Literature DB >> 32315515

Continuous glucose monitoring for hypoglycaemia in children: Perspectives in 2020.

Chris Worth1, Mark Dunne2, Arunabha Ghosh3, Simon Harper4, Indraneel Banerjee1.   

Abstract

Hypoglycaemia in children is a major risk factor for adverse neurodevelopment with rates as high as 50% in hyperinsulinaemic hypoglycaemia (HH). A key part of management relies upon timely identification and treatment of hypoglycaemia. The current standard of care for glucose monitoring is by infrequent fingerprick plasma glucose testing but this carries a high risk of missed hypoglycaemia identification. High-frequency Continuous Glucose Monitoring (CGM) offers an attractive alternative for glucose trend monitoring and glycaemic phenotyping but its utility remains largely unestablished in disorders of hypoglycaemia. Attempts to determine accuracy through correlation with plasma glucose measurements using conventional methods such as Mean Absolute Relative Difference (MARD) overestimate accuracy at hypoglycaemia. The inaccuracy of CGM in true hypoglycaemia is amplified by calibration algorithms that prioritize hyperglycaemia over hypoglycaemia with minimal objective evidence of efficacy in HH. Conversely, alternative algorithm design has significant potential for predicting hypoglycaemia to prevent neuroglycopaenia and consequent brain dysfunction in childhood disorders. Delays in the detection of hypoglycaemia, alarm fatigue, device calibration and current high cost are all barriers to the wider adoption of CGM in disorders of hypoglycaemia. However, machine learning, artificial intelligence and other computer-generated algorithms now offer significant potential for further improvement in CGM device technology and widespread application in childhood hypoglycaemia.
© 2020 John Wiley & Sons A/S. Published by John Wiley & Sons Ltd.

Entities:  

Keywords:  children; continuous glucose monitoring; hyperinsulinism; hypoglycaemia; machine learning

Mesh:

Substances:

Year:  2020        PMID: 32315515     DOI: 10.1111/pedi.13029

Source DB:  PubMed          Journal:  Pediatr Diabetes        ISSN: 1399-543X            Impact factor:   4.866


  5 in total

1.  Prediction of Glucose Concentration in Children with Type 1 Diabetes Using Neural Networks: An Edge Computing Application.

Authors:  Federico D'Antoni; Lorenzo Petrosino; Fabiola Sgarro; Antonio Pagano; Luca Vollero; Vincenzo Piemonte; Mario Merone
Journal:  Bioengineering (Basel)       Date:  2022-04-21

2.  Insight into hypoglycemia frequency in congenital hyperinsulinism: evaluation of a large UK CGM dataset.

Authors:  Chris Worth; Yesica Tropeano; Pon Ramya Gokul; Karen E Cosgrove; Maria Salomon-Estebanez; Senthil Senniappan; Antonia Dastamani; Indraneel Banerjee
Journal:  BMJ Open Diabetes Res Care       Date:  2022-06

Review 3.  Congenital hyperinsulinism in infancy and childhood: challenges, unmet needs and the perspective of patients and families.

Authors:  Indraneel Banerjee; Julie Raskin; Jean-Baptiste Arnoux; Diva D De Leon; Stuart A Weinzimer; Mette Hammer; David M Kendall; Paul S Thornton
Journal:  Orphanet J Rare Dis       Date:  2022-02-19       Impact factor: 4.123

4.  Families' Experiences of Continuous Glucose Monitoring in the Management of Congenital Hyperinsulinism: A Thematic Analysis.

Authors:  Sameera Hannah Auckburally; Chris Worth; Maria Salomon-Estebanez; Jacqueline Nicholson; Simon Harper; Paul W Nutter; Indraneel Banerjee
Journal:  Front Endocrinol (Lausanne)       Date:  2022-07-19       Impact factor: 6.055

Review 5.  Dynamic Methods for Childhood Hypoglycemia Phenotyping: A Narrative Review.

Authors:  Alessandro Rossi; Martijn G S Rutten; Theo H van Dijk; Barbara M Bakker; Dirk-Jan Reijngoud; Maaike H Oosterveer; Terry G J Derks
Journal:  Front Endocrinol (Lausanne)       Date:  2022-06-17       Impact factor: 6.055

  5 in total

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