GALDS: A Graph-Autoencoder-based Latent Dynamics Surrogate model to predict neurite material transport
Tsung Yeh Hsieh, Yongjie Jessica Zhang

TL;DR
GALDS is a novel graph-autoencoder-based surrogate model that efficiently predicts material transport in complex neuronal networks, significantly reducing computational costs while maintaining high accuracy.
Contribution
This work introduces GALDS, combining graph autoencoders and Neural ODEs to improve simulation speed and accuracy for neural material transport modeling.
Findings
Achieves 3% mean relative error in predictions
Demonstrates 10-fold speed improvement over previous models
Successfully generalizes to unseen geometries and abnormal cases
Abstract
Neurons exhibit intricate geometries within their neurite networks, which play a crucial role in processes such as signaling and nutrient transport. Accurate simulation of material transport in the networks is essential for understanding these biological phenomena but poses significant computational challenges because of the complex tree-like structures involved. Traditional approaches are time-intensive and resource-demanding, yet the inherent properties of neuron trees, which consists primarily of pipes with steady-state parabolic velocity profiles and bifurcations, provide opportunities for computational optimization. To address these challenges, we propose a Graph-Autoencoder-based Latent Dynamics Surrogate (GALDS) model, which is specifically designed to streamline the simulation of material transport in neural trees. GALDS employs a graph autoencoder to encode latent…
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Taxonomy
TopicsTopic Modeling · Machine Learning and Data Classification · Image Processing and 3D Reconstruction
