Cargando…

Development and In-Silico and Ex-Vivo Validation of a Software for a Semi-Automated Segmentation of the Round Window Niche to Design a Patient Specific Implant to Treat Inner Ear Disorders

The aim of this study was to develop and validate a semi-automated segmentation approach that identifies the round window niche (RWN) and round window membrane (RWM) for use in the development of patient individualized round window niche implants (RNI) to treat inner ear disorders. Twenty cone beam...

Descripción completa

Detalles Bibliográficos
Autores principales: Matin-Mann, Farnaz, Gao, Ziwen, Wei, Chunjiang, Repp, Felix, Artukarslan, Eralp-Niyazi, John, Samuel, Alcacer Labrador, Dorian, Lenarz, Thomas, Scheper, Verena
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9965310/
https://www.ncbi.nlm.nih.gov/pubmed/36826970
http://dx.doi.org/10.3390/jimaging9020051
_version_ 1784896729048416256
author Matin-Mann, Farnaz
Gao, Ziwen
Wei, Chunjiang
Repp, Felix
Artukarslan, Eralp-Niyazi
John, Samuel
Alcacer Labrador, Dorian
Lenarz, Thomas
Scheper, Verena
author_facet Matin-Mann, Farnaz
Gao, Ziwen
Wei, Chunjiang
Repp, Felix
Artukarslan, Eralp-Niyazi
John, Samuel
Alcacer Labrador, Dorian
Lenarz, Thomas
Scheper, Verena
author_sort Matin-Mann, Farnaz
collection PubMed
description The aim of this study was to develop and validate a semi-automated segmentation approach that identifies the round window niche (RWN) and round window membrane (RWM) for use in the development of patient individualized round window niche implants (RNI) to treat inner ear disorders. Twenty cone beam computed tomography (CBCT) datasets of unilateral temporal bones of patients were included in the study. Defined anatomical landmarks such as the RWM were used to develop a customized 3D Slicer™ plugin for semi-automated segmentation of the RWN. Two otolaryngologists (User 1 and User 2) segmented the datasets manually and semi-automatically using the developed software. Both methods were compared in-silico regarding the resulting RWM area and RWN volume. Finally, the developed software was validated ex-vivo in N = 3 body donor implantation tests with additively manufactured RNI. The independently segmented temporal bones of the different Users showed a strong consistency in the volume of the RWN and the area of the RWM. The volume of the semi-automated RWN segmentations were 48 ± 11% smaller on average than the manual segmentations and the area of the RWM of the semi-automated segmentations was 21 ± 17% smaller on average than the manual segmentation. All additively manufactured implants, based on the semi-automated segmentation method could be implanted successfully in a pressure-tight fit into the RWN. The implants based on the manual segmentations failed to fit into the RWN and this suggests that the larger manual segmentations were over-segmentations. This study presents a semi-automated approach for segmenting the RWN and RWM in temporal bone CBCT scans that is efficient, fast, accurate, and not dependent on trained users. In addition, the manual segmentation, often positioned as the gold-standard, actually failed to pass the implantation validation.
format Online
Article
Text
id pubmed-9965310
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-99653102023-02-26 Development and In-Silico and Ex-Vivo Validation of a Software for a Semi-Automated Segmentation of the Round Window Niche to Design a Patient Specific Implant to Treat Inner Ear Disorders Matin-Mann, Farnaz Gao, Ziwen Wei, Chunjiang Repp, Felix Artukarslan, Eralp-Niyazi John, Samuel Alcacer Labrador, Dorian Lenarz, Thomas Scheper, Verena J Imaging Article The aim of this study was to develop and validate a semi-automated segmentation approach that identifies the round window niche (RWN) and round window membrane (RWM) for use in the development of patient individualized round window niche implants (RNI) to treat inner ear disorders. Twenty cone beam computed tomography (CBCT) datasets of unilateral temporal bones of patients were included in the study. Defined anatomical landmarks such as the RWM were used to develop a customized 3D Slicer™ plugin for semi-automated segmentation of the RWN. Two otolaryngologists (User 1 and User 2) segmented the datasets manually and semi-automatically using the developed software. Both methods were compared in-silico regarding the resulting RWM area and RWN volume. Finally, the developed software was validated ex-vivo in N = 3 body donor implantation tests with additively manufactured RNI. The independently segmented temporal bones of the different Users showed a strong consistency in the volume of the RWN and the area of the RWM. The volume of the semi-automated RWN segmentations were 48 ± 11% smaller on average than the manual segmentations and the area of the RWM of the semi-automated segmentations was 21 ± 17% smaller on average than the manual segmentation. All additively manufactured implants, based on the semi-automated segmentation method could be implanted successfully in a pressure-tight fit into the RWN. The implants based on the manual segmentations failed to fit into the RWN and this suggests that the larger manual segmentations were over-segmentations. This study presents a semi-automated approach for segmenting the RWN and RWM in temporal bone CBCT scans that is efficient, fast, accurate, and not dependent on trained users. In addition, the manual segmentation, often positioned as the gold-standard, actually failed to pass the implantation validation. MDPI 2023-02-20 /pmc/articles/PMC9965310/ /pubmed/36826970 http://dx.doi.org/10.3390/jimaging9020051 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Matin-Mann, Farnaz
Gao, Ziwen
Wei, Chunjiang
Repp, Felix
Artukarslan, Eralp-Niyazi
John, Samuel
Alcacer Labrador, Dorian
Lenarz, Thomas
Scheper, Verena
Development and In-Silico and Ex-Vivo Validation of a Software for a Semi-Automated Segmentation of the Round Window Niche to Design a Patient Specific Implant to Treat Inner Ear Disorders
title Development and In-Silico and Ex-Vivo Validation of a Software for a Semi-Automated Segmentation of the Round Window Niche to Design a Patient Specific Implant to Treat Inner Ear Disorders
title_full Development and In-Silico and Ex-Vivo Validation of a Software for a Semi-Automated Segmentation of the Round Window Niche to Design a Patient Specific Implant to Treat Inner Ear Disorders
title_fullStr Development and In-Silico and Ex-Vivo Validation of a Software for a Semi-Automated Segmentation of the Round Window Niche to Design a Patient Specific Implant to Treat Inner Ear Disorders
title_full_unstemmed Development and In-Silico and Ex-Vivo Validation of a Software for a Semi-Automated Segmentation of the Round Window Niche to Design a Patient Specific Implant to Treat Inner Ear Disorders
title_short Development and In-Silico and Ex-Vivo Validation of a Software for a Semi-Automated Segmentation of the Round Window Niche to Design a Patient Specific Implant to Treat Inner Ear Disorders
title_sort development and in-silico and ex-vivo validation of a software for a semi-automated segmentation of the round window niche to design a patient specific implant to treat inner ear disorders
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9965310/
https://www.ncbi.nlm.nih.gov/pubmed/36826970
http://dx.doi.org/10.3390/jimaging9020051
work_keys_str_mv AT matinmannfarnaz developmentandinsilicoandexvivovalidationofasoftwareforasemiautomatedsegmentationoftheroundwindownichetodesignapatientspecificimplanttotreatinnereardisorders
AT gaoziwen developmentandinsilicoandexvivovalidationofasoftwareforasemiautomatedsegmentationoftheroundwindownichetodesignapatientspecificimplanttotreatinnereardisorders
AT weichunjiang developmentandinsilicoandexvivovalidationofasoftwareforasemiautomatedsegmentationoftheroundwindownichetodesignapatientspecificimplanttotreatinnereardisorders
AT reppfelix developmentandinsilicoandexvivovalidationofasoftwareforasemiautomatedsegmentationoftheroundwindownichetodesignapatientspecificimplanttotreatinnereardisorders
AT artukarslaneralpniyazi developmentandinsilicoandexvivovalidationofasoftwareforasemiautomatedsegmentationoftheroundwindownichetodesignapatientspecificimplanttotreatinnereardisorders
AT johnsamuel developmentandinsilicoandexvivovalidationofasoftwareforasemiautomatedsegmentationoftheroundwindownichetodesignapatientspecificimplanttotreatinnereardisorders
AT alcacerlabradordorian developmentandinsilicoandexvivovalidationofasoftwareforasemiautomatedsegmentationoftheroundwindownichetodesignapatientspecificimplanttotreatinnereardisorders
AT lenarzthomas developmentandinsilicoandexvivovalidationofasoftwareforasemiautomatedsegmentationoftheroundwindownichetodesignapatientspecificimplanttotreatinnereardisorders
AT scheperverena developmentandinsilicoandexvivovalidationofasoftwareforasemiautomatedsegmentationoftheroundwindownichetodesignapatientspecificimplanttotreatinnereardisorders