Literature DB >> 33849336

The virtual physiological human gets nerves! How to account for the action of the nervous system in multiphysics simulations of human organs.

A Alexiadis1, M J H Simmons1, K Stamatopoulos1,2, H K Batchelor3, I Moulitsas4.   

Abstract

This article shows how to couple multiphysics and artificial neural networks to design computer models of human organs that autonomously adapt their behaviour to environmental stimuli. The model simulates motility in the intestine and adjusts its contraction patterns to the physical properties of the luminal content. Multiphysics reproduces the solid mechanics of the intestinal membrane and the fluid mechanics of the luminal content; the artificial neural network replicates the activity of the enteric nervous system. Previous studies recommended training the network with reinforcement learning. Here, we show that reinforcement learning alone is not enough; the input-output structure of the network should also mimic the basic circuit of the enteric nervous system. Simulations are validated against in vivo measurements of high-amplitude propagating contractions in the human intestine. When the network has the same input-output structure of the nervous system, the model performs well even when faced with conditions outside its training range. The model is trained to optimize transport, but it also keeps stress in the membrane low, which is exactly what occurs in the real intestine. Moreover, the model responds to atypical variations of its functioning with 'symptoms' that reflect those arising in diseases. If the healthy intestine model is made artificially ill by adding digital inflammation, motility patterns are disrupted in a way consistent with inflammatory pathologies such as inflammatory bowel disease.

Entities:  

Keywords:  coupling multiphysics with artificial intelligence; mathematical modelling of the intestine; multiphysics; reinforcement learning; virtual human

Year:  2021        PMID: 33849336     DOI: 10.1098/rsif.2020.1024

Source DB:  PubMed          Journal:  J R Soc Interface        ISSN: 1742-5662            Impact factor:   4.118


  1 in total

1.  Simulating the Hydrodynamic Conditions of the Human Ascending Colon: A Digital Twin of the Dynamic Colon Model.

Authors:  Michael Schütt; Connor O'Farrell; Konstantinos Stamatopoulos; Caroline L Hoad; Luca Marciani; Sarah Sulaiman; Mark J H Simmons; Hannah K Batchelor; Alessio Alexiadis
Journal:  Pharmaceutics       Date:  2022-01-13       Impact factor: 6.525

  1 in total

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