Automated volumetric analysis of the inner ear fluid space from hydrops magnetic resonance imaging using 3D neural networks

Abstract Due to the development of magnetic resonance (MR) imaging processing technology, image-based identification of endolymphatic hydrops (EH) has played an important role in understanding inner ear illnesses, such as Meniere’s disease or fluctuating sensorineural hearing loss. We segmented the...

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Published in:Scientific Reports
Main Authors: Tae-Woong Yoo, Cha Dong Yeo, Minwoo Kim, Il-Seok Oh, Eun Jung Lee
Format: Article
Language:English
Published: Nature Portfolio 2024-10-01
Online Access:https://doi.org/10.1038/s41598-024-76035-3
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author Tae-Woong Yoo
Cha Dong Yeo
Minwoo Kim
Il-Seok Oh
Eun Jung Lee
author_facet Tae-Woong Yoo
Cha Dong Yeo
Minwoo Kim
Il-Seok Oh
Eun Jung Lee
author_sort Tae-Woong Yoo
collection DOAJ
container_title Scientific Reports
description Abstract Due to the development of magnetic resonance (MR) imaging processing technology, image-based identification of endolymphatic hydrops (EH) has played an important role in understanding inner ear illnesses, such as Meniere’s disease or fluctuating sensorineural hearing loss. We segmented the inner ear, consisting of the cochlea, vestibule, and semicircular canals, using a 3D-based deep neural network model for accurate and automated EH volume ratio calculations. We built a dataset of MR cisternography (MRC) and HYDROPS-Mi2 stacks labeled with the segmentation of the perilymph fluid space and endolymph fluid space of the inner ear to devise a 3D segmentation deep neural network model. End-to-end learning was used to segment the perilymph fluid and the endolymph fluid spaces simultaneously using aligned pair data of the MRC and HYDROPS-Mi2 stacks. Consequently, the segmentation performance of the total fluid space and endolymph fluid space had Dice similarity coefficients of 0.9574 and 0.9186, respectively. In addition, the EH volume ratio calculated by experienced otologists and the EH volume ratio value predicted by the proposed deep learning model showed high agreement according to the interclass correlation coefficient (ICC) and Bland–Altman plot analysis.
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spelling doaj-art-4a7bc159bb074e35bcf0476f45f622c92025-08-19T23:12:08ZengNature PortfolioScientific Reports2045-23222024-10-011411910.1038/s41598-024-76035-3Automated volumetric analysis of the inner ear fluid space from hydrops magnetic resonance imaging using 3D neural networksTae-Woong Yoo0Cha Dong Yeo1Minwoo Kim2Il-Seok Oh3Eun Jung Lee4Division of Computer Science and Artificial Intelligence, Jeonbuk National UniversityDepartment of Otorhinolaryngology-Head and Neck Surgery, Jeonbuk National University College of MedicineResearch Institute of Clinical Medicine of Jeonbuk National University–Biomedical Research Institute, Jeonbuk National University HospitalDivision of Computer Science and Artificial Intelligence, Jeonbuk National UniversityDepartment of Otorhinolaryngology-Head and Neck Surgery, Jeonbuk National University College of MedicineAbstract Due to the development of magnetic resonance (MR) imaging processing technology, image-based identification of endolymphatic hydrops (EH) has played an important role in understanding inner ear illnesses, such as Meniere’s disease or fluctuating sensorineural hearing loss. We segmented the inner ear, consisting of the cochlea, vestibule, and semicircular canals, using a 3D-based deep neural network model for accurate and automated EH volume ratio calculations. We built a dataset of MR cisternography (MRC) and HYDROPS-Mi2 stacks labeled with the segmentation of the perilymph fluid space and endolymph fluid space of the inner ear to devise a 3D segmentation deep neural network model. End-to-end learning was used to segment the perilymph fluid and the endolymph fluid spaces simultaneously using aligned pair data of the MRC and HYDROPS-Mi2 stacks. Consequently, the segmentation performance of the total fluid space and endolymph fluid space had Dice similarity coefficients of 0.9574 and 0.9186, respectively. In addition, the EH volume ratio calculated by experienced otologists and the EH volume ratio value predicted by the proposed deep learning model showed high agreement according to the interclass correlation coefficient (ICC) and Bland–Altman plot analysis.https://doi.org/10.1038/s41598-024-76035-3
spellingShingle Tae-Woong Yoo
Cha Dong Yeo
Minwoo Kim
Il-Seok Oh
Eun Jung Lee
Automated volumetric analysis of the inner ear fluid space from hydrops magnetic resonance imaging using 3D neural networks
title Automated volumetric analysis of the inner ear fluid space from hydrops magnetic resonance imaging using 3D neural networks
title_full Automated volumetric analysis of the inner ear fluid space from hydrops magnetic resonance imaging using 3D neural networks
title_fullStr Automated volumetric analysis of the inner ear fluid space from hydrops magnetic resonance imaging using 3D neural networks
title_full_unstemmed Automated volumetric analysis of the inner ear fluid space from hydrops magnetic resonance imaging using 3D neural networks
title_short Automated volumetric analysis of the inner ear fluid space from hydrops magnetic resonance imaging using 3D neural networks
title_sort automated volumetric analysis of the inner ear fluid space from hydrops magnetic resonance imaging using 3d neural networks
url https://doi.org/10.1038/s41598-024-76035-3
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