The use of machine learning in paediatric nutrition.
The use of machine learning in paediatric nutrition.
Purpose of review: in recent years, there has been a burgeoning interest in using machine learning methods. This has been accompanied by an expansion in the availability and ease of use of machine learning tools and an increase in the number of large, complex datasets which are suited to machine learning approaches. This review summarizes recent work in the field and sets expectations for its impact in the future.
Recent findings: much work has focused on establishing good practices and ethical frameworks to guide the use of machine learning in research. Machine learning has an established role in identifying features in ‘omics’ research and is emerging as a tool to generate predictive models to identify people at risk of disease and patients at risk of complications. They have been used to identify risks for malnutrition and obesity. Machine learning techniques have also been used to develop smartphone apps to track behaviour and provide healthcare advice.
Summary: machine learning techniques are reaching maturity and their impact on observational data analysis and behaviour change will come to fruition in the next 5 years. A set of standards and best practices are emerging and should be implemented by researchers and publishers.
artificial intelligence, child health, machine learning, modelling, nutrition
290-296
Young, Aneurin
457b536d-6015-4855-8e4c-0a665a9a2bb1
Johnson, Mark J.
64135487-45a1-46a6-a34b-595143e3c9a6
Beattie, R. Mark
9a66af0b-f81c-485c-b01d-519403f0038a
31 January 2024
Young, Aneurin
457b536d-6015-4855-8e4c-0a665a9a2bb1
Johnson, Mark J.
64135487-45a1-46a6-a34b-595143e3c9a6
Beattie, R. Mark
9a66af0b-f81c-485c-b01d-519403f0038a
Young, Aneurin, Johnson, Mark J. and Beattie, R. Mark
(2024)
The use of machine learning in paediatric nutrition.
Current Opinion in Clinical Nutrition and Metabolic Care, 27 (3), .
(doi:10.1097/mco.0000000000001018).
Abstract
Purpose of review: in recent years, there has been a burgeoning interest in using machine learning methods. This has been accompanied by an expansion in the availability and ease of use of machine learning tools and an increase in the number of large, complex datasets which are suited to machine learning approaches. This review summarizes recent work in the field and sets expectations for its impact in the future.
Recent findings: much work has focused on establishing good practices and ethical frameworks to guide the use of machine learning in research. Machine learning has an established role in identifying features in ‘omics’ research and is emerging as a tool to generate predictive models to identify people at risk of disease and patients at risk of complications. They have been used to identify risks for malnutrition and obesity. Machine learning techniques have also been used to develop smartphone apps to track behaviour and provide healthcare advice.
Summary: machine learning techniques are reaching maturity and their impact on observational data analysis and behaviour change will come to fruition in the next 5 years. A set of standards and best practices are emerging and should be implemented by researchers and publishers.
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Published date: 31 January 2024
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Publisher Copyright:
Copyright © 2024 Wolters Kluwer Health, Inc. All rights reserved.
Keywords:
artificial intelligence, child health, machine learning, modelling, nutrition
Identifiers
Local EPrints ID: 490383
URI: http://eprints.soton.ac.uk/id/eprint/490383
ISSN: 1363-1950
PURE UUID: d3f385b3-b279-4e65-96d6-f6fda50335bb
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Date deposited: 24 May 2024 16:38
Last modified: 11 Jun 2024 02:09
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Contributors
Author:
Aneurin Young
Author:
Mark J. Johnson
Author:
R. Mark Beattie
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