Cargando…

A GAN-based deep enhancer for quality enhancement of retinal images photographed by a handheld fundus camera

OBJECTIVE: Due to limited imaging conditions, the quality of fundus images is often unsatisfactory, especially for images photographed by handheld fundus cameras. Here, we have developed an automated method based on combining two mirror-symmetric generative adversarial networks (GANs) for image enha...

Descripción completa

Detalles Bibliográficos
Autores principales: Fu, Junxia, Cao, Lvchen, Wei, Shihui, Xu, Ming, Song, Yali, Li, Huiqi, You, Yuxia
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10577846/
https://www.ncbi.nlm.nih.gov/pubmed/37846289
http://dx.doi.org/10.1016/j.aopr.2022.100077
_version_ 1785121396242776064
author Fu, Junxia
Cao, Lvchen
Wei, Shihui
Xu, Ming
Song, Yali
Li, Huiqi
You, Yuxia
author_facet Fu, Junxia
Cao, Lvchen
Wei, Shihui
Xu, Ming
Song, Yali
Li, Huiqi
You, Yuxia
author_sort Fu, Junxia
collection PubMed
description OBJECTIVE: Due to limited imaging conditions, the quality of fundus images is often unsatisfactory, especially for images photographed by handheld fundus cameras. Here, we have developed an automated method based on combining two mirror-symmetric generative adversarial networks (GANs) for image enhancement. METHODS: A total of 1047 retinal images were included. The raw images were enhanced by a GAN-based deep enhancer and another methods based on luminosity and contrast adjustment. All raw images and enhanced images were anonymously assessed and classified into 6 levels of quality classification by three experienced ophthalmologists. The quality classification and quality change of images were compared. In addition, image-detailed reading results for the number of dubiously pathological fundi were also compared. RESULTS: After GAN enhancement, 42.9% of images increased their quality, 37.5% remained stable, and 19.6% decreased. After excluding the images at the highest level (level 0) before enhancement, a large number (75.6%) of images showed an increase in quality classification, and only a minority (9.3%) showed a decrease. The GAN-enhanced method was superior for quality improvement over a luminosity and contrast adjustment method (P<0.001). In terms of image reading results, the consistency rate fluctuated from 86.6% to 95.6%, and for the specific disease subtypes, both discrepancy number and discrepancy rate were less than 15 and 15%, for two ophthalmologists. CONCLUSIONS: Learning the style of high-quality retinal images based on the proposed deep enhancer may be an effective way to improve the quality of retinal images photographed by handheld fundus cameras.
format Online
Article
Text
id pubmed-10577846
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-105778462023-10-16 A GAN-based deep enhancer for quality enhancement of retinal images photographed by a handheld fundus camera Fu, Junxia Cao, Lvchen Wei, Shihui Xu, Ming Song, Yali Li, Huiqi You, Yuxia Adv Ophthalmol Pract Res Full Length Article OBJECTIVE: Due to limited imaging conditions, the quality of fundus images is often unsatisfactory, especially for images photographed by handheld fundus cameras. Here, we have developed an automated method based on combining two mirror-symmetric generative adversarial networks (GANs) for image enhancement. METHODS: A total of 1047 retinal images were included. The raw images were enhanced by a GAN-based deep enhancer and another methods based on luminosity and contrast adjustment. All raw images and enhanced images were anonymously assessed and classified into 6 levels of quality classification by three experienced ophthalmologists. The quality classification and quality change of images were compared. In addition, image-detailed reading results for the number of dubiously pathological fundi were also compared. RESULTS: After GAN enhancement, 42.9% of images increased their quality, 37.5% remained stable, and 19.6% decreased. After excluding the images at the highest level (level 0) before enhancement, a large number (75.6%) of images showed an increase in quality classification, and only a minority (9.3%) showed a decrease. The GAN-enhanced method was superior for quality improvement over a luminosity and contrast adjustment method (P<0.001). In terms of image reading results, the consistency rate fluctuated from 86.6% to 95.6%, and for the specific disease subtypes, both discrepancy number and discrepancy rate were less than 15 and 15%, for two ophthalmologists. CONCLUSIONS: Learning the style of high-quality retinal images based on the proposed deep enhancer may be an effective way to improve the quality of retinal images photographed by handheld fundus cameras. Elsevier 2022-08-19 /pmc/articles/PMC10577846/ /pubmed/37846289 http://dx.doi.org/10.1016/j.aopr.2022.100077 Text en © 2022 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Full Length Article
Fu, Junxia
Cao, Lvchen
Wei, Shihui
Xu, Ming
Song, Yali
Li, Huiqi
You, Yuxia
A GAN-based deep enhancer for quality enhancement of retinal images photographed by a handheld fundus camera
title A GAN-based deep enhancer for quality enhancement of retinal images photographed by a handheld fundus camera
title_full A GAN-based deep enhancer for quality enhancement of retinal images photographed by a handheld fundus camera
title_fullStr A GAN-based deep enhancer for quality enhancement of retinal images photographed by a handheld fundus camera
title_full_unstemmed A GAN-based deep enhancer for quality enhancement of retinal images photographed by a handheld fundus camera
title_short A GAN-based deep enhancer for quality enhancement of retinal images photographed by a handheld fundus camera
title_sort gan-based deep enhancer for quality enhancement of retinal images photographed by a handheld fundus camera
topic Full Length Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10577846/
https://www.ncbi.nlm.nih.gov/pubmed/37846289
http://dx.doi.org/10.1016/j.aopr.2022.100077
work_keys_str_mv AT fujunxia aganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT caolvchen aganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT weishihui aganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT xuming aganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT songyali aganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT lihuiqi aganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT youyuxia aganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT fujunxia ganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT caolvchen ganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT weishihui ganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT xuming ganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT songyali ganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT lihuiqi ganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera
AT youyuxia ganbaseddeepenhancerforqualityenhancementofretinalimagesphotographedbyahandheldfunduscamera