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Deep learning model for automatic segmentation of lungs and pulmonary metastasis in small animal MR images

Lungs are the most frequent site of metastases growth. The amount and size of pulmonary metastases acquired from MRI imaging data are the important criteria to assess the efficacy of new drugs in preclinical models. While efficient solutions both for MR imaging and the downstream automatic segmentat...

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Autores principales: Lefevre, Edgar, Bouilhol, Emmanuel, Chauvière, Antoine, Souleyreau, Wilfried, Derieppe, Marie-Alix, Trotier, Aurélien J., Miraux, Sylvain, Bikfalvi, Andreas, Ribot, Emeline J., Nikolski, Macha
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9580845/
https://www.ncbi.nlm.nih.gov/pubmed/36304332
http://dx.doi.org/10.3389/fbinf.2022.999700
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author Lefevre, Edgar
Bouilhol, Emmanuel
Chauvière, Antoine
Souleyreau, Wilfried
Derieppe, Marie-Alix
Trotier, Aurélien J.
Miraux, Sylvain
Bikfalvi, Andreas
Ribot, Emeline J.
Nikolski, Macha
author_facet Lefevre, Edgar
Bouilhol, Emmanuel
Chauvière, Antoine
Souleyreau, Wilfried
Derieppe, Marie-Alix
Trotier, Aurélien J.
Miraux, Sylvain
Bikfalvi, Andreas
Ribot, Emeline J.
Nikolski, Macha
author_sort Lefevre, Edgar
collection PubMed
description Lungs are the most frequent site of metastases growth. The amount and size of pulmonary metastases acquired from MRI imaging data are the important criteria to assess the efficacy of new drugs in preclinical models. While efficient solutions both for MR imaging and the downstream automatic segmentation have been proposed for human patients, both MRI lung imaging and segmentation in preclinical animal models remains challenging due to the physiological motion (respiratory and cardiac movements), to the low amount of protons in this organ and to the particular challenge of precise segmentation of metastases. As a consequence post-mortem analysis is currently required to obtain information on metastatic volume. In this work, we have developed a complete methodological pipeline for automated analysis of lungs and metastases in mice, consisting of an MR sequence for image acquisition and a deep learning method for automatic segmentation of both lungs and metastases. On one hand, we optimized an MR sequence for mouse lung imaging with high contrast for high detection sensitivity. On the other hand we developed DeepMeta, a multiclass U-Net 3+ deep learning model to automatically segment the images. To assess if the proposed deep learning pipeline is able to provide an accurate segmentation of both lungs and pulmonary metastases, we have longitudinally imaged mice with fast- and slow-growing metastasis. Fifty-five balb/c mice were injected with two different derivatives of renal carcinoma cells. Mice were imaged with a SG-bSSFP (self-gated balanced steady state free precession) sequence at different time points after the injection of cancer cells. Both lung and metastases segmentations were manually performed by experts. DeepMeta was trained to perform lung and metastases segmentation based on the resulting ground truth annotations. Volumes of lungs and of pulmonary metastases as well as the number of metastases per mouse were measured on a separate test dataset of MR images. Thanks to the SG method, the 3D bSSFP images of lungs were artifact-free, enabling the downstream detection and serial follow-up of metastases. Moreover, both lungs and metastases segmentation was accurately performed by DeepMeta as soon as they reached the volume of [Formula: see text] . Thus we were able to distinguish two groups of mice in terms of number and volume of pulmonary metastases as well as in terms of the slow versus fast patterns of growth of metastases. We have shown that our methodology combining SG-bSSFP with deep learning, enables processing of the whole animal lungs and is thus a viable alternative to histology alone.
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spelling pubmed-95808452022-10-26 Deep learning model for automatic segmentation of lungs and pulmonary metastasis in small animal MR images Lefevre, Edgar Bouilhol, Emmanuel Chauvière, Antoine Souleyreau, Wilfried Derieppe, Marie-Alix Trotier, Aurélien J. Miraux, Sylvain Bikfalvi, Andreas Ribot, Emeline J. Nikolski, Macha Front Bioinform Bioinformatics Lungs are the most frequent site of metastases growth. The amount and size of pulmonary metastases acquired from MRI imaging data are the important criteria to assess the efficacy of new drugs in preclinical models. While efficient solutions both for MR imaging and the downstream automatic segmentation have been proposed for human patients, both MRI lung imaging and segmentation in preclinical animal models remains challenging due to the physiological motion (respiratory and cardiac movements), to the low amount of protons in this organ and to the particular challenge of precise segmentation of metastases. As a consequence post-mortem analysis is currently required to obtain information on metastatic volume. In this work, we have developed a complete methodological pipeline for automated analysis of lungs and metastases in mice, consisting of an MR sequence for image acquisition and a deep learning method for automatic segmentation of both lungs and metastases. On one hand, we optimized an MR sequence for mouse lung imaging with high contrast for high detection sensitivity. On the other hand we developed DeepMeta, a multiclass U-Net 3+ deep learning model to automatically segment the images. To assess if the proposed deep learning pipeline is able to provide an accurate segmentation of both lungs and pulmonary metastases, we have longitudinally imaged mice with fast- and slow-growing metastasis. Fifty-five balb/c mice were injected with two different derivatives of renal carcinoma cells. Mice were imaged with a SG-bSSFP (self-gated balanced steady state free precession) sequence at different time points after the injection of cancer cells. Both lung and metastases segmentations were manually performed by experts. DeepMeta was trained to perform lung and metastases segmentation based on the resulting ground truth annotations. Volumes of lungs and of pulmonary metastases as well as the number of metastases per mouse were measured on a separate test dataset of MR images. Thanks to the SG method, the 3D bSSFP images of lungs were artifact-free, enabling the downstream detection and serial follow-up of metastases. Moreover, both lungs and metastases segmentation was accurately performed by DeepMeta as soon as they reached the volume of [Formula: see text] . Thus we were able to distinguish two groups of mice in terms of number and volume of pulmonary metastases as well as in terms of the slow versus fast patterns of growth of metastases. We have shown that our methodology combining SG-bSSFP with deep learning, enables processing of the whole animal lungs and is thus a viable alternative to histology alone. Frontiers Media S.A. 2022-10-12 /pmc/articles/PMC9580845/ /pubmed/36304332 http://dx.doi.org/10.3389/fbinf.2022.999700 Text en Copyright © 2022 Lefevre, Bouilhol, Chauvière, Souleyreau, Derieppe, Trotier, Miraux, Bikfalvi, Ribot and Nikolski. 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 Bioinformatics
Lefevre, Edgar
Bouilhol, Emmanuel
Chauvière, Antoine
Souleyreau, Wilfried
Derieppe, Marie-Alix
Trotier, Aurélien J.
Miraux, Sylvain
Bikfalvi, Andreas
Ribot, Emeline J.
Nikolski, Macha
Deep learning model for automatic segmentation of lungs and pulmonary metastasis in small animal MR images
title Deep learning model for automatic segmentation of lungs and pulmonary metastasis in small animal MR images
title_full Deep learning model for automatic segmentation of lungs and pulmonary metastasis in small animal MR images
title_fullStr Deep learning model for automatic segmentation of lungs and pulmonary metastasis in small animal MR images
title_full_unstemmed Deep learning model for automatic segmentation of lungs and pulmonary metastasis in small animal MR images
title_short Deep learning model for automatic segmentation of lungs and pulmonary metastasis in small animal MR images
title_sort deep learning model for automatic segmentation of lungs and pulmonary metastasis in small animal mr images
topic Bioinformatics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9580845/
https://www.ncbi.nlm.nih.gov/pubmed/36304332
http://dx.doi.org/10.3389/fbinf.2022.999700
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