Cargando…

Deep learning-based automated diagnosis of fungal keratitis with in vivo confocal microscopy images

BACKGROUND: The aim of this study was to develop an intelligent system based on a deep learning algorithm for automatically diagnosing fungal keratitis (FK) in in vivo confocal microscopy (IVCM) images. METHODS: A total of 2,088 IVCM images were included in the training dataset. The positive group c...

Descripción completa

Detalles Bibliográficos
Autores principales: Lv, Jian, Zhang, Kai, Chen, Qing, Chen, Qi, Huang, Wei, Cui, Ling, Li, Min, Li, Jianyin, Chen, Lifei, Shen, Chaolan, Yang, Zhao, Bei, Yixuan, Li, Lanjian, Wu, Xiaohang, Zeng, Siming, Xu, Fan, Lin, Haotian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AME Publishing Company 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7327373/
https://www.ncbi.nlm.nih.gov/pubmed/32617326
http://dx.doi.org/10.21037/atm.2020.03.134
_version_ 1783552529718575104
author Lv, Jian
Zhang, Kai
Chen, Qing
Chen, Qi
Huang, Wei
Cui, Ling
Li, Min
Li, Jianyin
Chen, Lifei
Shen, Chaolan
Yang, Zhao
Bei, Yixuan
Li, Lanjian
Wu, Xiaohang
Zeng, Siming
Xu, Fan
Lin, Haotian
author_facet Lv, Jian
Zhang, Kai
Chen, Qing
Chen, Qi
Huang, Wei
Cui, Ling
Li, Min
Li, Jianyin
Chen, Lifei
Shen, Chaolan
Yang, Zhao
Bei, Yixuan
Li, Lanjian
Wu, Xiaohang
Zeng, Siming
Xu, Fan
Lin, Haotian
author_sort Lv, Jian
collection PubMed
description BACKGROUND: The aim of this study was to develop an intelligent system based on a deep learning algorithm for automatically diagnosing fungal keratitis (FK) in in vivo confocal microscopy (IVCM) images. METHODS: A total of 2,088 IVCM images were included in the training dataset. The positive group consisted of 688 images with fungal hyphae, and the negative group included 1,400 images without fungal hyphae. A total of 535 images in the testing dataset were not included in the training dataset. Deep Residual Learning for Image Recognition (ResNet) was used to build the intelligent system for diagnosing FK automatically. The system was verified by external validation in the testing dataset using the area under the receiver operating characteristic curve (AUC), accuracy, specificity and sensitivity. RESULTS: In the testing dataset, 515 images were diagnosed correctly and 20 were misdiagnosed (including 6 with fungal hyphae and 14 without). The system achieved an AUC of 0.9875 with an accuracy of 0.9626 in detecting fungal hyphae. The sensitivity of the system was 0.9186, with a specificity of 0.9834. When 349 diabetic patients were included in the training dataset, 501 images were diagnosed correctly and thirty-four were misdiagnosed (including 4 with fungal hyphae and 30 without). The AUC of the system was 0.9769. The accuracy, specificity and sensitivity were 0.9364, 0.9889 and 0.8256, respectively. CONCLUSIONS: The intelligent system based on a deep learning algorithm exhibited satisfactory diagnostic performance and effectively classified FK in various IVCM images. The context of this deep learning automated diagnostic system can be extended to other types of keratitis.
format Online
Article
Text
id pubmed-7327373
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher AME Publishing Company
record_format MEDLINE/PubMed
spelling pubmed-73273732020-07-01 Deep learning-based automated diagnosis of fungal keratitis with in vivo confocal microscopy images Lv, Jian Zhang, Kai Chen, Qing Chen, Qi Huang, Wei Cui, Ling Li, Min Li, Jianyin Chen, Lifei Shen, Chaolan Yang, Zhao Bei, Yixuan Li, Lanjian Wu, Xiaohang Zeng, Siming Xu, Fan Lin, Haotian Ann Transl Med Original Article on Medical Artificial Intelligent Research BACKGROUND: The aim of this study was to develop an intelligent system based on a deep learning algorithm for automatically diagnosing fungal keratitis (FK) in in vivo confocal microscopy (IVCM) images. METHODS: A total of 2,088 IVCM images were included in the training dataset. The positive group consisted of 688 images with fungal hyphae, and the negative group included 1,400 images without fungal hyphae. A total of 535 images in the testing dataset were not included in the training dataset. Deep Residual Learning for Image Recognition (ResNet) was used to build the intelligent system for diagnosing FK automatically. The system was verified by external validation in the testing dataset using the area under the receiver operating characteristic curve (AUC), accuracy, specificity and sensitivity. RESULTS: In the testing dataset, 515 images were diagnosed correctly and 20 were misdiagnosed (including 6 with fungal hyphae and 14 without). The system achieved an AUC of 0.9875 with an accuracy of 0.9626 in detecting fungal hyphae. The sensitivity of the system was 0.9186, with a specificity of 0.9834. When 349 diabetic patients were included in the training dataset, 501 images were diagnosed correctly and thirty-four were misdiagnosed (including 4 with fungal hyphae and 30 without). The AUC of the system was 0.9769. The accuracy, specificity and sensitivity were 0.9364, 0.9889 and 0.8256, respectively. CONCLUSIONS: The intelligent system based on a deep learning algorithm exhibited satisfactory diagnostic performance and effectively classified FK in various IVCM images. The context of this deep learning automated diagnostic system can be extended to other types of keratitis. AME Publishing Company 2020-06 /pmc/articles/PMC7327373/ /pubmed/32617326 http://dx.doi.org/10.21037/atm.2020.03.134 Text en 2020 Annals of Translational Medicine. All rights reserved. https://creativecommons.org/licenses/by-nc-nd/4.0/Open Access Statement: This is an Open Access article distributed in accordance with the Creative Commons Attribution-NonCommercial-NoDerivs 4.0 International License (CC BY-NC-ND 4.0), which permits the non-commercial replication and distribution of the article with the strict proviso that no changes or edits are made and the original work is properly cited (including links to both the formal publication through the relevant DOI and the license). See: https://creativecommons.org/licenses/by-nc-nd/4.0 (https://creativecommons.org/licenses/by-nc-nd/4.0/) .
spellingShingle Original Article on Medical Artificial Intelligent Research
Lv, Jian
Zhang, Kai
Chen, Qing
Chen, Qi
Huang, Wei
Cui, Ling
Li, Min
Li, Jianyin
Chen, Lifei
Shen, Chaolan
Yang, Zhao
Bei, Yixuan
Li, Lanjian
Wu, Xiaohang
Zeng, Siming
Xu, Fan
Lin, Haotian
Deep learning-based automated diagnosis of fungal keratitis with in vivo confocal microscopy images
title Deep learning-based automated diagnosis of fungal keratitis with in vivo confocal microscopy images
title_full Deep learning-based automated diagnosis of fungal keratitis with in vivo confocal microscopy images
title_fullStr Deep learning-based automated diagnosis of fungal keratitis with in vivo confocal microscopy images
title_full_unstemmed Deep learning-based automated diagnosis of fungal keratitis with in vivo confocal microscopy images
title_short Deep learning-based automated diagnosis of fungal keratitis with in vivo confocal microscopy images
title_sort deep learning-based automated diagnosis of fungal keratitis with in vivo confocal microscopy images
topic Original Article on Medical Artificial Intelligent Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7327373/
https://www.ncbi.nlm.nih.gov/pubmed/32617326
http://dx.doi.org/10.21037/atm.2020.03.134
work_keys_str_mv AT lvjian deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT zhangkai deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT chenqing deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT chenqi deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT huangwei deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT cuiling deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT limin deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT lijianyin deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT chenlifei deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT shenchaolan deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT yangzhao deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT beiyixuan deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT lilanjian deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT wuxiaohang deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT zengsiming deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT xufan deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages
AT linhaotian deeplearningbasedautomateddiagnosisoffungalkeratitiswithinvivoconfocalmicroscopyimages