Author:
Herrgårdh Tilda,Simonsson Christian,Ekstedt Mattias,Lundberg Peter,Stenkula Karin G.,Nyman Elin,Gennemark Peter,Cedersund Gunnar
Abstract
Abstract
Background
The increased prevalence of insulin resistance is one of the major health risks in society today. Insulin resistance involves both short-term dynamics, such as altered meal responses, and long-term dynamics, such as the development of type 2 diabetes. Insulin resistance also occurs on different physiological levels, ranging from disease phenotypes to organ-organ communication and intracellular signaling. To better understand the progression of insulin resistance, an analysis method is needed that can combine different timescales and physiological levels. One such method is digital twins, consisting of combined mechanistic mathematical models. We have previously developed a model for short-term glucose homeostasis and intracellular insulin signaling, and there exist long-term weight regulation models. Herein, we combine these models into a first interconnected digital twin for the progression of insulin resistance in humans.
Methods
The model is based on ordinary differential equations representing biochemical and physiological processes, in which unknown parameters were fitted to data using a MATLAB toolbox.
Results
The interconnected twin correctly predicts independent data from a weight increase study, both for weight-changes, fasting plasma insulin and glucose levels, and intracellular insulin signaling. Similarly, the model can predict independent weight-change data in a weight loss study with the weight loss drug topiramate. The model can also predict non-measured variables.
Conclusions
The model presented herein constitutes the basis for a new digital twin technology, which in the future could be used to aid medical pedagogy and increase motivation and compliance and thus aid in the prevention and treatment of insulin resistance.
Funder
Vetenskapsrådet
CENIIT, Center for Industrial Information Technology
Stiftelsen för Strategisk Forskning
Knut och Alice Wallenbergs Stiftelse
H2020 European Institute of Innovation and Technology
Stiftelsen Forska Utan Djurförsök
ELLIIT, Excellence Center at Linköping – Lund in Information Technology
VINNOVA
Novo Nordisk
Svenska Diabetesstiftelsen
Direktör Albert Påhlssons Stiftelse
Crafoordska Stiftelsen
AstraZeneca Mölndal
Linköping University
Publisher
Springer Science and Business Media LLC
Subject
Endocrinology, Diabetes and Metabolism,Internal Medicine
Cited by
2 articles.
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