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A generalized deep learning network for fractional anisotropy reconstruction: Application to epilepsy and multiple sclerosis

Fractional anisotropy (FA) is a quantitative map sensitive to microstructural properties of tissues in vivo and it is extensively used to study the healthy and pathological brain. This map is classically calculated by model fitting (standard method) and requires many diffusion weighted (DW) images f...

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Autores principales: Gaviraghi, Marta, Ricciardi, Antonio, Palesi, Fulvia, Brownlee, Wallace, Vitali, Paolo, Prados, Ferran, Kanber, Baris, Gandini Wheeler-Kingshott, Claudia A. M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9390860/
https://www.ncbi.nlm.nih.gov/pubmed/35991288
http://dx.doi.org/10.3389/fninf.2022.891234
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author Gaviraghi, Marta
Ricciardi, Antonio
Palesi, Fulvia
Brownlee, Wallace
Vitali, Paolo
Prados, Ferran
Kanber, Baris
Gandini Wheeler-Kingshott, Claudia A. M.
author_facet Gaviraghi, Marta
Ricciardi, Antonio
Palesi, Fulvia
Brownlee, Wallace
Vitali, Paolo
Prados, Ferran
Kanber, Baris
Gandini Wheeler-Kingshott, Claudia A. M.
author_sort Gaviraghi, Marta
collection PubMed
description Fractional anisotropy (FA) is a quantitative map sensitive to microstructural properties of tissues in vivo and it is extensively used to study the healthy and pathological brain. This map is classically calculated by model fitting (standard method) and requires many diffusion weighted (DW) images for data quality and unbiased readings, hence needing the acquisition time of several minutes. Here, we adapted the U-net architecture to be generalized and to obtain good quality FA from DW volumes acquired in 1 minute. Our network requires 10 input DW volumes (hence fast acquisition), is robust to the direction of application of the diffusion gradients (hence generalized), and preserves/improves map quality (hence good quality maps). We trained the network on the human connectome project (HCP) data using the standard model-fitting method on the entire set of DW directions to extract FA (ground truth). We addressed the generalization problem, i.e., we trained the network to be applicable, without retraining, to clinical datasets acquired on different scanners with different DW imaging protocols. The network was applied to two different clinical datasets to assess FA quality and sensitivity to pathology in temporal lobe epilepsy and multiple sclerosis, respectively. For HCP data, when compared to the ground truth FA, the FA obtained from 10 DW volumes using the network was significantly better (p <10(−4)) than the FA obtained using the standard pipeline. For the clinical datasets, the network FA retained the same microstructural characteristics as the FA calculated with all DW volumes using the standard method. At the subject level, the comparison between white matter (WM) ground truth FA values and network FA showed the same distribution; at the group level, statistical differences of WM values detected in the clinical datasets with the ground truth FA were reproduced when using values from the network FA, i.e., the network retained sensitivity to pathology. In conclusion, the proposed network provides a clinically available method to obtain FA from a generic set of 10 DW volumes acquirable in 1 minute, augmenting data quality compared to direct model fitting, reducing the possibility of bias from sub-sampled data, and retaining FA pathological sensitivity, which is very attractive for clinical applications.
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spelling pubmed-93908602022-08-20 A generalized deep learning network for fractional anisotropy reconstruction: Application to epilepsy and multiple sclerosis Gaviraghi, Marta Ricciardi, Antonio Palesi, Fulvia Brownlee, Wallace Vitali, Paolo Prados, Ferran Kanber, Baris Gandini Wheeler-Kingshott, Claudia A. M. Front Neuroinform Neuroscience Fractional anisotropy (FA) is a quantitative map sensitive to microstructural properties of tissues in vivo and it is extensively used to study the healthy and pathological brain. This map is classically calculated by model fitting (standard method) and requires many diffusion weighted (DW) images for data quality and unbiased readings, hence needing the acquisition time of several minutes. Here, we adapted the U-net architecture to be generalized and to obtain good quality FA from DW volumes acquired in 1 minute. Our network requires 10 input DW volumes (hence fast acquisition), is robust to the direction of application of the diffusion gradients (hence generalized), and preserves/improves map quality (hence good quality maps). We trained the network on the human connectome project (HCP) data using the standard model-fitting method on the entire set of DW directions to extract FA (ground truth). We addressed the generalization problem, i.e., we trained the network to be applicable, without retraining, to clinical datasets acquired on different scanners with different DW imaging protocols. The network was applied to two different clinical datasets to assess FA quality and sensitivity to pathology in temporal lobe epilepsy and multiple sclerosis, respectively. For HCP data, when compared to the ground truth FA, the FA obtained from 10 DW volumes using the network was significantly better (p <10(−4)) than the FA obtained using the standard pipeline. For the clinical datasets, the network FA retained the same microstructural characteristics as the FA calculated with all DW volumes using the standard method. At the subject level, the comparison between white matter (WM) ground truth FA values and network FA showed the same distribution; at the group level, statistical differences of WM values detected in the clinical datasets with the ground truth FA were reproduced when using values from the network FA, i.e., the network retained sensitivity to pathology. In conclusion, the proposed network provides a clinically available method to obtain FA from a generic set of 10 DW volumes acquirable in 1 minute, augmenting data quality compared to direct model fitting, reducing the possibility of bias from sub-sampled data, and retaining FA pathological sensitivity, which is very attractive for clinical applications. Frontiers Media S.A. 2022-08-05 /pmc/articles/PMC9390860/ /pubmed/35991288 http://dx.doi.org/10.3389/fninf.2022.891234 Text en Copyright © 2022 Gaviraghi, Ricciardi, Palesi, Brownlee, Vitali, Prados, Kanber and Gandini Wheeler-Kingshott. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neuroscience
Gaviraghi, Marta
Ricciardi, Antonio
Palesi, Fulvia
Brownlee, Wallace
Vitali, Paolo
Prados, Ferran
Kanber, Baris
Gandini Wheeler-Kingshott, Claudia A. M.
A generalized deep learning network for fractional anisotropy reconstruction: Application to epilepsy and multiple sclerosis
title A generalized deep learning network for fractional anisotropy reconstruction: Application to epilepsy and multiple sclerosis
title_full A generalized deep learning network for fractional anisotropy reconstruction: Application to epilepsy and multiple sclerosis
title_fullStr A generalized deep learning network for fractional anisotropy reconstruction: Application to epilepsy and multiple sclerosis
title_full_unstemmed A generalized deep learning network for fractional anisotropy reconstruction: Application to epilepsy and multiple sclerosis
title_short A generalized deep learning network for fractional anisotropy reconstruction: Application to epilepsy and multiple sclerosis
title_sort generalized deep learning network for fractional anisotropy reconstruction: application to epilepsy and multiple sclerosis
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9390860/
https://www.ncbi.nlm.nih.gov/pubmed/35991288
http://dx.doi.org/10.3389/fninf.2022.891234
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