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3D Segmentation of Perivascular Spaces on T1-Weighted 3 Tesla MR Images With a Convolutional Autoencoder and a U-Shaped Neural Network

We implemented a deep learning (DL) algorithm for the 3-dimensional segmentation of perivascular spaces (PVSs) in deep white matter (DWM) and basal ganglia (BG). This algorithm is based on an autoencoder and a U-shaped network (U-net), and was trained and tested using T1-weighted magnetic resonance...

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Autores principales: Boutinaud, Philippe, Tsuchida, Ami, Laurent, Alexandre, Adonias, Filipa, Hanifehlou, Zahra, Nozais, Victor, Verrecchia, Violaine, Lampe, Leonie, Zhang, Junyi, Zhu, Yi-Cheng, Tzourio, Christophe, Mazoyer, Bernard, Joliot, Marc
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8273917/
https://www.ncbi.nlm.nih.gov/pubmed/34262443
http://dx.doi.org/10.3389/fninf.2021.641600
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author Boutinaud, Philippe
Tsuchida, Ami
Laurent, Alexandre
Adonias, Filipa
Hanifehlou, Zahra
Nozais, Victor
Verrecchia, Violaine
Lampe, Leonie
Zhang, Junyi
Zhu, Yi-Cheng
Tzourio, Christophe
Mazoyer, Bernard
Joliot, Marc
author_facet Boutinaud, Philippe
Tsuchida, Ami
Laurent, Alexandre
Adonias, Filipa
Hanifehlou, Zahra
Nozais, Victor
Verrecchia, Violaine
Lampe, Leonie
Zhang, Junyi
Zhu, Yi-Cheng
Tzourio, Christophe
Mazoyer, Bernard
Joliot, Marc
author_sort Boutinaud, Philippe
collection PubMed
description We implemented a deep learning (DL) algorithm for the 3-dimensional segmentation of perivascular spaces (PVSs) in deep white matter (DWM) and basal ganglia (BG). This algorithm is based on an autoencoder and a U-shaped network (U-net), and was trained and tested using T1-weighted magnetic resonance imaging (MRI) data from a large database of 1,832 healthy young adults. An important feature of this approach is the ability to learn from relatively sparse data, which gives the present algorithm a major advantage over other DL algorithms. Here, we trained the algorithm with 40 T1-weighted MRI datasets in which all “visible” PVSs were manually annotated by an experienced operator. After learning, performance was assessed using another set of 10 MRI scans from the same database in which PVSs were also traced by the same operator and were checked by consensus with another experienced operator. The Sorensen-Dice coefficients for PVS voxel detection in DWM (resp. BG) were 0.51 (resp. 0.66), and 0.64 (resp. 0.71) for PVS cluster detection (volume threshold of 0.5 within a range of 0 to 1). Dice values above 0.90 could be reached for detecting PVSs larger than 10 mm(3) and 0.95 for PVSs larger than 15 mm(3). We then applied the trained algorithm to the rest of the database (1,782 individuals). The individual PVS load provided by the algorithm showed a high agreement with a semi-quantitative visual rating done by an independent expert rater, both for DWM and for BG. Finally, we applied the trained algorithm to an age-matched sample from another MRI database acquired using a different scanner. We obtained a very similar distribution of PVS load, demonstrating the interoperability of this algorithm.
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spelling pubmed-82739172021-07-13 3D Segmentation of Perivascular Spaces on T1-Weighted 3 Tesla MR Images With a Convolutional Autoencoder and a U-Shaped Neural Network Boutinaud, Philippe Tsuchida, Ami Laurent, Alexandre Adonias, Filipa Hanifehlou, Zahra Nozais, Victor Verrecchia, Violaine Lampe, Leonie Zhang, Junyi Zhu, Yi-Cheng Tzourio, Christophe Mazoyer, Bernard Joliot, Marc Front Neuroinform Neuroscience We implemented a deep learning (DL) algorithm for the 3-dimensional segmentation of perivascular spaces (PVSs) in deep white matter (DWM) and basal ganglia (BG). This algorithm is based on an autoencoder and a U-shaped network (U-net), and was trained and tested using T1-weighted magnetic resonance imaging (MRI) data from a large database of 1,832 healthy young adults. An important feature of this approach is the ability to learn from relatively sparse data, which gives the present algorithm a major advantage over other DL algorithms. Here, we trained the algorithm with 40 T1-weighted MRI datasets in which all “visible” PVSs were manually annotated by an experienced operator. After learning, performance was assessed using another set of 10 MRI scans from the same database in which PVSs were also traced by the same operator and were checked by consensus with another experienced operator. The Sorensen-Dice coefficients for PVS voxel detection in DWM (resp. BG) were 0.51 (resp. 0.66), and 0.64 (resp. 0.71) for PVS cluster detection (volume threshold of 0.5 within a range of 0 to 1). Dice values above 0.90 could be reached for detecting PVSs larger than 10 mm(3) and 0.95 for PVSs larger than 15 mm(3). We then applied the trained algorithm to the rest of the database (1,782 individuals). The individual PVS load provided by the algorithm showed a high agreement with a semi-quantitative visual rating done by an independent expert rater, both for DWM and for BG. Finally, we applied the trained algorithm to an age-matched sample from another MRI database acquired using a different scanner. We obtained a very similar distribution of PVS load, demonstrating the interoperability of this algorithm. Frontiers Media S.A. 2021-06-18 /pmc/articles/PMC8273917/ /pubmed/34262443 http://dx.doi.org/10.3389/fninf.2021.641600 Text en Copyright © 2021 Boutinaud, Tsuchida, Laurent, Adonias, Hanifehlou, Nozais, Verrecchia, Lampe, Zhang, Zhu, Tzourio, Mazoyer and Joliot. 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
Boutinaud, Philippe
Tsuchida, Ami
Laurent, Alexandre
Adonias, Filipa
Hanifehlou, Zahra
Nozais, Victor
Verrecchia, Violaine
Lampe, Leonie
Zhang, Junyi
Zhu, Yi-Cheng
Tzourio, Christophe
Mazoyer, Bernard
Joliot, Marc
3D Segmentation of Perivascular Spaces on T1-Weighted 3 Tesla MR Images With a Convolutional Autoencoder and a U-Shaped Neural Network
title 3D Segmentation of Perivascular Spaces on T1-Weighted 3 Tesla MR Images With a Convolutional Autoencoder and a U-Shaped Neural Network
title_full 3D Segmentation of Perivascular Spaces on T1-Weighted 3 Tesla MR Images With a Convolutional Autoencoder and a U-Shaped Neural Network
title_fullStr 3D Segmentation of Perivascular Spaces on T1-Weighted 3 Tesla MR Images With a Convolutional Autoencoder and a U-Shaped Neural Network
title_full_unstemmed 3D Segmentation of Perivascular Spaces on T1-Weighted 3 Tesla MR Images With a Convolutional Autoencoder and a U-Shaped Neural Network
title_short 3D Segmentation of Perivascular Spaces on T1-Weighted 3 Tesla MR Images With a Convolutional Autoencoder and a U-Shaped Neural Network
title_sort 3d segmentation of perivascular spaces on t1-weighted 3 tesla mr images with a convolutional autoencoder and a u-shaped neural network
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8273917/
https://www.ncbi.nlm.nih.gov/pubmed/34262443
http://dx.doi.org/10.3389/fninf.2021.641600
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