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High incidence of glucocorticoid-induced hyperglycaemia in inflammatory bowel disease: metabolic and clinical predictors identified by machine learning

BACKGROUND: Glucocorticosteroids (GC) are long-established, widely used agents for induction of remission in inflammatory bowel disease (IBD). Hyperglycaemia is a known complication of GC treatment with implications for morbidity and mortality. Published data on prevalence and risk factors for GC-in...

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Autores principales: McDonnell, Martin, Harris, Richard J, Borca, Florina, Mills, Tilly, Downey, Louise, Dharmasiri, Suranga, Patel, Mayank, Zare, Benjamin, Stammers, Matt, Smith, Trevor R, Felwick, Richard, Cummings, J R Fraser, Phan, Hang T T, Gwiggner, Markus
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7668301/
https://www.ncbi.nlm.nih.gov/pubmed/33187976
http://dx.doi.org/10.1136/bmjgast-2020-000532
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author McDonnell, Martin
Harris, Richard J
Borca, Florina
Mills, Tilly
Downey, Louise
Dharmasiri, Suranga
Patel, Mayank
Zare, Benjamin
Stammers, Matt
Smith, Trevor R
Felwick, Richard
Cummings, J R Fraser
Phan, Hang T T
Gwiggner, Markus
author_facet McDonnell, Martin
Harris, Richard J
Borca, Florina
Mills, Tilly
Downey, Louise
Dharmasiri, Suranga
Patel, Mayank
Zare, Benjamin
Stammers, Matt
Smith, Trevor R
Felwick, Richard
Cummings, J R Fraser
Phan, Hang T T
Gwiggner, Markus
author_sort McDonnell, Martin
collection PubMed
description BACKGROUND: Glucocorticosteroids (GC) are long-established, widely used agents for induction of remission in inflammatory bowel disease (IBD). Hyperglycaemia is a known complication of GC treatment with implications for morbidity and mortality. Published data on prevalence and risk factors for GC-induced hyperglycaemia in the IBD population are limited. We prospectively characterise this complication in our cohort, employing machine-learning methods to identify key predictors of risk. METHODS: We conducted a prospective observational study of IBD patients receiving intravenous hydrocortisone (IVH). Electronically triggered three times daily capillary blood glucose (CBG) monitoring was recorded alongside diabetes mellitus (DM) history, IBD biomarkers, nutritional and IBD clinical activity scores. Hyperglycaemia was defined as CBG ≥11.1 mmol/L and undiagnosed DM as glycated haemoglobin ≥48 mmol/mol. Random forest (RF) regression models were used to extract predictor-patterns present within the dataset. RESULTS: 94 consecutive IBD patients treated with IVH were included. 60% (56/94) of the cohort recorded an episode of hyperglycaemia, including 57% (50/88) of those with no history of DM, of which 19% (17/88) and 5% (4/88) recorded a CBG ≥14 mmol/L and ≥20 mmol/L, respectively. The RF models identified increased C-reactive protein (CRP) followed by a longer IBD duration as leading risk predictors for significant hyperglycaemia. CONCLUSION: Hyperglycaemia is common in IBD patients treated with intravenous GC. Therefore, CBG monitoring should be included in routine clinical practice. Machine learning methods can identify key risk factors for clinical complications. Steroid-sparing treatment strategies may be considered for those IBD patients with higher admission CRP and greater disease duration, who appear to be at the greatest risk of hyperglycaemia.
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spelling pubmed-76683012020-11-24 High incidence of glucocorticoid-induced hyperglycaemia in inflammatory bowel disease: metabolic and clinical predictors identified by machine learning McDonnell, Martin Harris, Richard J Borca, Florina Mills, Tilly Downey, Louise Dharmasiri, Suranga Patel, Mayank Zare, Benjamin Stammers, Matt Smith, Trevor R Felwick, Richard Cummings, J R Fraser Phan, Hang T T Gwiggner, Markus BMJ Open Gastroenterol Inflammatory Bowel Disease BACKGROUND: Glucocorticosteroids (GC) are long-established, widely used agents for induction of remission in inflammatory bowel disease (IBD). Hyperglycaemia is a known complication of GC treatment with implications for morbidity and mortality. Published data on prevalence and risk factors for GC-induced hyperglycaemia in the IBD population are limited. We prospectively characterise this complication in our cohort, employing machine-learning methods to identify key predictors of risk. METHODS: We conducted a prospective observational study of IBD patients receiving intravenous hydrocortisone (IVH). Electronically triggered three times daily capillary blood glucose (CBG) monitoring was recorded alongside diabetes mellitus (DM) history, IBD biomarkers, nutritional and IBD clinical activity scores. Hyperglycaemia was defined as CBG ≥11.1 mmol/L and undiagnosed DM as glycated haemoglobin ≥48 mmol/mol. Random forest (RF) regression models were used to extract predictor-patterns present within the dataset. RESULTS: 94 consecutive IBD patients treated with IVH were included. 60% (56/94) of the cohort recorded an episode of hyperglycaemia, including 57% (50/88) of those with no history of DM, of which 19% (17/88) and 5% (4/88) recorded a CBG ≥14 mmol/L and ≥20 mmol/L, respectively. The RF models identified increased C-reactive protein (CRP) followed by a longer IBD duration as leading risk predictors for significant hyperglycaemia. CONCLUSION: Hyperglycaemia is common in IBD patients treated with intravenous GC. Therefore, CBG monitoring should be included in routine clinical practice. Machine learning methods can identify key risk factors for clinical complications. Steroid-sparing treatment strategies may be considered for those IBD patients with higher admission CRP and greater disease duration, who appear to be at the greatest risk of hyperglycaemia. BMJ Publishing Group 2020-11-13 /pmc/articles/PMC7668301/ /pubmed/33187976 http://dx.doi.org/10.1136/bmjgast-2020-000532 Text en © Author(s) (or their employer(s)) 2020. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ. http://creativecommons.org/licenses/by-nc/4.0/ http://creativecommons.org/licenses/by-nc/4.0/This is an open access article distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited, appropriate credit is given, any changes made indicated, and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/.
spellingShingle Inflammatory Bowel Disease
McDonnell, Martin
Harris, Richard J
Borca, Florina
Mills, Tilly
Downey, Louise
Dharmasiri, Suranga
Patel, Mayank
Zare, Benjamin
Stammers, Matt
Smith, Trevor R
Felwick, Richard
Cummings, J R Fraser
Phan, Hang T T
Gwiggner, Markus
High incidence of glucocorticoid-induced hyperglycaemia in inflammatory bowel disease: metabolic and clinical predictors identified by machine learning
title High incidence of glucocorticoid-induced hyperglycaemia in inflammatory bowel disease: metabolic and clinical predictors identified by machine learning
title_full High incidence of glucocorticoid-induced hyperglycaemia in inflammatory bowel disease: metabolic and clinical predictors identified by machine learning
title_fullStr High incidence of glucocorticoid-induced hyperglycaemia in inflammatory bowel disease: metabolic and clinical predictors identified by machine learning
title_full_unstemmed High incidence of glucocorticoid-induced hyperglycaemia in inflammatory bowel disease: metabolic and clinical predictors identified by machine learning
title_short High incidence of glucocorticoid-induced hyperglycaemia in inflammatory bowel disease: metabolic and clinical predictors identified by machine learning
title_sort high incidence of glucocorticoid-induced hyperglycaemia in inflammatory bowel disease: metabolic and clinical predictors identified by machine learning
topic Inflammatory Bowel Disease
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7668301/
https://www.ncbi.nlm.nih.gov/pubmed/33187976
http://dx.doi.org/10.1136/bmjgast-2020-000532
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