Tehran University of Medical Sciences

Science Communicator Platform

Stay connected! Follow us on X network (Twitter):
Share By
Analytical Fuzzy Solution of the Ventricular Pressure Equation and Prediction of the Blood Pressure Publisher



Keshavarz M1 ; Allahviranloo T2 ; Abbasbandy S3 ; Modarressi MH4
Authors

Source: Computational Methods for Differential Equations Published:2021


Abstract

The cardiovascular system is an extremely intelligent and dynamic system which adjusts its performance depending on the individual’s physical and environmental conditions. Some of these physical and environmental conditions may create slight disruptions in the cardiovascular system leading to a variety of diseases. Since prevention has always been preferable to treatment, this paper examined the Instantaneous Pressure-Volume Relation (IPVR) and also the pressure of the artery root. Fuzzy mathematics as a powerful tool is used to evaluate and predict the status of an individual’s blood pressure. The arterial pressure is modeled as a first order fuzzy differential equation and an analytical solution for this equation is obtained and an example shows the behavior of the solution. The risk factors using fuzzy rules are assessed, which help diagnose the status of an individual’s blood pressure. Using the outcome by drawing the individual’s attention to these risk factors, the individual’s health is improved. Moreover, in this study adaptive neuro-fuzzy inference system (ANFIS) models are evaluated to predict the status of an individual’s blood pressure on the basis of the inputs. © 2023 Computational Methods for Differential Equations. All rights reserved.
1. A Study of Fuzzy Methods for Solving System of Fuzzy Differential Equations, New Mathematics and Natural Computation (2021)
2. Intelligent Oscillometric System for Automatic Detection of Peripheral Arterial Disease, IEEE Journal of Biomedical and Health Informatics (2021)
3. Nephropathy Prediction in Diabetic Patient Using Fuzzy Regression Model, Iranian Journal of Diabetes and Metabolism (2019)
Experts (# of related papers)