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Deep multi-task learning and random forest for series classification by pulse sequence type and orientation

PURPOSE: Increasingly complex MRI studies and variable series naming conventions reveal limitations of rule-based image routing, especially in health systems with multiple scanners and sites. Accurate methods to identify series based on image content would aid post-processing and PACS viewing. Recen...

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Autores principales: Kasmanoff, Noah, Lee, Matthew D., Razavian, Narges, Lui, Yvonne W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Berlin Heidelberg 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9361920/
https://www.ncbi.nlm.nih.gov/pubmed/35906437
http://dx.doi.org/10.1007/s00234-022-03023-7
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author Kasmanoff, Noah
Lee, Matthew D.
Razavian, Narges
Lui, Yvonne W.
author_facet Kasmanoff, Noah
Lee, Matthew D.
Razavian, Narges
Lui, Yvonne W.
author_sort Kasmanoff, Noah
collection PubMed
description PURPOSE: Increasingly complex MRI studies and variable series naming conventions reveal limitations of rule-based image routing, especially in health systems with multiple scanners and sites. Accurate methods to identify series based on image content would aid post-processing and PACS viewing. Recent deep/machine learning efforts classify 5–8 basic brain MR sequences. We present an ensemble model combining a convolutional neural network and a random forest classifier to differentiate 25 brain sequences and image orientation. METHODS: Series were grouped by descriptions into 25 sequences and 4 orientations. Dataset A, obtained from our institution, was divided into training (16,828 studies; 48,512 series; 112,028 images), validation (4746 studies; 16,612 series; 26,222 images) and test sets (6348 studies; 58,705 series; 3,314,018 images). Dataset B, obtained from a separate hospital, was used for out-of-domain external validation (1252 studies; 2150 series; 234,944 images). We developed an ensemble model combining a 2D convolutional neural network with a custom multi-task learning architecture and random forest classifier trained on DICOM metadata to classify sequence and orientation by series. RESULTS: The neural network, random forest, and ensemble achieved 95%, 97%, and 98% overall sequence accuracy on dataset A, and 98%, 99%, and 99% accuracy on dataset B, respectively. All models achieved > 99% orientation accuracy on both datasets. CONCLUSION: The ensemble model for series identification accommodates the complexity of brain MRI studies in state-of-the-art clinical practice. Expanding on previous work demonstrating proof-of-concept, our approach is more comprehensive with greater sequence diversity and orientation classification.
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spelling pubmed-93619202022-08-10 Deep multi-task learning and random forest for series classification by pulse sequence type and orientation Kasmanoff, Noah Lee, Matthew D. Razavian, Narges Lui, Yvonne W. Neuroradiology Diagnostic Neuroradiology PURPOSE: Increasingly complex MRI studies and variable series naming conventions reveal limitations of rule-based image routing, especially in health systems with multiple scanners and sites. Accurate methods to identify series based on image content would aid post-processing and PACS viewing. Recent deep/machine learning efforts classify 5–8 basic brain MR sequences. We present an ensemble model combining a convolutional neural network and a random forest classifier to differentiate 25 brain sequences and image orientation. METHODS: Series were grouped by descriptions into 25 sequences and 4 orientations. Dataset A, obtained from our institution, was divided into training (16,828 studies; 48,512 series; 112,028 images), validation (4746 studies; 16,612 series; 26,222 images) and test sets (6348 studies; 58,705 series; 3,314,018 images). Dataset B, obtained from a separate hospital, was used for out-of-domain external validation (1252 studies; 2150 series; 234,944 images). We developed an ensemble model combining a 2D convolutional neural network with a custom multi-task learning architecture and random forest classifier trained on DICOM metadata to classify sequence and orientation by series. RESULTS: The neural network, random forest, and ensemble achieved 95%, 97%, and 98% overall sequence accuracy on dataset A, and 98%, 99%, and 99% accuracy on dataset B, respectively. All models achieved > 99% orientation accuracy on both datasets. CONCLUSION: The ensemble model for series identification accommodates the complexity of brain MRI studies in state-of-the-art clinical practice. Expanding on previous work demonstrating proof-of-concept, our approach is more comprehensive with greater sequence diversity and orientation classification. Springer Berlin Heidelberg 2022-07-30 2023 /pmc/articles/PMC9361920/ /pubmed/35906437 http://dx.doi.org/10.1007/s00234-022-03023-7 Text en © The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature 2022, Springer Nature or its licensor holds exclusive rights to this article under a publishing agreement with the author(s) or other rightsholder(s); author self-archiving of the accepted manuscript version of this article is solely governed by the terms of such publishing agreement and applicable law. This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Diagnostic Neuroradiology
Kasmanoff, Noah
Lee, Matthew D.
Razavian, Narges
Lui, Yvonne W.
Deep multi-task learning and random forest for series classification by pulse sequence type and orientation
title Deep multi-task learning and random forest for series classification by pulse sequence type and orientation
title_full Deep multi-task learning and random forest for series classification by pulse sequence type and orientation
title_fullStr Deep multi-task learning and random forest for series classification by pulse sequence type and orientation
title_full_unstemmed Deep multi-task learning and random forest for series classification by pulse sequence type and orientation
title_short Deep multi-task learning and random forest for series classification by pulse sequence type and orientation
title_sort deep multi-task learning and random forest for series classification by pulse sequence type and orientation
topic Diagnostic Neuroradiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9361920/
https://www.ncbi.nlm.nih.gov/pubmed/35906437
http://dx.doi.org/10.1007/s00234-022-03023-7
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