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Spherical convolutional neural networks can improve brain microstructure estimation from diffusion MRI data

Kerkelä, Leevi ; Seunarine, Kiran ; Szczepankiewicz, Filip LU orcid and Clark, Chris A. (2024) In Frontiers in Neuroimaging 3.
Abstract

Diffusion magnetic resonance imaging is sensitive to the microstructural properties of brain tissue. However, estimating clinically and scientifically relevant microstructural properties from the measured signals remains a highly challenging inverse problem that machine learning may help solve. This study investigated if recently developed rotationally invariant spherical convolutional neural networks can improve microstructural parameter estimation. We trained a spherical convolutional neural network to predict the ground-truth parameter values from efficiently simulated noisy data and applied the trained network to imaging data acquired in a clinical setting to generate microstructural parameter maps. Our network performed better than... (More)

Diffusion magnetic resonance imaging is sensitive to the microstructural properties of brain tissue. However, estimating clinically and scientifically relevant microstructural properties from the measured signals remains a highly challenging inverse problem that machine learning may help solve. This study investigated if recently developed rotationally invariant spherical convolutional neural networks can improve microstructural parameter estimation. We trained a spherical convolutional neural network to predict the ground-truth parameter values from efficiently simulated noisy data and applied the trained network to imaging data acquired in a clinical setting to generate microstructural parameter maps. Our network performed better than the spherical mean technique and multi-layer perceptron, achieving higher prediction accuracy than the spherical mean technique with less rotational variance than the multi-layer perceptron. Although we focused on a constrained two-compartment model of neuronal tissue, the network and training pipeline are generalizable and can be used to estimate the parameters of any Gaussian compartment model. To highlight this, we also trained the network to predict the parameters of a three-compartment model that enables the estimation of apparent neural soma density using tensor-valued diffusion encoding.

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organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
diffusion magnetic resonance imaging, geometric deep learning, microstructure, MRI, spherical convolutional neural network
in
Frontiers in Neuroimaging
volume
3
article number
1349415
publisher
Frontiers Media S. A.
external identifiers
  • scopus:105005419243
DOI
10.3389/fnimg.2024.1349415
language
English
LU publication?
yes
id
060c06fc-436c-4ae4-b5d5-af3b9c03b0b9
date added to LUP
2025-10-01 15:49:30
date last changed
2025-10-14 09:32:22
@article{060c06fc-436c-4ae4-b5d5-af3b9c03b0b9,
  abstract     = {{<p>Diffusion magnetic resonance imaging is sensitive to the microstructural properties of brain tissue. However, estimating clinically and scientifically relevant microstructural properties from the measured signals remains a highly challenging inverse problem that machine learning may help solve. This study investigated if recently developed rotationally invariant spherical convolutional neural networks can improve microstructural parameter estimation. We trained a spherical convolutional neural network to predict the ground-truth parameter values from efficiently simulated noisy data and applied the trained network to imaging data acquired in a clinical setting to generate microstructural parameter maps. Our network performed better than the spherical mean technique and multi-layer perceptron, achieving higher prediction accuracy than the spherical mean technique with less rotational variance than the multi-layer perceptron. Although we focused on a constrained two-compartment model of neuronal tissue, the network and training pipeline are generalizable and can be used to estimate the parameters of any Gaussian compartment model. To highlight this, we also trained the network to predict the parameters of a three-compartment model that enables the estimation of apparent neural soma density using tensor-valued diffusion encoding.</p>}},
  author       = {{Kerkelä, Leevi and Seunarine, Kiran and Szczepankiewicz, Filip and Clark, Chris A.}},
  keywords     = {{diffusion magnetic resonance imaging; geometric deep learning; microstructure; MRI; spherical convolutional neural network}},
  language     = {{eng}},
  publisher    = {{Frontiers Media S. A.}},
  series       = {{Frontiers in Neuroimaging}},
  title        = {{Spherical convolutional neural networks can improve brain microstructure estimation from diffusion MRI data}},
  url          = {{http://dx.doi.org/10.3389/fnimg.2024.1349415}},
  doi          = {{10.3389/fnimg.2024.1349415}},
  volume       = {{3}},
  year         = {{2024}},
}