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Algorithms for the Capture and Adjudication of Prevalent and Incident Diabetes in UK Biobank

OBJECTIVES: UK Biobank is a UK-wide cohort of 502,655 people aged 40–69, recruited from National Health Service registrants between 2006–10, with healthcare data linkage. Type 2 diabetes is a key exposure and outcome. We developed algorithms to define prevalent and incident diabetes for UK Biobank....

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Autores principales: Eastwood, Sophie V, Mathur, Rohini, Atkinson, Mark, Brophy, Sinead, Sudlow, Cathie, Flaig, Robin, de Lusignan, Simon, Allen, Naomi, Chaturvedi, Nishi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5025160/
https://www.ncbi.nlm.nih.gov/pubmed/27631769
http://dx.doi.org/10.1371/journal.pone.0162388
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author Eastwood, Sophie V
Mathur, Rohini
Atkinson, Mark
Brophy, Sinead
Sudlow, Cathie
Flaig, Robin
de Lusignan, Simon
Allen, Naomi
Chaturvedi, Nishi
author_facet Eastwood, Sophie V
Mathur, Rohini
Atkinson, Mark
Brophy, Sinead
Sudlow, Cathie
Flaig, Robin
de Lusignan, Simon
Allen, Naomi
Chaturvedi, Nishi
author_sort Eastwood, Sophie V
collection PubMed
description OBJECTIVES: UK Biobank is a UK-wide cohort of 502,655 people aged 40–69, recruited from National Health Service registrants between 2006–10, with healthcare data linkage. Type 2 diabetes is a key exposure and outcome. We developed algorithms to define prevalent and incident diabetes for UK Biobank. The algorithms will be implemented by UK Biobank and their results made available to researchers on request. METHODS: We used UK Biobank self-reported medical history and medication to assign prevalent diabetes and type, and tested this against linked primary and secondary care data in Welsh UK Biobank participants. Additionally, we derived and tested algorithms for incident diabetes using linked primary and secondary care data in the English Clinical Practice Research Datalink, and ran these on secondary care data in UK Biobank. RESULTS AND SIGNIFICANCE: For prevalent diabetes, 0.001% and 0.002% of people classified as “diabetes unlikely” in UK Biobank had evidence of diabetes in their primary or secondary care record respectively. Of those classified as “probable” type 2 diabetes, 75% and 96% had specific type 2 diabetes codes in their primary and secondary care records. For incidence, 95% of people with the type 2 diabetes-specific C10F Read code in primary care had corroborative evidence of diabetes from medications, blood testing or diabetes specific process of care codes. Only 41% of people identified with type 2 diabetes in primary care had secondary care evidence of type 2 diabetes. In contrast, of incident cases using ICD-10 type 2 diabetes specific codes in secondary care, 77% had corroborative evidence of diabetes in primary care. We suggest our definition of prevalent diabetes from UK Biobank baseline data has external validity, and recommend that specific primary care Read codes should be used for incident diabetes to ensure precision. Secondary care data should be used for incident diabetes with caution, as around half of all cases are missed, and a quarter have no corroborative evidence of diabetes in primary care.
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spelling pubmed-50251602016-09-27 Algorithms for the Capture and Adjudication of Prevalent and Incident Diabetes in UK Biobank Eastwood, Sophie V Mathur, Rohini Atkinson, Mark Brophy, Sinead Sudlow, Cathie Flaig, Robin de Lusignan, Simon Allen, Naomi Chaturvedi, Nishi PLoS One Research Article OBJECTIVES: UK Biobank is a UK-wide cohort of 502,655 people aged 40–69, recruited from National Health Service registrants between 2006–10, with healthcare data linkage. Type 2 diabetes is a key exposure and outcome. We developed algorithms to define prevalent and incident diabetes for UK Biobank. The algorithms will be implemented by UK Biobank and their results made available to researchers on request. METHODS: We used UK Biobank self-reported medical history and medication to assign prevalent diabetes and type, and tested this against linked primary and secondary care data in Welsh UK Biobank participants. Additionally, we derived and tested algorithms for incident diabetes using linked primary and secondary care data in the English Clinical Practice Research Datalink, and ran these on secondary care data in UK Biobank. RESULTS AND SIGNIFICANCE: For prevalent diabetes, 0.001% and 0.002% of people classified as “diabetes unlikely” in UK Biobank had evidence of diabetes in their primary or secondary care record respectively. Of those classified as “probable” type 2 diabetes, 75% and 96% had specific type 2 diabetes codes in their primary and secondary care records. For incidence, 95% of people with the type 2 diabetes-specific C10F Read code in primary care had corroborative evidence of diabetes from medications, blood testing or diabetes specific process of care codes. Only 41% of people identified with type 2 diabetes in primary care had secondary care evidence of type 2 diabetes. In contrast, of incident cases using ICD-10 type 2 diabetes specific codes in secondary care, 77% had corroborative evidence of diabetes in primary care. We suggest our definition of prevalent diabetes from UK Biobank baseline data has external validity, and recommend that specific primary care Read codes should be used for incident diabetes to ensure precision. Secondary care data should be used for incident diabetes with caution, as around half of all cases are missed, and a quarter have no corroborative evidence of diabetes in primary care. Public Library of Science 2016-09-15 /pmc/articles/PMC5025160/ /pubmed/27631769 http://dx.doi.org/10.1371/journal.pone.0162388 Text en © 2016 Eastwood et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Eastwood, Sophie V
Mathur, Rohini
Atkinson, Mark
Brophy, Sinead
Sudlow, Cathie
Flaig, Robin
de Lusignan, Simon
Allen, Naomi
Chaturvedi, Nishi
Algorithms for the Capture and Adjudication of Prevalent and Incident Diabetes in UK Biobank
title Algorithms for the Capture and Adjudication of Prevalent and Incident Diabetes in UK Biobank
title_full Algorithms for the Capture and Adjudication of Prevalent and Incident Diabetes in UK Biobank
title_fullStr Algorithms for the Capture and Adjudication of Prevalent and Incident Diabetes in UK Biobank
title_full_unstemmed Algorithms for the Capture and Adjudication of Prevalent and Incident Diabetes in UK Biobank
title_short Algorithms for the Capture and Adjudication of Prevalent and Incident Diabetes in UK Biobank
title_sort algorithms for the capture and adjudication of prevalent and incident diabetes in uk biobank
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5025160/
https://www.ncbi.nlm.nih.gov/pubmed/27631769
http://dx.doi.org/10.1371/journal.pone.0162388
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