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Combining Multi-Shell Diffusion with Conventional MRI Improves Molecular Diagnosis of Diffuse Gliomas with Deep Learning

SIMPLE SUMMARY: The integration of advanced magnetic resonance imaging (MRI) has the potential to enable the improved prediction of the molecular diagnosis of adult-type gliomas. In this context, this study investigated whether deep learning-based predictive models can benefit from adding multi-shel...

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Autores principales: Karami, Golestan, Pascuzzo, Riccardo, Figini, Matteo, Del Gratta, Cosimo, Zhang, Hui, Bizzi, Alberto
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9856805/
https://www.ncbi.nlm.nih.gov/pubmed/36672430
http://dx.doi.org/10.3390/cancers15020482
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author Karami, Golestan
Pascuzzo, Riccardo
Figini, Matteo
Del Gratta, Cosimo
Zhang, Hui
Bizzi, Alberto
author_facet Karami, Golestan
Pascuzzo, Riccardo
Figini, Matteo
Del Gratta, Cosimo
Zhang, Hui
Bizzi, Alberto
author_sort Karami, Golestan
collection PubMed
description SIMPLE SUMMARY: The integration of advanced magnetic resonance imaging (MRI) has the potential to enable the improved prediction of the molecular diagnosis of adult-type gliomas. In this context, this study investigated whether deep learning-based predictive models can benefit from adding multi-shell diffusion MRI to conventional MRI. We evaluated the performance of an exemplar deep learning model for differentiating (1) isocitrate dehydrogenase (IDH)-mutation versus IDH-wildtype; (2) 1p/19q codeletion versus 1p/19q non-codeletion; and (3) IDH-mutation with or without 1p/19q codeletion, and IDH-wildtype. The model achieved the best prediction performance in our cohort of 146 patients in all three tasks when multi-shell diffusion MRI and conventional MRI are combined. These results demonstrate the specific added value provided by advanced diffusion MRI, extending the current literature on building deep learning models based on multiple MRI modalities. ABSTRACT: The WHO classification since 2016 confirms the importance of integrating molecular diagnosis for prognosis and treatment decisions of adult-type diffuse gliomas. This motivates the development of non-invasive diagnostic methods, in particular MRI, to predict molecular subtypes of gliomas before surgery. At present, this development has been focused on deep-learning (DL)-based predictive models, mainly with conventional MRI (cMRI), despite recent studies suggesting multi-shell diffusion MRI (dMRI) offers complementary information to cMRI for molecular subtyping. The aim of this work is to evaluate the potential benefit of combining cMRI and multi-shell dMRI in DL-based models. A model implemented with deep residual neural networks was chosen as an illustrative example. Using a dataset of 146 patients with gliomas (from grade 2 to 4), the model was trained and evaluated, with nested cross-validation, on pre-operative cMRI, multi-shell dMRI, and a combination of the two for the following classification tasks: (i) IDH-mutation; (ii) 1p/19q-codeletion; and (iii) three molecular subtypes according to WHO 2021. The results from a subset of 100 patients with lower grades gliomas (2 and 3 according to WHO 2016) demonstrated that combining cMRI and multi-shell dMRI enabled the best performance in predicting IDH mutation and 1p/19q codeletion, achieving an accuracy of 75 ± 9% in predicting the IDH-mutation status, higher than using cMRI and multi-shell dMRI separately (both 70 ± 7%). Similar findings were observed for predicting the 1p/19q-codeletion status, with the accuracy from combining cMRI and multi-shell dMRI (72 ± 4%) higher than from each modality used alone (cMRI: 65 ± 6%; multi-shell dMRI: 66 ± 9%). These findings remain when we considered all 146 patients for predicting the IDH status (combined: 81 ± 5% accuracy; cMRI: 74 ± 5%; multi-shell dMRI: 73 ± 6%) and for the diagnosis of the three molecular subtypes according to WHO 2021 (combined: 60 ± 5%; cMRI: 57 ± 8%; multi-shell dMRI: 56 ± 7%). Together, these findings suggest that combining cMRI and multi-shell dMRI can offer higher accuracy than using each modality alone for predicting the IDH and 1p/19q status and in diagnosing the three molecular subtypes with DL-based models.
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spelling pubmed-98568052023-01-21 Combining Multi-Shell Diffusion with Conventional MRI Improves Molecular Diagnosis of Diffuse Gliomas with Deep Learning Karami, Golestan Pascuzzo, Riccardo Figini, Matteo Del Gratta, Cosimo Zhang, Hui Bizzi, Alberto Cancers (Basel) Article SIMPLE SUMMARY: The integration of advanced magnetic resonance imaging (MRI) has the potential to enable the improved prediction of the molecular diagnosis of adult-type gliomas. In this context, this study investigated whether deep learning-based predictive models can benefit from adding multi-shell diffusion MRI to conventional MRI. We evaluated the performance of an exemplar deep learning model for differentiating (1) isocitrate dehydrogenase (IDH)-mutation versus IDH-wildtype; (2) 1p/19q codeletion versus 1p/19q non-codeletion; and (3) IDH-mutation with or without 1p/19q codeletion, and IDH-wildtype. The model achieved the best prediction performance in our cohort of 146 patients in all three tasks when multi-shell diffusion MRI and conventional MRI are combined. These results demonstrate the specific added value provided by advanced diffusion MRI, extending the current literature on building deep learning models based on multiple MRI modalities. ABSTRACT: The WHO classification since 2016 confirms the importance of integrating molecular diagnosis for prognosis and treatment decisions of adult-type diffuse gliomas. This motivates the development of non-invasive diagnostic methods, in particular MRI, to predict molecular subtypes of gliomas before surgery. At present, this development has been focused on deep-learning (DL)-based predictive models, mainly with conventional MRI (cMRI), despite recent studies suggesting multi-shell diffusion MRI (dMRI) offers complementary information to cMRI for molecular subtyping. The aim of this work is to evaluate the potential benefit of combining cMRI and multi-shell dMRI in DL-based models. A model implemented with deep residual neural networks was chosen as an illustrative example. Using a dataset of 146 patients with gliomas (from grade 2 to 4), the model was trained and evaluated, with nested cross-validation, on pre-operative cMRI, multi-shell dMRI, and a combination of the two for the following classification tasks: (i) IDH-mutation; (ii) 1p/19q-codeletion; and (iii) three molecular subtypes according to WHO 2021. The results from a subset of 100 patients with lower grades gliomas (2 and 3 according to WHO 2016) demonstrated that combining cMRI and multi-shell dMRI enabled the best performance in predicting IDH mutation and 1p/19q codeletion, achieving an accuracy of 75 ± 9% in predicting the IDH-mutation status, higher than using cMRI and multi-shell dMRI separately (both 70 ± 7%). Similar findings were observed for predicting the 1p/19q-codeletion status, with the accuracy from combining cMRI and multi-shell dMRI (72 ± 4%) higher than from each modality used alone (cMRI: 65 ± 6%; multi-shell dMRI: 66 ± 9%). These findings remain when we considered all 146 patients for predicting the IDH status (combined: 81 ± 5% accuracy; cMRI: 74 ± 5%; multi-shell dMRI: 73 ± 6%) and for the diagnosis of the three molecular subtypes according to WHO 2021 (combined: 60 ± 5%; cMRI: 57 ± 8%; multi-shell dMRI: 56 ± 7%). Together, these findings suggest that combining cMRI and multi-shell dMRI can offer higher accuracy than using each modality alone for predicting the IDH and 1p/19q status and in diagnosing the three molecular subtypes with DL-based models. MDPI 2023-01-12 /pmc/articles/PMC9856805/ /pubmed/36672430 http://dx.doi.org/10.3390/cancers15020482 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Karami, Golestan
Pascuzzo, Riccardo
Figini, Matteo
Del Gratta, Cosimo
Zhang, Hui
Bizzi, Alberto
Combining Multi-Shell Diffusion with Conventional MRI Improves Molecular Diagnosis of Diffuse Gliomas with Deep Learning
title Combining Multi-Shell Diffusion with Conventional MRI Improves Molecular Diagnosis of Diffuse Gliomas with Deep Learning
title_full Combining Multi-Shell Diffusion with Conventional MRI Improves Molecular Diagnosis of Diffuse Gliomas with Deep Learning
title_fullStr Combining Multi-Shell Diffusion with Conventional MRI Improves Molecular Diagnosis of Diffuse Gliomas with Deep Learning
title_full_unstemmed Combining Multi-Shell Diffusion with Conventional MRI Improves Molecular Diagnosis of Diffuse Gliomas with Deep Learning
title_short Combining Multi-Shell Diffusion with Conventional MRI Improves Molecular Diagnosis of Diffuse Gliomas with Deep Learning
title_sort combining multi-shell diffusion with conventional mri improves molecular diagnosis of diffuse gliomas with deep learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9856805/
https://www.ncbi.nlm.nih.gov/pubmed/36672430
http://dx.doi.org/10.3390/cancers15020482
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