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Uncovering convolutional neural network decisions for diagnosing multiple sclerosis on conventional MRI using layer-wise relevance propagation

Machine learning-based imaging diagnostics has recently reached or even surpassed the level of clinical experts in several clinical domains. However, classification decisions of a trained machine learning system are typically non-transparent, a major hindrance for clinical integration, error trackin...

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Autores principales: Eitel, Fabian, Soehler, Emily, Bellmann-Strobl, Judith, Brandt, Alexander U., Ruprecht, Klemens, Giess, René M., Kuchling, Joseph, Asseyer, Susanna, Weygandt, Martin, Haynes, John-Dylan, Scheel, Michael, Paul, Friedemann, Ritter, Kerstin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6807560/
https://www.ncbi.nlm.nih.gov/pubmed/31634822
http://dx.doi.org/10.1016/j.nicl.2019.102003
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author Eitel, Fabian
Soehler, Emily
Bellmann-Strobl, Judith
Brandt, Alexander U.
Ruprecht, Klemens
Giess, René M.
Kuchling, Joseph
Asseyer, Susanna
Weygandt, Martin
Haynes, John-Dylan
Scheel, Michael
Paul, Friedemann
Ritter, Kerstin
author_facet Eitel, Fabian
Soehler, Emily
Bellmann-Strobl, Judith
Brandt, Alexander U.
Ruprecht, Klemens
Giess, René M.
Kuchling, Joseph
Asseyer, Susanna
Weygandt, Martin
Haynes, John-Dylan
Scheel, Michael
Paul, Friedemann
Ritter, Kerstin
author_sort Eitel, Fabian
collection PubMed
description Machine learning-based imaging diagnostics has recently reached or even surpassed the level of clinical experts in several clinical domains. However, classification decisions of a trained machine learning system are typically non-transparent, a major hindrance for clinical integration, error tracking or knowledge discovery. In this study, we present a transparent deep learning framework relying on 3D convolutional neural networks (CNNs) and layer-wise relevance propagation (LRP) for diagnosing multiple sclerosis (MS), the most widespread autoimmune neuroinflammatory disease. MS is commonly diagnosed utilizing a combination of clinical presentation and conventional magnetic resonance imaging (MRI), specifically the occurrence and presentation of white matter lesions in T2-weighted images. We hypothesized that using LRP in a naive predictive model would enable us to uncover relevant image features that a trained CNN uses for decision-making. Since imaging markers in MS are well-established this would enable us to validate the respective CNN model. First, we pre-trained a CNN on MRI data from the Alzheimer's Disease Neuroimaging Initiative (n = 921), afterwards specializing the CNN to discriminate between MS patients (n = 76) and healthy controls (n = 71). Using LRP, we then produced a heatmap for each subject in the holdout set depicting the voxel-wise relevance for a particular classification decision. The resulting CNN model resulted in a balanced accuracy of 87.04% and an area under the curve of 96.08% in a receiver operating characteristic curve. The subsequent LRP visualization revealed that the CNN model focuses indeed on individual lesions, but also incorporates additional information such as lesion location, non-lesional white matter or gray matter areas such as the thalamus, which are established conventional and advanced MRI markers in MS. We conclude that LRP and the proposed framework have the capability to make diagnostic decisions of CNN models transparent, which could serve to justify classification decisions for clinical review, verify diagnosis-relevant features and potentially gather new disease knowledge.
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spelling pubmed-68075602019-10-30 Uncovering convolutional neural network decisions for diagnosing multiple sclerosis on conventional MRI using layer-wise relevance propagation Eitel, Fabian Soehler, Emily Bellmann-Strobl, Judith Brandt, Alexander U. Ruprecht, Klemens Giess, René M. Kuchling, Joseph Asseyer, Susanna Weygandt, Martin Haynes, John-Dylan Scheel, Michael Paul, Friedemann Ritter, Kerstin Neuroimage Clin Regular Article Machine learning-based imaging diagnostics has recently reached or even surpassed the level of clinical experts in several clinical domains. However, classification decisions of a trained machine learning system are typically non-transparent, a major hindrance for clinical integration, error tracking or knowledge discovery. In this study, we present a transparent deep learning framework relying on 3D convolutional neural networks (CNNs) and layer-wise relevance propagation (LRP) for diagnosing multiple sclerosis (MS), the most widespread autoimmune neuroinflammatory disease. MS is commonly diagnosed utilizing a combination of clinical presentation and conventional magnetic resonance imaging (MRI), specifically the occurrence and presentation of white matter lesions in T2-weighted images. We hypothesized that using LRP in a naive predictive model would enable us to uncover relevant image features that a trained CNN uses for decision-making. Since imaging markers in MS are well-established this would enable us to validate the respective CNN model. First, we pre-trained a CNN on MRI data from the Alzheimer's Disease Neuroimaging Initiative (n = 921), afterwards specializing the CNN to discriminate between MS patients (n = 76) and healthy controls (n = 71). Using LRP, we then produced a heatmap for each subject in the holdout set depicting the voxel-wise relevance for a particular classification decision. The resulting CNN model resulted in a balanced accuracy of 87.04% and an area under the curve of 96.08% in a receiver operating characteristic curve. The subsequent LRP visualization revealed that the CNN model focuses indeed on individual lesions, but also incorporates additional information such as lesion location, non-lesional white matter or gray matter areas such as the thalamus, which are established conventional and advanced MRI markers in MS. We conclude that LRP and the proposed framework have the capability to make diagnostic decisions of CNN models transparent, which could serve to justify classification decisions for clinical review, verify diagnosis-relevant features and potentially gather new disease knowledge. Elsevier 2019-09-06 /pmc/articles/PMC6807560/ /pubmed/31634822 http://dx.doi.org/10.1016/j.nicl.2019.102003 Text en © 2019 The Authors http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Regular Article
Eitel, Fabian
Soehler, Emily
Bellmann-Strobl, Judith
Brandt, Alexander U.
Ruprecht, Klemens
Giess, René M.
Kuchling, Joseph
Asseyer, Susanna
Weygandt, Martin
Haynes, John-Dylan
Scheel, Michael
Paul, Friedemann
Ritter, Kerstin
Uncovering convolutional neural network decisions for diagnosing multiple sclerosis on conventional MRI using layer-wise relevance propagation
title Uncovering convolutional neural network decisions for diagnosing multiple sclerosis on conventional MRI using layer-wise relevance propagation
title_full Uncovering convolutional neural network decisions for diagnosing multiple sclerosis on conventional MRI using layer-wise relevance propagation
title_fullStr Uncovering convolutional neural network decisions for diagnosing multiple sclerosis on conventional MRI using layer-wise relevance propagation
title_full_unstemmed Uncovering convolutional neural network decisions for diagnosing multiple sclerosis on conventional MRI using layer-wise relevance propagation
title_short Uncovering convolutional neural network decisions for diagnosing multiple sclerosis on conventional MRI using layer-wise relevance propagation
title_sort uncovering convolutional neural network decisions for diagnosing multiple sclerosis on conventional mri using layer-wise relevance propagation
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6807560/
https://www.ncbi.nlm.nih.gov/pubmed/31634822
http://dx.doi.org/10.1016/j.nicl.2019.102003
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