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Autori principali: Uwamichi, Masahito, Schnyder, Simon K., Kobayashi, Tetsuya J., Sawai, Satoshi
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.16503
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author Uwamichi, Masahito
Schnyder, Simon K.
Kobayashi, Tetsuya J.
Sawai, Satoshi
author_facet Uwamichi, Masahito
Schnyder, Simon K.
Kobayashi, Tetsuya J.
Sawai, Satoshi
contents Analyzing the motion of multiple biological agents, be it cells or individual animals, is pivotal for the understanding of complex collective behaviors. With the advent of advanced microscopy, detailed images of complex tissue formations involving multiple cell types have become more accessible in recent years. However, deciphering the underlying rules that govern cell movements is far from trivial. Here, we present a novel deep learning framework for estimating the underlying equations of motion from observed trajectories, a pivotal step in decoding such complex dynamics. Our framework integrates graph neural networks with neural differential equations, enabling effective prediction of two-body interactions based on the states of the interacting entities. We demonstrate the efficacy of our approach through two numerical experiments. First, we used simulated data from a toy model to tune the hyperparameters. Based on the obtained hyperparameters, we then applied this approach to a more complex model with non-reciprocal forces that mimic the collective dynamics of the cells of slime molds. Our results show that the proposed method can accurately estimate the functional forms of two-body interactions -- even when they are nonreciprocal -- thereby precisely replicating both individual and collective behaviors within these systems.
format Preprint
id arxiv_https___arxiv_org_abs_2405_16503
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Integrating GNN and Neural ODEs for Estimating Non-Reciprocal Two-Body Interactions in Mixed-Species Collective Motion
Uwamichi, Masahito
Schnyder, Simon K.
Kobayashi, Tetsuya J.
Sawai, Satoshi
Biological Physics
Machine Learning
J.2, J.3
Analyzing the motion of multiple biological agents, be it cells or individual animals, is pivotal for the understanding of complex collective behaviors. With the advent of advanced microscopy, detailed images of complex tissue formations involving multiple cell types have become more accessible in recent years. However, deciphering the underlying rules that govern cell movements is far from trivial. Here, we present a novel deep learning framework for estimating the underlying equations of motion from observed trajectories, a pivotal step in decoding such complex dynamics. Our framework integrates graph neural networks with neural differential equations, enabling effective prediction of two-body interactions based on the states of the interacting entities. We demonstrate the efficacy of our approach through two numerical experiments. First, we used simulated data from a toy model to tune the hyperparameters. Based on the obtained hyperparameters, we then applied this approach to a more complex model with non-reciprocal forces that mimic the collective dynamics of the cells of slime molds. Our results show that the proposed method can accurately estimate the functional forms of two-body interactions -- even when they are nonreciprocal -- thereby precisely replicating both individual and collective behaviors within these systems.
title Integrating GNN and Neural ODEs for Estimating Non-Reciprocal Two-Body Interactions in Mixed-Species Collective Motion
topic Biological Physics
Machine Learning
J.2, J.3
url https://arxiv.org/abs/2405.16503