Three-dimensional micro-structurally informed in silico myocardium -- towards virtual imaging trials in cardiac diffusion weighted MRI
Mojtaba Lashgari, Nishant Ravikumar, Irvin Teh, Jing-Rebecca Li, David, L. Buckley, Jurgen E. Schneider, Alejandro F. Frangi

TL;DR
This paper introduces a novel in silico myocardial tissue model that accurately mimics microstructural variability and disarray, enabling improved virtual MRI imaging trials and validation of imaging biomarkers.
Contribution
The study presents a new method for generating realistic 3D myocardial microstructure phantoms considering shape variability, water exchange, and disarray, surpassing previous models in realism.
Findings
The in silico tissue matches real tissue microstructure distributions.
Simulated angles closely agree with experimental cardiac DTI data.
The model produces richer, more realistic myocardial phantoms.
Abstract
In silico tissue models enable evaluating quantitative models of magnetic resonance imaging. This includes validating and sensitivity analysis of imaging biomarkers and tissue microstructure parameters. We propose a novel method to generate a realistic numerical phantom of myocardial microstructure. We extend previous studies accounting for the cardiomyocyte shape variability, water exchange between the cardiomyocytes (intercalated discs), myocardial microstructure disarray, and four sheetlet orientations. In the first stage of the method, cardiomyocytes and sheetlets are generated by considering the shape variability and intercalated discs in cardiomyocyte-to-cardiomyocyte connections. Sheetlets are then aggregated and oriented in the directions of interest. Our morphometric study demonstrates no significant difference () between the distribution of volume, length, and primary…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Elasticity and Material Modeling · Radiomics and Machine Learning in Medical Imaging
MethodsDiffusion
