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A Deep Learning Algorithm to Identify Anatomical Landmarks on Computed Tomography of the Temporal Bone

BACKGROUND: Petrous temporal bone cone-beam computed tomography scans help aid diagnosis and accurate identification of key operative landmarks in temporal bone and mastoid surgery. Our primary objective was to determine the accuracy of using a deep learning convolutional neural network algorithm to...

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Autores principales: Hasan, Zubair, Key, Seraphina, Lee, Michael, Chen, Fiona, Aweidah, Layal, Esmaili, Aaron, Sacks, Raymond, Singh, Narinder
Formato: Online Artículo Texto
Lenguaje:English
Publicado: European Academy of Otology and Neurotology and the Politzer Society 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10645193/
https://www.ncbi.nlm.nih.gov/pubmed/37789621
http://dx.doi.org/10.5152/iao.2023.231073
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author Hasan, Zubair
Key, Seraphina
Lee, Michael
Chen, Fiona
Aweidah, Layal
Esmaili, Aaron
Sacks, Raymond
Singh, Narinder
author_facet Hasan, Zubair
Key, Seraphina
Lee, Michael
Chen, Fiona
Aweidah, Layal
Esmaili, Aaron
Sacks, Raymond
Singh, Narinder
author_sort Hasan, Zubair
collection PubMed
description BACKGROUND: Petrous temporal bone cone-beam computed tomography scans help aid diagnosis and accurate identification of key operative landmarks in temporal bone and mastoid surgery. Our primary objective was to determine the accuracy of using a deep learning convolutional neural network algorithm to augment identification of structures on petrous temporal bone cone-beam computed tomography. Our secondary objective was to compare the accuracy of convolutional neural network structure identification when trained by a senior versus junior clinician. METHODS: A total of 129 petrous temporal bone cone-beam computed tomography scans were obtained from an Australian public tertiary hospital. Key intraoperative landmarks were labeled in 68 scans using bounding boxes on axial and coronal slices at the level of the malleoincudal joint by an otolaryngology registrar and board-certified otolaryngologist. Automated structure identification was performed on axial and coronal slices of the remaining 61 scans using a convolutional neural network (Microsoft Custom Vision) trained using the labeled dataset. Convolutional neural network structure identification accuracy was manually verified by an otolaryngologist, and accuracy when trained by the registrar and otolaryngologist labeled datasets respectively was compared. RESULTS: The convolutional neural network was able to perform automated structure identification in petrous temporal bone cone-beam computed tomography scans with a high degree of accuracy in both axial (0.958) and coronal (0.924) slices (P < .001). Convolutional neural network accuracy was proportionate to the seniority of the training clinician in structures with features more difficult to distinguish on single slices such as the cochlea, vestibule, and carotid canal. CONCLUSION: Convolutional neural networks can perform automated structure identification in petrous temporal bone cone-beam computed tomography scans with a high degree of accuracy, with the performance being proportionate to the seniority of the training clinician. Training of the convolutional neural network by the most senior clinician is desirable to maximize the accuracy of the results.
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spelling pubmed-106451932023-11-15 A Deep Learning Algorithm to Identify Anatomical Landmarks on Computed Tomography of the Temporal Bone Hasan, Zubair Key, Seraphina Lee, Michael Chen, Fiona Aweidah, Layal Esmaili, Aaron Sacks, Raymond Singh, Narinder J Int Adv Otol Original Article BACKGROUND: Petrous temporal bone cone-beam computed tomography scans help aid diagnosis and accurate identification of key operative landmarks in temporal bone and mastoid surgery. Our primary objective was to determine the accuracy of using a deep learning convolutional neural network algorithm to augment identification of structures on petrous temporal bone cone-beam computed tomography. Our secondary objective was to compare the accuracy of convolutional neural network structure identification when trained by a senior versus junior clinician. METHODS: A total of 129 petrous temporal bone cone-beam computed tomography scans were obtained from an Australian public tertiary hospital. Key intraoperative landmarks were labeled in 68 scans using bounding boxes on axial and coronal slices at the level of the malleoincudal joint by an otolaryngology registrar and board-certified otolaryngologist. Automated structure identification was performed on axial and coronal slices of the remaining 61 scans using a convolutional neural network (Microsoft Custom Vision) trained using the labeled dataset. Convolutional neural network structure identification accuracy was manually verified by an otolaryngologist, and accuracy when trained by the registrar and otolaryngologist labeled datasets respectively was compared. RESULTS: The convolutional neural network was able to perform automated structure identification in petrous temporal bone cone-beam computed tomography scans with a high degree of accuracy in both axial (0.958) and coronal (0.924) slices (P < .001). Convolutional neural network accuracy was proportionate to the seniority of the training clinician in structures with features more difficult to distinguish on single slices such as the cochlea, vestibule, and carotid canal. CONCLUSION: Convolutional neural networks can perform automated structure identification in petrous temporal bone cone-beam computed tomography scans with a high degree of accuracy, with the performance being proportionate to the seniority of the training clinician. Training of the convolutional neural network by the most senior clinician is desirable to maximize the accuracy of the results. European Academy of Otology and Neurotology and the Politzer Society 2023-09-01 /pmc/articles/PMC10645193/ /pubmed/37789621 http://dx.doi.org/10.5152/iao.2023.231073 Text en 2023 authors https://creativecommons.org/licenses/by-nc/4.0/ Content of this journal is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License. (https://creativecommons.org/licenses/by-nc/4.0/)
spellingShingle Original Article
Hasan, Zubair
Key, Seraphina
Lee, Michael
Chen, Fiona
Aweidah, Layal
Esmaili, Aaron
Sacks, Raymond
Singh, Narinder
A Deep Learning Algorithm to Identify Anatomical Landmarks on Computed Tomography of the Temporal Bone
title A Deep Learning Algorithm to Identify Anatomical Landmarks on Computed Tomography of the Temporal Bone
title_full A Deep Learning Algorithm to Identify Anatomical Landmarks on Computed Tomography of the Temporal Bone
title_fullStr A Deep Learning Algorithm to Identify Anatomical Landmarks on Computed Tomography of the Temporal Bone
title_full_unstemmed A Deep Learning Algorithm to Identify Anatomical Landmarks on Computed Tomography of the Temporal Bone
title_short A Deep Learning Algorithm to Identify Anatomical Landmarks on Computed Tomography of the Temporal Bone
title_sort deep learning algorithm to identify anatomical landmarks on computed tomography of the temporal bone
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10645193/
https://www.ncbi.nlm.nih.gov/pubmed/37789621
http://dx.doi.org/10.5152/iao.2023.231073
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