CVMar 5, 2025

Active Learning for Deep Learning-Based Hemodynamic Parameter Estimation

arXiv:2503.03453v22 citationsh-index: 32
Originality Incremental advance
AI Analysis

This work addresses the time-consuming data generation bottleneck for deploying deep learning-based CFD surrogates in cardiovascular applications, representing an incremental improvement in efficiency.

The paper tackles the problem of reducing the computational cost of training deep learning surrogates for hemodynamic parameter estimation by introducing an active learning framework with three querying strategies, achieving up to a 50% reduction in required CFD simulations and improving model robustness.

Hemodynamic parameters such as pressure and wall shear stress play an important role in diagnosis, prognosis, and treatment planning in cardiovascular diseases. These parameters can be accurately computed using computational fluid dynamics (CFD), but CFD is computationally intensive. Hence, deep learning methods have been adopted as a surrogate to rapidly estimate CFD outcomes. A drawback of such data-driven models is the need for time-consuming reference CFD simulations for training. In this work, we introduce an active learning framework to reduce the number of CFD simulations required for the training of surrogate models, lowering the barriers to their deployment in new applications. We propose three distinct querying strategies to determine for which unlabeled samples CFD simulations should be obtained. These querying strategies are based on geometrical variance, ensemble uncertainty, and adherence to the physics governing fluid dynamics. We benchmark these methods on velocity field estimation in synthetic coronary artery bifurcations and find that they allow for substantial reductions in annotation cost. Notably, we find that our strategies reduce the number of samples required by up to 50% and make the trained models more robust to difficult cases. Our results show that active learning is a feasible strategy to increase the potential of deep learning-based CFD surrogates.

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