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Predicting weight loss success on a new Nordic diet: an untargeted multi-platform metabolomics and machine learning approach

BACKGROUND AND AIM: Results from randomized controlled trials indicate that no single diet performs better than other for all people living with obesity. Regardless of the diet plan, there is always large inter-individual variability in weight changes, with some individuals losing weight and some no...

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Autores principales: Pigsborg, Kristina, Stentoft-Larsen, Valdemar, Demharter, Samuel, Aldubayan, Mona Adnan, Trimigno, Alessia, Khakimov, Bekzod, Engelsen, Søren Balling, Astrup, Arne, Hjorth, Mads Fiil, Dragsted, Lars Ove, Magkos, Faidon
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10434509/
https://www.ncbi.nlm.nih.gov/pubmed/37599689
http://dx.doi.org/10.3389/fnut.2023.1191944
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author Pigsborg, Kristina
Stentoft-Larsen, Valdemar
Demharter, Samuel
Aldubayan, Mona Adnan
Trimigno, Alessia
Khakimov, Bekzod
Engelsen, Søren Balling
Astrup, Arne
Hjorth, Mads Fiil
Dragsted, Lars Ove
Magkos, Faidon
author_facet Pigsborg, Kristina
Stentoft-Larsen, Valdemar
Demharter, Samuel
Aldubayan, Mona Adnan
Trimigno, Alessia
Khakimov, Bekzod
Engelsen, Søren Balling
Astrup, Arne
Hjorth, Mads Fiil
Dragsted, Lars Ove
Magkos, Faidon
author_sort Pigsborg, Kristina
collection PubMed
description BACKGROUND AND AIM: Results from randomized controlled trials indicate that no single diet performs better than other for all people living with obesity. Regardless of the diet plan, there is always large inter-individual variability in weight changes, with some individuals losing weight and some not losing or even gaining weight. This raises the possibility that, for different individuals, the optimal diet for successful weight loss may differ. The current study utilized machine learning to build a predictive model for successful weight loss in subjects with overweight or obesity on a New Nordic Diet (NND). METHODS: Ninety-one subjects consumed an NND ad libitum for 26 weeks. Based on their weight loss, individuals were classified as responders (weight loss ≥5%, n = 46) or non-responders (weight loss <2%, n = 24). We used clinical baseline data combined with baseline urine and plasma untargeted metabolomics data from two different analytical platforms, resulting in a data set including 2,766 features, and employed symbolic regression (QLattice) to develop a predictive model for weight loss success. RESULTS: There were no differences in clinical parameters at baseline between responders and non-responders, except age (47 ± 13 vs. 39 ± 11 years, respectively, p = 0.009). The final predictive model for weight loss contained adipic acid and argininic acid from urine (both metabolites were found at lower levels in responders) and generalized from the training (AUC 0.88) to the test set (AUC 0.81). Responders were also able to maintain a weight loss of 4.3% in a 12 month follow-up period. CONCLUSION: We identified a model containing two metabolites that were able to predict the likelihood of achieving a clinically significant weight loss on an ad libitum NND. This work demonstrates that models based on an untargeted multi-platform metabolomics approach can be used to optimize precision dietary treatment for obesity.
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spelling pubmed-104345092023-08-18 Predicting weight loss success on a new Nordic diet: an untargeted multi-platform metabolomics and machine learning approach Pigsborg, Kristina Stentoft-Larsen, Valdemar Demharter, Samuel Aldubayan, Mona Adnan Trimigno, Alessia Khakimov, Bekzod Engelsen, Søren Balling Astrup, Arne Hjorth, Mads Fiil Dragsted, Lars Ove Magkos, Faidon Front Nutr Nutrition BACKGROUND AND AIM: Results from randomized controlled trials indicate that no single diet performs better than other for all people living with obesity. Regardless of the diet plan, there is always large inter-individual variability in weight changes, with some individuals losing weight and some not losing or even gaining weight. This raises the possibility that, for different individuals, the optimal diet for successful weight loss may differ. The current study utilized machine learning to build a predictive model for successful weight loss in subjects with overweight or obesity on a New Nordic Diet (NND). METHODS: Ninety-one subjects consumed an NND ad libitum for 26 weeks. Based on their weight loss, individuals were classified as responders (weight loss ≥5%, n = 46) or non-responders (weight loss <2%, n = 24). We used clinical baseline data combined with baseline urine and plasma untargeted metabolomics data from two different analytical platforms, resulting in a data set including 2,766 features, and employed symbolic regression (QLattice) to develop a predictive model for weight loss success. RESULTS: There were no differences in clinical parameters at baseline between responders and non-responders, except age (47 ± 13 vs. 39 ± 11 years, respectively, p = 0.009). The final predictive model for weight loss contained adipic acid and argininic acid from urine (both metabolites were found at lower levels in responders) and generalized from the training (AUC 0.88) to the test set (AUC 0.81). Responders were also able to maintain a weight loss of 4.3% in a 12 month follow-up period. CONCLUSION: We identified a model containing two metabolites that were able to predict the likelihood of achieving a clinically significant weight loss on an ad libitum NND. This work demonstrates that models based on an untargeted multi-platform metabolomics approach can be used to optimize precision dietary treatment for obesity. Frontiers Media S.A. 2023-08-01 /pmc/articles/PMC10434509/ /pubmed/37599689 http://dx.doi.org/10.3389/fnut.2023.1191944 Text en Copyright © 2023 Pigsborg, Stentoft-Larsen, Demharter, Aldubayan, Trimigno, Khakimov, Engelsen, Astrup, Hjorth, Dragsted and Magkos. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Nutrition
Pigsborg, Kristina
Stentoft-Larsen, Valdemar
Demharter, Samuel
Aldubayan, Mona Adnan
Trimigno, Alessia
Khakimov, Bekzod
Engelsen, Søren Balling
Astrup, Arne
Hjorth, Mads Fiil
Dragsted, Lars Ove
Magkos, Faidon
Predicting weight loss success on a new Nordic diet: an untargeted multi-platform metabolomics and machine learning approach
title Predicting weight loss success on a new Nordic diet: an untargeted multi-platform metabolomics and machine learning approach
title_full Predicting weight loss success on a new Nordic diet: an untargeted multi-platform metabolomics and machine learning approach
title_fullStr Predicting weight loss success on a new Nordic diet: an untargeted multi-platform metabolomics and machine learning approach
title_full_unstemmed Predicting weight loss success on a new Nordic diet: an untargeted multi-platform metabolomics and machine learning approach
title_short Predicting weight loss success on a new Nordic diet: an untargeted multi-platform metabolomics and machine learning approach
title_sort predicting weight loss success on a new nordic diet: an untargeted multi-platform metabolomics and machine learning approach
topic Nutrition
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10434509/
https://www.ncbi.nlm.nih.gov/pubmed/37599689
http://dx.doi.org/10.3389/fnut.2023.1191944
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