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Prospective prediction of childhood body mass index trajectories using multi-task Gaussian processes

Prospective prediction of childhood body mass index trajectories using multi-task Gaussian processes
Prospective prediction of childhood body mass index trajectories using multi-task Gaussian processes
Background: body mass index (BMI) trajectories have been used to assess the growth of children with respect to their peers, and to anticipate future obesity and disease risk. While retrospective BMI trajectories have been actively studied, models to prospectively predict continuous BMI trajectories have not been investigated.

Materials and methods: using longitudinal BMI measurements between birth and age 10 y from a mother-offspring cohort, we leveraged a multi-task Gaussian process approach to develop and evaluate a unified framework for modeling, clustering, and prospective prediction of BMI trajectories. We compared its sensitivity to missing values in the longitudinal follow-up of children, compared its prediction performance to cubic B-spline and multilevel Jenss-Bayley models, and used prospectively predicted BMI trajectories to assess the probability of future BMIs crossing the clinical cutoffs for obesity.

Results: MagmaClust identified 5 distinct patterns of BMI trajectories between 0 to 10 y. The method outperformed both cubic B-spline and multilevel Jenss-Bayley models in the accuracy of retrospective BMI trajectories while being more robust to missing data (up to 90%). It was also better at prospectively forecasting BMI trajectories of children for periods ranging from 2 to 8 years into the future, using historic BMI data. Given BMI data between birth and age 2 years, prediction of overweight/obesity status at age 10 years, as computed from MagmaClust’s predictions exhibited high specificity (0.94), negative predictive value (0.89), and accuracy (0.86). The accuracy, sensitivity, and positive predictive value of predictions increased as BMI data from additional time points were utilized for prediction.

Conclusion: MagmaClust provides a unified, probabilistic, non-parametric framework to model, cluster, and prospectively predict childhood BMI trajectories and overweight/obesity risk. The proposed method offers a convenient tool for clinicians to monitor BMI growth in children, allowing them to prospectively identify children with high predicted overweight/obesity risk and implement timely interventions.
0307-0565
Leroy, Arthur
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Gupta, Varsha
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Tint, Mya Thway
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Ooi, Delicia Shu-Qin
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Yap, Fabian
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Lek, Ngee
517c4b9b-b6c9-4625-9db4-fd2b228b1755
Godfrey, Keith
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Chong, Yap-Seng
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Lee, Yung Seng
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Eriksson, Johan G.
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Alvarez, Mauricio A.
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Michael, Navin
fb8b79bb-696c-480c-8a52-cf5f930c4f30
Wang, Dennis
118a3400-592b-44c4-afa1-f6da24c4da3d
Leroy, Arthur
bcd80b97-67a9-4213-9c5a-585314b62aa3
Gupta, Varsha
6c04024a-ea38-4bea-aaf8-0f29e06e1cc9
Tint, Mya Thway
3aaf54db-4dbd-4d6b-90ae-440a18e381ef
Ooi, Delicia Shu-Qin
bc619b7a-b844-43e4-8e78-9f93d99a3f4c
Yap, Fabian
22f6b954-31fc-4696-a52b-e985a424b95b
Lek, Ngee
517c4b9b-b6c9-4625-9db4-fd2b228b1755
Godfrey, Keith
0931701e-fe2c-44b5-8f0d-ec5c7477a6fd
Chong, Yap-Seng
7043124b-e892-4d4b-8bb7-6d35ed94e136
Lee, Yung Seng
0e28a8d6-3085-4086-9fa1-ac0684783bcf
Eriksson, Johan G.
eb96b1c5-af07-4a52-8a73-7541451d32cd
Alvarez, Mauricio A.
4254ffe6-9bd2-40a0-8f4c-9de7a2d948ed
Michael, Navin
fb8b79bb-696c-480c-8a52-cf5f930c4f30
Wang, Dennis
118a3400-592b-44c4-afa1-f6da24c4da3d

Leroy, Arthur, Gupta, Varsha, Tint, Mya Thway, Ooi, Delicia Shu-Qin, Yap, Fabian, Lek, Ngee, Godfrey, Keith, Chong, Yap-Seng, Lee, Yung Seng, Eriksson, Johan G., Alvarez, Mauricio A., Michael, Navin and Wang, Dennis (2024) Prospective prediction of childhood body mass index trajectories using multi-task Gaussian processes. International Journal of Obesity. (doi:10.1038/s41366-024-01679-0).

Record type: Article

Abstract

Background: body mass index (BMI) trajectories have been used to assess the growth of children with respect to their peers, and to anticipate future obesity and disease risk. While retrospective BMI trajectories have been actively studied, models to prospectively predict continuous BMI trajectories have not been investigated.

Materials and methods: using longitudinal BMI measurements between birth and age 10 y from a mother-offspring cohort, we leveraged a multi-task Gaussian process approach to develop and evaluate a unified framework for modeling, clustering, and prospective prediction of BMI trajectories. We compared its sensitivity to missing values in the longitudinal follow-up of children, compared its prediction performance to cubic B-spline and multilevel Jenss-Bayley models, and used prospectively predicted BMI trajectories to assess the probability of future BMIs crossing the clinical cutoffs for obesity.

Results: MagmaClust identified 5 distinct patterns of BMI trajectories between 0 to 10 y. The method outperformed both cubic B-spline and multilevel Jenss-Bayley models in the accuracy of retrospective BMI trajectories while being more robust to missing data (up to 90%). It was also better at prospectively forecasting BMI trajectories of children for periods ranging from 2 to 8 years into the future, using historic BMI data. Given BMI data between birth and age 2 years, prediction of overweight/obesity status at age 10 years, as computed from MagmaClust’s predictions exhibited high specificity (0.94), negative predictive value (0.89), and accuracy (0.86). The accuracy, sensitivity, and positive predictive value of predictions increased as BMI data from additional time points were utilized for prediction.

Conclusion: MagmaClust provides a unified, probabilistic, non-parametric framework to model, cluster, and prospectively predict childhood BMI trajectories and overweight/obesity risk. The proposed method offers a convenient tool for clinicians to monitor BMI growth in children, allowing them to prospectively identify children with high predicted overweight/obesity risk and implement timely interventions.

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More information

Accepted/In Press date: 4 November 2024
e-pub ahead of print date: 15 November 2024

Identifiers

Local EPrints ID: 496260
URI: http://eprints.soton.ac.uk/id/eprint/496260
ISSN: 0307-0565
PURE UUID: f1e5d0e6-6625-4680-abac-32336b345b9c
ORCID for Keith Godfrey: ORCID iD orcid.org/0000-0002-4643-0618

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Date deposited: 10 Dec 2024 17:42
Last modified: 20 Mar 2025 02:33

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Contributors

Author: Arthur Leroy
Author: Varsha Gupta
Author: Mya Thway Tint
Author: Delicia Shu-Qin Ooi
Author: Fabian Yap
Author: Ngee Lek
Author: Keith Godfrey ORCID iD
Author: Yap-Seng Chong
Author: Yung Seng Lee
Author: Johan G. Eriksson
Author: Mauricio A. Alvarez
Author: Navin Michael
Author: Dennis Wang

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