Cargando…

Detection of maxillary sinus fungal ball via 3-D CNN-based artificial intelligence: Fully automated system and clinical validation

BACKGROUND: This study aims to develop artificial intelligence (AI) system to automatically classify patients with maxillary sinus fungal ball (MFB), chronic rhinosinusitis (CRS), and healthy controls (HCs). METHODS: We collected 512 coronal image sets from ostiomeatal unit computed tomography (OMU...

Descripción completa

Detalles Bibliográficos
Autores principales: Kim, Kyung-Su, Kim, Byung Kil, Chung, Myung Jin, Cho, Hyun Bin, Cho, Beak Hwan, Jung, Yong Gi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8880900/
https://www.ncbi.nlm.nih.gov/pubmed/35213545
http://dx.doi.org/10.1371/journal.pone.0263125
_version_ 1784659345454137344
author Kim, Kyung-Su
Kim, Byung Kil
Chung, Myung Jin
Cho, Hyun Bin
Cho, Beak Hwan
Jung, Yong Gi
author_facet Kim, Kyung-Su
Kim, Byung Kil
Chung, Myung Jin
Cho, Hyun Bin
Cho, Beak Hwan
Jung, Yong Gi
author_sort Kim, Kyung-Su
collection PubMed
description BACKGROUND: This study aims to develop artificial intelligence (AI) system to automatically classify patients with maxillary sinus fungal ball (MFB), chronic rhinosinusitis (CRS), and healthy controls (HCs). METHODS: We collected 512 coronal image sets from ostiomeatal unit computed tomography (OMU CT) performed on subjects who visited a single tertiary hospital. These data included 254 MFB, 128 CRS, and 130 HC subjects and were used for training the proposed AI system. The AI system takes these 1024 sets of half CT images as input and classifies these as MFB, CRS, or HC. To optimize the classification performance, we adopted a 3-D convolutional neural network of ResNet 18. We also collected 64 coronal OMU CT image sets for external validation, including 26 MFB, 18 CRS, and 20 HCs from subjects from another referral hospital. Finally, the performance of the developed AI system was compared with that of the otolaryngology resident physicians. RESULTS: Classification performance was evaluated using internal 5-fold cross-validation (818 training and 206 internal validation data) and external validation (128 data). The area under the receiver operating characteristic over the internal 5-fold cross-validation and the external validation was 0.96 ±0.006 and 0.97 ±0.006, respectively. The accuracy of the internal 5-fold cross-validation and the external validation was 87.5 ±2.3% and 88.4 ±3.1%, respectively. As a result of performing a classification test on external validation data from six otolaryngology resident physicians, the accuracy was obtained as 84.6 ±11.3%. CONCLUSIONS: This AI system is the first study to classify MFB, CRS, and HC using deep neural networks to the best of our knowledge. The proposed system is fully automatic but performs similarly to or better than otolaryngology resident physicians. Therefore, we believe that in regions where otolaryngology specialists are scarce, the proposed AI will perform sufficiently effective diagnosis on behalf of doctors.
format Online
Article
Text
id pubmed-8880900
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-88809002022-02-26 Detection of maxillary sinus fungal ball via 3-D CNN-based artificial intelligence: Fully automated system and clinical validation Kim, Kyung-Su Kim, Byung Kil Chung, Myung Jin Cho, Hyun Bin Cho, Beak Hwan Jung, Yong Gi PLoS One Research Article BACKGROUND: This study aims to develop artificial intelligence (AI) system to automatically classify patients with maxillary sinus fungal ball (MFB), chronic rhinosinusitis (CRS), and healthy controls (HCs). METHODS: We collected 512 coronal image sets from ostiomeatal unit computed tomography (OMU CT) performed on subjects who visited a single tertiary hospital. These data included 254 MFB, 128 CRS, and 130 HC subjects and were used for training the proposed AI system. The AI system takes these 1024 sets of half CT images as input and classifies these as MFB, CRS, or HC. To optimize the classification performance, we adopted a 3-D convolutional neural network of ResNet 18. We also collected 64 coronal OMU CT image sets for external validation, including 26 MFB, 18 CRS, and 20 HCs from subjects from another referral hospital. Finally, the performance of the developed AI system was compared with that of the otolaryngology resident physicians. RESULTS: Classification performance was evaluated using internal 5-fold cross-validation (818 training and 206 internal validation data) and external validation (128 data). The area under the receiver operating characteristic over the internal 5-fold cross-validation and the external validation was 0.96 ±0.006 and 0.97 ±0.006, respectively. The accuracy of the internal 5-fold cross-validation and the external validation was 87.5 ±2.3% and 88.4 ±3.1%, respectively. As a result of performing a classification test on external validation data from six otolaryngology resident physicians, the accuracy was obtained as 84.6 ±11.3%. CONCLUSIONS: This AI system is the first study to classify MFB, CRS, and HC using deep neural networks to the best of our knowledge. The proposed system is fully automatic but performs similarly to or better than otolaryngology resident physicians. Therefore, we believe that in regions where otolaryngology specialists are scarce, the proposed AI will perform sufficiently effective diagnosis on behalf of doctors. Public Library of Science 2022-02-25 /pmc/articles/PMC8880900/ /pubmed/35213545 http://dx.doi.org/10.1371/journal.pone.0263125 Text en © 2022 Kim et al 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 use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Kim, Kyung-Su
Kim, Byung Kil
Chung, Myung Jin
Cho, Hyun Bin
Cho, Beak Hwan
Jung, Yong Gi
Detection of maxillary sinus fungal ball via 3-D CNN-based artificial intelligence: Fully automated system and clinical validation
title Detection of maxillary sinus fungal ball via 3-D CNN-based artificial intelligence: Fully automated system and clinical validation
title_full Detection of maxillary sinus fungal ball via 3-D CNN-based artificial intelligence: Fully automated system and clinical validation
title_fullStr Detection of maxillary sinus fungal ball via 3-D CNN-based artificial intelligence: Fully automated system and clinical validation
title_full_unstemmed Detection of maxillary sinus fungal ball via 3-D CNN-based artificial intelligence: Fully automated system and clinical validation
title_short Detection of maxillary sinus fungal ball via 3-D CNN-based artificial intelligence: Fully automated system and clinical validation
title_sort detection of maxillary sinus fungal ball via 3-d cnn-based artificial intelligence: fully automated system and clinical validation
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8880900/
https://www.ncbi.nlm.nih.gov/pubmed/35213545
http://dx.doi.org/10.1371/journal.pone.0263125
work_keys_str_mv AT kimkyungsu detectionofmaxillarysinusfungalballvia3dcnnbasedartificialintelligencefullyautomatedsystemandclinicalvalidation
AT kimbyungkil detectionofmaxillarysinusfungalballvia3dcnnbasedartificialintelligencefullyautomatedsystemandclinicalvalidation
AT chungmyungjin detectionofmaxillarysinusfungalballvia3dcnnbasedartificialintelligencefullyautomatedsystemandclinicalvalidation
AT chohyunbin detectionofmaxillarysinusfungalballvia3dcnnbasedartificialintelligencefullyautomatedsystemandclinicalvalidation
AT chobeakhwan detectionofmaxillarysinusfungalballvia3dcnnbasedartificialintelligencefullyautomatedsystemandclinicalvalidation
AT jungyonggi detectionofmaxillarysinusfungalballvia3dcnnbasedartificialintelligencefullyautomatedsystemandclinicalvalidation