TractLearn: A geodesic learning framework for quantitative analysis of brain bundles
Deep learning-based convolutional neural networks have recently proved their efficiency in providing fast segmentation of major brain fascicles structures, based on diffusion-weighted imaging. The quantitative analysis of brain fascicles then relies on metrics either coming from the tractography pro...
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doaj-f85dba70cf1246a9b4334c0b30d4b8e42021-04-26T05:53:58ZengElsevierNeuroImage1095-95722021-06-01233117927TractLearn: A geodesic learning framework for quantitative analysis of brain bundlesArnaud Attyé0Félix Renard1Monica Baciu2Elise Roger3Laurent Lamalle4Patrick Dehail5Hélène Cassoudesalle6Fernando Calamante7Neuroradiology and MRI, Grenoble Alpes University Hospital, Grenoble, France; School of Biomedical Engineering, The University of Sydney, Sydney, NSW 2006, Australia; Corresponding author at: Neuroradiology and MRI, Grenoble Alpes University Hospital, Grenoble, France.Neuroradiology and MRI, Grenoble Alpes University Hospital, Grenoble, FranceNeuroradiology and MRI, Grenoble Alpes University Hospital, Grenoble, FranceNeuroradiology and MRI, Grenoble Alpes University Hospital, Grenoble, FranceUniversity Grenoble Alpes, Grenoble, France; IRMaGe, Inserm US 17, CNRS UMS 3552, Grenoble, FrancePhysical and Rehabilitation Medicine department, University Hospital of Bordeaux, Bordeaux, France; 2EA4136-HACS, The University of Bordeaux, Bordeaux, FrancePhysical and Rehabilitation Medicine department, University Hospital of Bordeaux, Bordeaux, France; 2EA4136-HACS, The University of Bordeaux, Bordeaux, FranceSchool of Biomedical Engineering, The University of Sydney, Sydney, NSW 2006, Australia; Sydney Imaging – The University of Sydney, Sydney, AustraliaDeep learning-based convolutional neural networks have recently proved their efficiency in providing fast segmentation of major brain fascicles structures, based on diffusion-weighted imaging. The quantitative analysis of brain fascicles then relies on metrics either coming from the tractography process itself or from each voxel along the bundle.Statistical detection of abnormal voxels in the context of disease usually relies on univariate and multivariate statistics models, such as the General Linear Model (GLM). Yet in the case of high-dimensional low sample size data, the GLM often implies high standard deviation range in controls due to anatomical variability, despite the commonly used smoothing process. This can lead to difficulties to detect subtle quantitative alterations from a brain bundle at the voxel scale.Here we introduce TractLearn, a unified framework for brain fascicles quantitative analyses by using geodesic learning as a data-driven learning task. TractLearn allows a mapping between the image high-dimensional domain and the reduced latent space of brain fascicles using a Riemannian approach.We illustrate the robustness of this method on a healthy population with test-retest acquisition of multi-shell diffusion MRI data, demonstrating that it is possible to separately study the global effect due to different MRI sessions from the effect of local bundle alterations. We have then tested the efficiency of our algorithm on a sample of 5 age-matched subjects referred with mild traumatic brain injury.Our contributions are to propose:1/ A manifold approach to capture controls variability as standard reference instead of an atlas approach based on a Euclidean mean.2/ A tool to detect global variation of voxels’ quantitative values, which accounts for voxels’ interactions in a structure rather than analyzing voxels independently.3/ A ready-to-plug algorithm to highlight nonlinear variation of diffusion MRI metrics.With this regard, TractLearn is a ready-to-use algorithm for precision medicine.http://www.sciencedirect.com/science/article/pii/S1053811921002044Diffusion MRIFiber tractographyPrecision medicineManifold learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Arnaud Attyé Félix Renard Monica Baciu Elise Roger Laurent Lamalle Patrick Dehail Hélène Cassoudesalle Fernando Calamante |
spellingShingle |
Arnaud Attyé Félix Renard Monica Baciu Elise Roger Laurent Lamalle Patrick Dehail Hélène Cassoudesalle Fernando Calamante TractLearn: A geodesic learning framework for quantitative analysis of brain bundles NeuroImage Diffusion MRI Fiber tractography Precision medicine Manifold learning |
author_facet |
Arnaud Attyé Félix Renard Monica Baciu Elise Roger Laurent Lamalle Patrick Dehail Hélène Cassoudesalle Fernando Calamante |
author_sort |
Arnaud Attyé |
title |
TractLearn: A geodesic learning framework for quantitative analysis of brain bundles |
title_short |
TractLearn: A geodesic learning framework for quantitative analysis of brain bundles |
title_full |
TractLearn: A geodesic learning framework for quantitative analysis of brain bundles |
title_fullStr |
TractLearn: A geodesic learning framework for quantitative analysis of brain bundles |
title_full_unstemmed |
TractLearn: A geodesic learning framework for quantitative analysis of brain bundles |
title_sort |
tractlearn: a geodesic learning framework for quantitative analysis of brain bundles |
publisher |
Elsevier |
series |
NeuroImage |
issn |
1095-9572 |
publishDate |
2021-06-01 |
description |
Deep learning-based convolutional neural networks have recently proved their efficiency in providing fast segmentation of major brain fascicles structures, based on diffusion-weighted imaging. The quantitative analysis of brain fascicles then relies on metrics either coming from the tractography process itself or from each voxel along the bundle.Statistical detection of abnormal voxels in the context of disease usually relies on univariate and multivariate statistics models, such as the General Linear Model (GLM). Yet in the case of high-dimensional low sample size data, the GLM often implies high standard deviation range in controls due to anatomical variability, despite the commonly used smoothing process. This can lead to difficulties to detect subtle quantitative alterations from a brain bundle at the voxel scale.Here we introduce TractLearn, a unified framework for brain fascicles quantitative analyses by using geodesic learning as a data-driven learning task. TractLearn allows a mapping between the image high-dimensional domain and the reduced latent space of brain fascicles using a Riemannian approach.We illustrate the robustness of this method on a healthy population with test-retest acquisition of multi-shell diffusion MRI data, demonstrating that it is possible to separately study the global effect due to different MRI sessions from the effect of local bundle alterations. We have then tested the efficiency of our algorithm on a sample of 5 age-matched subjects referred with mild traumatic brain injury.Our contributions are to propose:1/ A manifold approach to capture controls variability as standard reference instead of an atlas approach based on a Euclidean mean.2/ A tool to detect global variation of voxels’ quantitative values, which accounts for voxels’ interactions in a structure rather than analyzing voxels independently.3/ A ready-to-plug algorithm to highlight nonlinear variation of diffusion MRI metrics.With this regard, TractLearn is a ready-to-use algorithm for precision medicine. |
topic |
Diffusion MRI Fiber tractography Precision medicine Manifold learning |
url |
http://www.sciencedirect.com/science/article/pii/S1053811921002044 |
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