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Deep learning of material transport in complex neurite networks

Angran Li, Amir Barati Farimani, Yongjie Zhang

2021Scientific Reports21 citationsDOIOpen Access PDF

Abstract

Neurons exhibit complex geometry in their branched networks of neurites which is essential to the function of individual neuron but also brings challenges to transport a wide variety of essential materials throughout their neurite networks for their survival and function. While numerical methods like isogeometric analysis (IGA) have been used for modeling the material transport process via solving partial differential equations (PDEs), they require long computation time and huge computation resources to ensure accurate geometry representation and solution, thus limit their biomedical application. Here we present a graph neural network (GNN)-based deep learning model to learn the IGA-based material transport simulation and provide fast material concentration prediction within neurite networks of any topology. Given input boundary conditions and geometry configurations, the well-trained model can predict the dynamical concentration change during the transport process with an average error less than 10% and [Formula: see text] times faster compared to IGA simulations. The effectiveness of the proposed model is demonstrated within several complex neurite networks.

Topics & Concepts

Computer scienceNeuriteComputationRepresentation (politics)Topology (electrical circuits)Artificial neural networkProcess (computing)GraphBiological systemFunction (biology)Boundary (topology)Artificial intelligenceTheoretical computer scienceGeometryAlgorithmMathematicsMathematical analysisChemistryOperating systemEvolutionary biologyPoliticsBiologyPolitical scienceCombinatoricsLawBiochemistryIn vitroAdvanced Numerical Analysis TechniquesComputer Graphics and Visualization TechniquesModel Reduction and Neural Networks
Deep learning of material transport in complex neurite networks | Litcius