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Development and external validation of a clinical prediction model to aid coeliac disease diagnosis in primary care: An observational study

BACKGROUND: Coeliac disease (CD) affects approximately 1% of the population, although only a fraction of patients are diagnosed. Our objective was to develop diagnostic prediction models to help decide who should be offered testing for CD in primary care. METHODS: Logistic regression models were dev...

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Autores principales: Elwenspoek, Martha M.C., O'Donnell, Rachel, Jackson, Joni, Everitt, Hazel, Gillett, Peter, Hay, Alastair D., Jones, Hayley E., Robins, Gerry, Watson, Jessica C., Mallett, Sue, Whiting, Penny
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9011008/
https://www.ncbi.nlm.nih.gov/pubmed/35434586
http://dx.doi.org/10.1016/j.eclinm.2022.101376
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author Elwenspoek, Martha M.C.
O'Donnell, Rachel
Jackson, Joni
Everitt, Hazel
Gillett, Peter
Hay, Alastair D.
Jones, Hayley E.
Robins, Gerry
Watson, Jessica C.
Mallett, Sue
Whiting, Penny
author_facet Elwenspoek, Martha M.C.
O'Donnell, Rachel
Jackson, Joni
Everitt, Hazel
Gillett, Peter
Hay, Alastair D.
Jones, Hayley E.
Robins, Gerry
Watson, Jessica C.
Mallett, Sue
Whiting, Penny
author_sort Elwenspoek, Martha M.C.
collection PubMed
description BACKGROUND: Coeliac disease (CD) affects approximately 1% of the population, although only a fraction of patients are diagnosed. Our objective was to develop diagnostic prediction models to help decide who should be offered testing for CD in primary care. METHODS: Logistic regression models were developed in Clinical Practice Research Datalink (CPRD) GOLD (between Sep 9, 1987 and Apr 4, 2021, n=107,075) and externally validated in CPRD Aurum (between Jan 1, 1995 and Jan 15, 2021, n=227,915), two UK primary care databases, using (and controlling for) 1:4 nested case-control designs. Candidate predictors included symptoms and chronic conditions identified in current guidelines and using a systematic review of the literature. We used elastic-net regression to further refine the models. FINDINGS: The prediction model included 24, 24, and 21 predictors for children, women, and men, respectively. For children, the strongest predictors were type 1 diabetes, Turner syndrome, IgA deficiency, or first-degree relatives with CD. For women and men, these were anaemia and first-degree relatives. In the development dataset, the models showed good discrimination with a c-statistic of 0·84 (95% CI 0·83–0·84) in children, 0·77 (0·77–0·78) in women, and 0·81 (0·81–0·82) in men. External validation discrimination was lower, potentially because ‘first-degree relative’ was not recorded in the dataset used for validation. Model calibration was poor, tending to overestimate CD risk in all three groups in both datasets. INTERPRETATION: These prediction models could help identify individuals with an increased risk of CD in relatively low prevalence populations such as primary care. Offering a serological test to these patients could increase case finding for CD. However, this involves offering tests to more people than is currently done. Further work is needed in prospective cohorts to refine and confirm the models and assess clinical and cost effectiveness. FUNDING: National Institute for Health Research Health Technology Assessment Programme (grant number NIHR129020)
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spelling pubmed-90110082022-04-16 Development and external validation of a clinical prediction model to aid coeliac disease diagnosis in primary care: An observational study Elwenspoek, Martha M.C. O'Donnell, Rachel Jackson, Joni Everitt, Hazel Gillett, Peter Hay, Alastair D. Jones, Hayley E. Robins, Gerry Watson, Jessica C. Mallett, Sue Whiting, Penny EClinicalMedicine Articles BACKGROUND: Coeliac disease (CD) affects approximately 1% of the population, although only a fraction of patients are diagnosed. Our objective was to develop diagnostic prediction models to help decide who should be offered testing for CD in primary care. METHODS: Logistic regression models were developed in Clinical Practice Research Datalink (CPRD) GOLD (between Sep 9, 1987 and Apr 4, 2021, n=107,075) and externally validated in CPRD Aurum (between Jan 1, 1995 and Jan 15, 2021, n=227,915), two UK primary care databases, using (and controlling for) 1:4 nested case-control designs. Candidate predictors included symptoms and chronic conditions identified in current guidelines and using a systematic review of the literature. We used elastic-net regression to further refine the models. FINDINGS: The prediction model included 24, 24, and 21 predictors for children, women, and men, respectively. For children, the strongest predictors were type 1 diabetes, Turner syndrome, IgA deficiency, or first-degree relatives with CD. For women and men, these were anaemia and first-degree relatives. In the development dataset, the models showed good discrimination with a c-statistic of 0·84 (95% CI 0·83–0·84) in children, 0·77 (0·77–0·78) in women, and 0·81 (0·81–0·82) in men. External validation discrimination was lower, potentially because ‘first-degree relative’ was not recorded in the dataset used for validation. Model calibration was poor, tending to overestimate CD risk in all three groups in both datasets. INTERPRETATION: These prediction models could help identify individuals with an increased risk of CD in relatively low prevalence populations such as primary care. Offering a serological test to these patients could increase case finding for CD. However, this involves offering tests to more people than is currently done. Further work is needed in prospective cohorts to refine and confirm the models and assess clinical and cost effectiveness. FUNDING: National Institute for Health Research Health Technology Assessment Programme (grant number NIHR129020) Elsevier 2022-04-07 /pmc/articles/PMC9011008/ /pubmed/35434586 http://dx.doi.org/10.1016/j.eclinm.2022.101376 Text en © 2022 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Articles
Elwenspoek, Martha M.C.
O'Donnell, Rachel
Jackson, Joni
Everitt, Hazel
Gillett, Peter
Hay, Alastair D.
Jones, Hayley E.
Robins, Gerry
Watson, Jessica C.
Mallett, Sue
Whiting, Penny
Development and external validation of a clinical prediction model to aid coeliac disease diagnosis in primary care: An observational study
title Development and external validation of a clinical prediction model to aid coeliac disease diagnosis in primary care: An observational study
title_full Development and external validation of a clinical prediction model to aid coeliac disease diagnosis in primary care: An observational study
title_fullStr Development and external validation of a clinical prediction model to aid coeliac disease diagnosis in primary care: An observational study
title_full_unstemmed Development and external validation of a clinical prediction model to aid coeliac disease diagnosis in primary care: An observational study
title_short Development and external validation of a clinical prediction model to aid coeliac disease diagnosis in primary care: An observational study
title_sort development and external validation of a clinical prediction model to aid coeliac disease diagnosis in primary care: an observational study
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9011008/
https://www.ncbi.nlm.nih.gov/pubmed/35434586
http://dx.doi.org/10.1016/j.eclinm.2022.101376
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