4.6 Article

Mathematical modeling of antihypertensive therapy

Journal

FRONTIERS IN PHYSIOLOGY
Volume 13, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fphys.2022.1070115

Keywords

mathematical modeling; agent-based modular model; antihypertensive therapy; cardiovascular system; renal system; blood pressure regulation

Categories

Funding

  1. Sirius University
  2. [CMB-RND-2123]

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This study builds upon a modular agent-based model of the cardiovascular and renal systems to evaluate the efficacy of antihypertensive therapies. The model simulates the response to different mechanisms of action of drugs and has been tested on virtual patients to validate its accuracy. The extended model serves as a foundation for personalized medicine.
Hypertension is a multifactorial disease arising from complex pathophysiological pathways. Individual characteristics of patients result in different responses to various classes of antihypertensive medications. Therefore, evaluating the efficacy of therapy based on in silico predictions is an important task. This study is a continuation of research on the modular agent-based model of the cardiovascular and renal systems (presented in the previously published article). In the current work, we included in the model equations simulating the response to antihypertensive therapies with different mechanisms of action. For this, we used the pharmacodynamic effects of the angiotensin II receptor blocker losartan, the calcium channel blocker amlodipine, the angiotensin-converting enzyme inhibitor enalapril, the direct renin inhibitor aliskiren, the thiazide diuretic hydrochlorothiazide, and the beta-blocker bisoprolol. We fitted therapy parameters based on known clinical trials for all considered medications, and then tested the model's ability to show reasonable dynamics (expected by clinical observations) after treatment with individual drugs and their dual combinations in a group of virtual patients with hypertension. The extended model paves the way for the next step in personalized medicine that is adapting the model parameters to a real patient and predicting his response to antihypertensive therapy. The model is implemented in the BioUML software and is available at .

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