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Automated detection and quantification of brain metastases on clinical MRI data using artificial neural networks

BACKGROUND: Reliable detection and precise volumetric quantification of brain metastases (BM) on MRI are essential for guiding treatment decisions. Here we evaluate the potential of artificial neural networks (ANN) for automated detection and quantification of BM. METHODS: A consecutive series of 30...

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Autores principales: Pflüger, Irada, Wald, Tassilo, Isensee, Fabian, Schell, Marianne, Meredig, Hagen, Schlamp, Kai, Bernhardt, Denise, Brugnara, Gianluca, Heußel, Claus Peter, Debus, Juergen, Wick, Wolfgang, Bendszus, Martin, Maier-Hein, Klaus H, Vollmuth, Philipp
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9466273/
https://www.ncbi.nlm.nih.gov/pubmed/36105388
http://dx.doi.org/10.1093/noajnl/vdac138
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author Pflüger, Irada
Wald, Tassilo
Isensee, Fabian
Schell, Marianne
Meredig, Hagen
Schlamp, Kai
Bernhardt, Denise
Brugnara, Gianluca
Heußel, Claus Peter
Debus, Juergen
Wick, Wolfgang
Bendszus, Martin
Maier-Hein, Klaus H
Vollmuth, Philipp
author_facet Pflüger, Irada
Wald, Tassilo
Isensee, Fabian
Schell, Marianne
Meredig, Hagen
Schlamp, Kai
Bernhardt, Denise
Brugnara, Gianluca
Heußel, Claus Peter
Debus, Juergen
Wick, Wolfgang
Bendszus, Martin
Maier-Hein, Klaus H
Vollmuth, Philipp
author_sort Pflüger, Irada
collection PubMed
description BACKGROUND: Reliable detection and precise volumetric quantification of brain metastases (BM) on MRI are essential for guiding treatment decisions. Here we evaluate the potential of artificial neural networks (ANN) for automated detection and quantification of BM. METHODS: A consecutive series of 308 patients with BM was used for developing an ANN (with a 4:1 split for training/testing) for automated volumetric assessment of contrast-enhancing tumors (CE) and non-enhancing FLAIR signal abnormality including edema (NEE). An independent consecutive series of 30 patients was used for external testing. Performance was assessed case-wise for CE and NEE and lesion-wise for CE using the case-wise/lesion-wise DICE-coefficient (C/L-DICE), positive predictive value (L-PPV) and sensitivity (C/L-Sensitivity). RESULTS: The performance of detecting CE lesions on the validation dataset was not significantly affected when evaluating different volumetric thresholds (0.001–0.2 cm(3); P = .2028). The median L-DICE and median C-DICE for CE lesions were 0.78 (IQR = 0.6–0.91) and 0.90 (IQR = 0.85–0.94) in the institutional as well as 0.79 (IQR = 0.67–0.82) and 0.84 (IQR = 0.76–0.89) in the external test dataset. The corresponding median L-Sensitivity and median L-PPV were 0.81 (IQR = 0.63–0.92) and 0.79 (IQR = 0.63–0.93) in the institutional test dataset, as compared to 0.85 (IQR = 0.76–0.94) and 0.76 (IQR = 0.68–0.88) in the external test dataset. The median C-DICE for NEE was 0.96 (IQR = 0.92–0.97) in the institutional test dataset as compared to 0.85 (IQR = 0.72–0.91) in the external test dataset. CONCLUSION: The developed ANN-based algorithm (publicly available at www.github.com/NeuroAI-HD/HD-BM) allows reliable detection and precise volumetric quantification of CE and NEE compartments in patients with BM.
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spelling pubmed-94662732022-09-13 Automated detection and quantification of brain metastases on clinical MRI data using artificial neural networks Pflüger, Irada Wald, Tassilo Isensee, Fabian Schell, Marianne Meredig, Hagen Schlamp, Kai Bernhardt, Denise Brugnara, Gianluca Heußel, Claus Peter Debus, Juergen Wick, Wolfgang Bendszus, Martin Maier-Hein, Klaus H Vollmuth, Philipp Neurooncol Adv Clinical Investigations BACKGROUND: Reliable detection and precise volumetric quantification of brain metastases (BM) on MRI are essential for guiding treatment decisions. Here we evaluate the potential of artificial neural networks (ANN) for automated detection and quantification of BM. METHODS: A consecutive series of 308 patients with BM was used for developing an ANN (with a 4:1 split for training/testing) for automated volumetric assessment of contrast-enhancing tumors (CE) and non-enhancing FLAIR signal abnormality including edema (NEE). An independent consecutive series of 30 patients was used for external testing. Performance was assessed case-wise for CE and NEE and lesion-wise for CE using the case-wise/lesion-wise DICE-coefficient (C/L-DICE), positive predictive value (L-PPV) and sensitivity (C/L-Sensitivity). RESULTS: The performance of detecting CE lesions on the validation dataset was not significantly affected when evaluating different volumetric thresholds (0.001–0.2 cm(3); P = .2028). The median L-DICE and median C-DICE for CE lesions were 0.78 (IQR = 0.6–0.91) and 0.90 (IQR = 0.85–0.94) in the institutional as well as 0.79 (IQR = 0.67–0.82) and 0.84 (IQR = 0.76–0.89) in the external test dataset. The corresponding median L-Sensitivity and median L-PPV were 0.81 (IQR = 0.63–0.92) and 0.79 (IQR = 0.63–0.93) in the institutional test dataset, as compared to 0.85 (IQR = 0.76–0.94) and 0.76 (IQR = 0.68–0.88) in the external test dataset. The median C-DICE for NEE was 0.96 (IQR = 0.92–0.97) in the institutional test dataset as compared to 0.85 (IQR = 0.72–0.91) in the external test dataset. CONCLUSION: The developed ANN-based algorithm (publicly available at www.github.com/NeuroAI-HD/HD-BM) allows reliable detection and precise volumetric quantification of CE and NEE compartments in patients with BM. Oxford University Press 2022-08-23 /pmc/articles/PMC9466273/ /pubmed/36105388 http://dx.doi.org/10.1093/noajnl/vdac138 Text en © The Author(s) 2022. Published by Oxford University Press, the Society for Neuro-Oncology and the European Association of Neuro-Oncology. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Clinical Investigations
Pflüger, Irada
Wald, Tassilo
Isensee, Fabian
Schell, Marianne
Meredig, Hagen
Schlamp, Kai
Bernhardt, Denise
Brugnara, Gianluca
Heußel, Claus Peter
Debus, Juergen
Wick, Wolfgang
Bendszus, Martin
Maier-Hein, Klaus H
Vollmuth, Philipp
Automated detection and quantification of brain metastases on clinical MRI data using artificial neural networks
title Automated detection and quantification of brain metastases on clinical MRI data using artificial neural networks
title_full Automated detection and quantification of brain metastases on clinical MRI data using artificial neural networks
title_fullStr Automated detection and quantification of brain metastases on clinical MRI data using artificial neural networks
title_full_unstemmed Automated detection and quantification of brain metastases on clinical MRI data using artificial neural networks
title_short Automated detection and quantification of brain metastases on clinical MRI data using artificial neural networks
title_sort automated detection and quantification of brain metastases on clinical mri data using artificial neural networks
topic Clinical Investigations
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9466273/
https://www.ncbi.nlm.nih.gov/pubmed/36105388
http://dx.doi.org/10.1093/noajnl/vdac138
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