Quantifying the effect of nutritional interventions on metabolic resilience using personalized computational models

Shauna O'Donovan (Corresponding author), Milena Rundle, E. Louise Thomas, Jimmy D. Bell, Gary Frost, Doris M. Jacobs, Anne Wanders, Ryan de Vries, Edwin C.M. Mariman, Marleen A. van Baak, Luc Sterkman, Max Nieuwdorp, Albert K. Groen, Ilja C.W. Arts, Natal A.W. van Riel, Lydia Afman

Research output: Contribution to journalArticleAcademicpeer-review

2 Citations (Scopus)
63 Downloads (Pure)

Abstract

The manifestation of metabolic deteriorations that accompany overweight and obesity can differ greatly between individuals, giving rise to a highly heterogeneous population. This inter-individual variation can impede both the provision and assessment of nutritional interventions as multiple aspects of metabolic health should be considered at once. Here, we apply the Mixed Meal Model, a physiology-based computational model, to characterise an individual’s metabolic health in silico. A population of 342 personalised models were generated using data for individuals with overweight and obesity from three independent intervention studies, demonstrating a strong relationship between the model-derived metric of insulin resistance (ρ=0.67, p<0.05) and the gold-standard hyperinsulinemic-euglycamic clamp. The model is also shown to quantify liver fat accumulation and β-cell functionality. Moreover, we show that personalised Mixed Meal Models can be used to evaluate the impact of a dietary intervention on multiple aspects of metabolic health at the individual level.
Original languageEnglish
Article number109362
Number of pages16
JournaliScience
Volume27
Issue number4
Early online date28 Feb 2024
DOIs
Publication statusPublished - 19 Apr 2024

Funding

FundersFunder number
NWO645.001.003

    Keywords

    • Personalised computational models
    • metabolic resilience
    • meal challenge tests
    • insulin resistance
    • liver fat
    • Precision nutrition
    • parameter estimation

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