AI-Powered Automated Model Construction for Patient-Specific CFD Simulations of Aortic Flows
By: Pan Du , Delin An , Chaoli Wang and more
Potential Business Impact:
Builds heart models from pictures faster.
Image-based modeling is essential for understanding cardiovascular hemodynamics and advancing the diagnosis and treatment of cardiovascular diseases. Constructing patient-specific vascular models remains labor-intensive, error-prone, and time-consuming, limiting their clinical applications. This study introduces a deep-learning framework that automates the creation of simulation-ready vascular models from medical images. The framework integrates a segmentation module for accurate voxel-based vessel delineation with a surface deformation module that performs anatomically consistent and unsupervised surface refinements guided by medical image data. By unifying voxel segmentation and surface deformation into a single cohesive pipeline, the framework addresses key limitations of existing methods, enhancing geometric accuracy and computational efficiency. Evaluated on publicly available datasets, the proposed approach demonstrates state-of-the-art performance in segmentation and mesh quality while significantly reducing manual effort and processing time. This work advances the scalability and reliability of image-based computational modeling, facilitating broader applications in clinical and research settings.
Similar Papers
Graph Deep Learning for Intracranial Aneurysm Blood Flow Simulation and Risk Assessment
Machine Learning (CS)
Finds brain artery problems faster for doctors.
Generative AI Pipeline for Interactive Prompt-driven 2D-to-3D Vascular Reconstruction for Fontan Geometries from Contrast-Enhanced X-Ray Fluoroscopy Imaging
Image and Video Processing
AI shows doctors blood flow in heart defects.
Rethinking Intracranial Aneurysm Vessel Segmentation: A Perspective from Computational Fluid Dynamics Applications
CV and Pattern Recognition
Helps doctors see brain bubbles better for treatment.