Publications

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

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

Summary

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 characterize an individual's metabolic health in silico. A population of 342 personalized 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-euglycemic clamp. The model is also shown to quantify liver fat accumulation and β-cell functionality. Moreover, we show that personalized Mixed Meal Models can be used to evaluate the impact of a dietary intervention on multiple aspects of metabolic health at the individual level.