AI Article Synopsis

  • Hemodynamic parameters are crucial for diagnosing and treating cardiovascular diseases, but current methods for acquiring these metrics noninvasively are limited.
  • The research integrates computational fluid dynamics with physics-informed neural networks (PINNs) and deep learning to create a customized analysis framework that effectively models 4D hemodynamics in personalized patient models.
  • Results from 88,000 cases demonstrate the framework's superior performance in terms of computational cost, accuracy, and visualization, suggesting its potential for real-time hemodynamic predictions across various vessel types.

Article Abstract

Hemodynamic parameters are of great significance in the clinical diagnosis and treatment of cardiovascular diseases. However, noninvasive, real-time and accurate acquisition of hemodynamics remains a challenge for current invasive detection and simulation algorithms. Here, we integrate computational fluid dynamics with our customized analysis framework based on a multi-attribute point cloud dataset and physics-informed neural networks (PINNs)-aided deep learning modules. This combination is implemented by our workflow that generates flow field datasets within two types of patient personalized models - aorta with fine coronary branches and abdominal aorta. Deep learning modules with or without an antecedent hierarchical structure model the flow field development and complete the mapping from spatial and temporal dimensions to 4D hemodynamics. 88,000 cases on 4 randomized partitions in 16 controlled trials reveal the hemodynamic landscape of spatio-temporal anisotropy within two types of personalized models, which demonstrates the effectiveness of PINN in predicting the space-time behavior of flow fields and gives the optimal deep learning framework for different blood vessels in terms of balancing the training cost and accuracy dimensions. The proposed framework shows intentional performance in computational cost, accuracy and visualization compared to currently prevalent methods, and has the potential for generalization to model flow fields and corresponding clinical metrics within vessels at different locations. We expect our framework to push the 4D hemodynamic predictions to the real-time level, and in statistically significant fashion, applicable to morphologically variable vessels.

Download full-text PDF

Source
http://dx.doi.org/10.1016/j.compbiomed.2023.107287DOI Listing

Publication Analysis

Top Keywords

deep learning
12
physics-informed neural
8
neural networks
8
framework based
8
learning modules
8
flow field
8
personalized models
8
model flow
8
flow fields
8
cost accuracy
8

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!