonio F.
Walters, James T. R.
DRAGON-Data: a platform and protocol for integrating genomic and phenotypic data across large psychiatric cohorts
title DRAGON-Data: a platform and protocol for integrating genomic and phenotypic data across large psychiatric cohorts
title_full DRAGON-Data: a platform and protocol for integrating genomic and phenotypic data across large psychiatric cohorts
title_fullStr DRAGON-Data: a platform and protocol for integrating genomic and phenotypic data across large psychiatric cohorts
title_full_unstemmed DRAGON-Data: a platform and protocol for integrating genomic and phenotypic data across large psychiatric cohorts
title_short DRAGON-Data: a platform and protocol for integrating genomic and phenotypic data across large psychiatric cohorts
title_sort dragon-data: a platform and protocol for integrating genomic and phenotypic data across large psychiatric cohorts
topic Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9970169/
https://www.ncbi.nlm.nih.gov/pubmed/36752340
http://dx.doi.org/10.1192/bjo.2022.636
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