Machine-Learning Identification of Hemodynamics in Coronary Arteries in the Presence of Stenosis
Mohammad Farajtabar, Mohit Biglarian, Morteza Miansari

TL;DR
This paper introduces a deep neural network framework trained on CFD data to rapidly predict blood flow characteristics in coronary arteries with stenosis, offering a faster alternative to traditional simulations.
Contribution
The study develops a neural network model trained on CFD data to accurately predict hemodynamics in coronary arteries with stenosis, reducing computational costs.
Findings
Average pressure prediction accuracy: 98.7%
Average velocity magnitude accuracy: 93.2%
Effective on patient-specific geometries
Abstract
Prediction of the blood flow characteristics is of utmost importance for understanding the behavior of the blood arterial network, especially in the presence of vascular diseases such as stenosis. Computational fluid dynamics (CFD) has provided a powerful and efficient tool to determine these characteristics including the pressure and velocity fields within the network. Despite numerous studies in the field, the extremely high computational cost of CFD has led the researchers to develop new platforms including Machine Learning approaches that instead provide faster analyses at a much lower cost. In this study, we put forth a Deep Neural Network framework to predict flow behavior in a coronary arterial network with different properties in the presence of any abnormality like stenosis. To this end, an artificial neural network (ANN) model is trained using synthetic data so that it can…
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Taxonomy
TopicsCoronary Interventions and Diagnostics · Cardiac Imaging and Diagnostics · Cardiovascular Health and Disease Prevention
