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Bundle geodesic convolutional neural network for diffusion-weighted imaging segmentation

PURPOSE: Applying machine learning techniques to magnetic resonance diffusion-weighted imaging (DWI) data is challenging due to the size of individual data samples and the lack of labeled data. It is possible, though, to learn general patterns from a very limited amount of training data if we take a...

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Autores principales: Liu, Renfei, Lauze, François, Erleben, Kenny, Berg, Rune W., Darkner, Sune
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Society of Photo-Optical Instrumentation Engineers 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9670506/
https://www.ncbi.nlm.nih.gov/pubmed/36405814
http://dx.doi.org/10.1117/1.JMI.9.6.064002
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author Liu, Renfei
Lauze, François
Erleben, Kenny
Berg, Rune W.
Darkner, Sune
author_facet Liu, Renfei
Lauze, François
Erleben, Kenny
Berg, Rune W.
Darkner, Sune
author_sort Liu, Renfei
collection PubMed
description PURPOSE: Applying machine learning techniques to magnetic resonance diffusion-weighted imaging (DWI) data is challenging due to the size of individual data samples and the lack of labeled data. It is possible, though, to learn general patterns from a very limited amount of training data if we take advantage of the geometry of the DWI data. Therefore, we present a tissue classifier based on a Riemannian deep learning framework for single-shell DWI data. APPROACH: The framework consists of three layers: a lifting layer that locally represents and convolves data on tangent spaces to produce a family of functions defined on the rotation groups of the tangent spaces, i.e., a (not necessarily continuous) function on a bundle of rotational functions on the manifold; a group convolution layer that convolves this function with rotation kernels to produce a family of local functions over each of the rotation groups; a projection layer using maximization to collapse this local data to form manifold based functions. RESULTS: Experiments show that our method achieves the performance of the same level as state-of-the-art while using way fewer parameters in the model ([Formula: see text]). Meanwhile, we conducted a model sensitivity analysis for our method. We ran experiments using a proportion (69.2%, 53.3%, and 29.4%) of the original training set and analyzed how much data the model needs for the task. Results show that this does reduce the overall classification accuracy mildly, but it also boosts the accuracy for minority classes. CONCLUSIONS: This work extended convolutional neural networks to Riemannian manifolds, and it shows the potential in understanding structural patterns in the brain, as well as in aiding manual data annotation.
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spelling pubmed-96705062023-11-17 Bundle geodesic convolutional neural network for diffusion-weighted imaging segmentation Liu, Renfei Lauze, François Erleben, Kenny Berg, Rune W. Darkner, Sune J Med Imaging (Bellingham) Image Processing PURPOSE: Applying machine learning techniques to magnetic resonance diffusion-weighted imaging (DWI) data is challenging due to the size of individual data samples and the lack of labeled data. It is possible, though, to learn general patterns from a very limited amount of training data if we take advantage of the geometry of the DWI data. Therefore, we present a tissue classifier based on a Riemannian deep learning framework for single-shell DWI data. APPROACH: The framework consists of three layers: a lifting layer that locally represents and convolves data on tangent spaces to produce a family of functions defined on the rotation groups of the tangent spaces, i.e., a (not necessarily continuous) function on a bundle of rotational functions on the manifold; a group convolution layer that convolves this function with rotation kernels to produce a family of local functions over each of the rotation groups; a projection layer using maximization to collapse this local data to form manifold based functions. RESULTS: Experiments show that our method achieves the performance of the same level as state-of-the-art while using way fewer parameters in the model ([Formula: see text]). Meanwhile, we conducted a model sensitivity analysis for our method. We ran experiments using a proportion (69.2%, 53.3%, and 29.4%) of the original training set and analyzed how much data the model needs for the task. Results show that this does reduce the overall classification accuracy mildly, but it also boosts the accuracy for minority classes. CONCLUSIONS: This work extended convolutional neural networks to Riemannian manifolds, and it shows the potential in understanding structural patterns in the brain, as well as in aiding manual data annotation. Society of Photo-Optical Instrumentation Engineers 2022-11-17 2022-11 /pmc/articles/PMC9670506/ /pubmed/36405814 http://dx.doi.org/10.1117/1.JMI.9.6.064002 Text en © 2022 The Authors https://creativecommons.org/licenses/by/4.0/Published by SPIE under a Creative Commons Attribution 4.0 International License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.
spellingShingle Image Processing
Liu, Renfei
Lauze, François
Erleben, Kenny
Berg, Rune W.
Darkner, Sune
Bundle geodesic convolutional neural network for diffusion-weighted imaging segmentation
title Bundle geodesic convolutional neural network for diffusion-weighted imaging segmentation
title_full Bundle geodesic convolutional neural network for diffusion-weighted imaging segmentation
title_fullStr Bundle geodesic convolutional neural network for diffusion-weighted imaging segmentation
title_full_unstemmed Bundle geodesic convolutional neural network for diffusion-weighted imaging segmentation
title_short Bundle geodesic convolutional neural network for diffusion-weighted imaging segmentation
title_sort bundle geodesic convolutional neural network for diffusion-weighted imaging segmentation
topic Image Processing
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9670506/
https://www.ncbi.nlm.nih.gov/pubmed/36405814
http://dx.doi.org/10.1117/1.JMI.9.6.064002
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