Published March 18, 2018 | Version v1
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Model-based analysis of postprandial glycemic response dynamics for different types of food

  • 1. Eindhoven University of Technology

Description

Background & aims

Knowledge of postprandial glycemic response (PPGR) dynamics is important in nutrition management and diabetes research, care and (self)management. In daily life, food intake is the most important factor influencing the occurrence of hyperglycemia. However, the large variability in PPGR dynamics to different types of food is inadequately predicted by existing glycemic measures. The objective of this study was therefore to quantitatively describe PPGR dynamics using a systems approach.

Methods

Postprandial glucose and insulin data were collected from literature for many different food products and mixed meals. The predictive value of existing measures, such as the Glycemic Index, was evaluated. A physiology-based dynamic model was used to reconstruct the full postprandial response profiles of both glucose and insulin simultaneously.

Results

We collected a large range of postprandial glucose and insulin dynamics for 53 common food products and mixed meals. Currently available glycemic measures were found to be inadequate to describe the heterogeneity in postprandial dynamics. By estimating model parameters from glucose and insulin data, the physiology-based dynamic model accurately describes the measured data whilst adhering to physiological constraints.

Conclusions

The physiology-based dynamic model provides a systematic framework to analyze postprandial glucose and insulin profiles. By changing parameter values the model can be adjusted to simulate impaired glucose tolerance and insulin resistance.

Notes

The dataset contains information for 53 food products and meals (in two Excel files). It includes parameters of the rate of appearance of glucose in the human body over time (described as Ra(t)). Also postprandial time-series data of plasma glucose (and insulin in many instances) have been extracted from 18 publications. The equations of the mathematical model are included in the Word file.

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Additional details

Related works

Is part of
Journal article: 10.1016/j.yclnex.2018.01.003 (DOI)

Funding

European Commission
RESOLVE – A systems biology approach to RESOLVE the molecular pathology of two hallmarks of patients with metabolic syndrome and its co-morbidities; hypertriglyceridemia and low HDL-cholesterol 305707