Abstract
Computational models of human glucose homeostasis can provide insight into the physiological processes underlying the observed inter-individual variability in glucose regulation. Modelling approaches ranging from “bottom-up” mechanistic models to “top-down” data-driven techniques have been applied to untangle the complex interactions underlying progressive disturbances in glucose homeostasis. While both approaches offer distinct benefits, a combined approach taking the best of both worlds has yet to be explored. Here, we propose a sequential combination of a mechanistic and a data-driven modeling approach to quantify individuals’ glucose and insulin responses to an oral glucose tolerance test, using cross sectional data from 2968 individuals from a large observational prospective population-based cohort, the Maastricht Study. The best predictive performance, measured by R2 and mean squared error of prediction, was achieved with personalized mechanistic models alone. The addition of a data-driven model did not improve predictive performance. The personalized mechanistic models consistently outperformed the data-driven and the combined model approaches, demonstrating the strength and suitability of bottom-up mechanistic models in describing the dynamic glucose and insulin response to oral glucose tolerance tests.
Funder
European Regional Development Fund via OP-Zuid, the Province of Limburg
the Dutch Ministry of Economic Affairs Stichting De Weijerhorst
the Pearl String Initiative Diabetes
the Cardiovascular Center
CARIM School for Cardiovascular Diseases
CAPHRI Care and Public Health Research Institute
NUTRIM School for Nutrition and Translational Research in Metabolism
Stichting Annadal
Health Foundation Limburg
Janssen-Cilag B.V.
Novo Nordisk Farma B.V.
Sanofi-Aventis Netherlands B.V.
TiFN
DSM Nutritional Products, FrieslandCampina
Danone Nutricia Research
Topsector Agri\&Food
Netherlands Organisation for Scientific Research
Publisher
Public Library of Science (PLoS)
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