Geometry adaptive waveformer for cardio-vascular modeling
Journal:
arXiv
Published Date:
Mar 21, 2025
Abstract
Modeling cardiovascular anatomies poses a significant challenge due to their
complex, irregular structures and inherent pathological conditions. Numerical
simulations, while accurate, are often computationally expensive, limiting
their practicality in clinical settings. Traditional machine learning methods,
on the other hand, often struggle with some major hurdles, including high
dimensionality of the inputs, inability to effectively work with irregular
grids, and preserving the time dependencies of responses in dynamic problems.
In response to these challenges, we propose a geometry adaptive waveformer
model to predict blood flow dynamics in the cardiovascular system. The
framework is primarily composed of three components: a geometry encoder, a
geometry decoder, and a waveformer. The encoder transforms input defined on the
irregular domain to a regular domain using a graph operator-based network and
signed distance functions. The waveformer operates on the transformed field on
the irregular grid. Finally, the decoder reverses this process, transforming
the output from the regular grid back to the physical space. We evaluate the
efficacy of the approach on different sets of cardiovascular data.