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Reliable detection of eczema areas for fully automated assessment of eczema severity from digital camera images

Reliable detection of eczema areas for fully automated assessment of eczema severity from digital camera images
Reliable detection of eczema areas for fully automated assessment of eczema severity from digital camera images

Assessing the severity of eczema in clinical research requires face-to-face skin examination by trained staff. Such approaches are resource-intensive for participants and staff, challenging during pandemics, and prone to inter- and intra-observer variation. Computer vision algorithms have been proposed to automate the assessment of eczema severity using digital camera images. However, they often require human intervention to detect eczema lesions and cannot automatically assess eczema severity from real-world images in an end-to-end pipeline. We developed a model to detect eczema lesions from images using data augmentation and pixel-level segmentation of eczema lesions on 1,345 images provided by dermatologists. We evaluated the quality of the obtained segmentation compared with that of the clinicians, the robustness to varying imaging conditions encountered in real-life images, such as lighting, focus, and blur, and the performance of downstream severity prediction when using the detected eczema lesions. The quality and robustness of eczema lesion detection increased by approximately 25% and 40%, respectively, compared with that of our previous eczema detection model. The performance of the downstream severity prediction remained unchanged. Use of skin segmentation as an alternative to eczema segmentation that requires specialist labeling showed the performance on par with when eczema segmentation is used.

2667-0267
Attar, Rahman
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Hurault, Guillem
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Wang, Zihao
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Mokhtari, Ricardo
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Pan, Kevin
4ce2c81a-b96d-4585-a627-688fac1c588a
Olabi, Bayanne
e87e1112-ba5a-46ce-b822-ad60a254fa74
Earp, Eleanor
0a933342-0127-4e58-9dcc-3e5b5edabdc6
Steele, Lloyd
0b97325d-d9e5-4de8-b31b-0e598c45ccb3
Williams, Hywel C.
41a47f08-d65d-4c83-ba87-139a31125483
Tanaka, Reiko J.
f8415912-067d-4c92-b916-e3c1cb6ab3f9
Attar, Rahman
f5efd538-042a-4647-9d46-1370d3049b72
Hurault, Guillem
0b3fa989-49bc-49e8-b730-64a628dda4f7
Wang, Zihao
f05f74e3-c8ad-4821-befc-e2a5093f057e
Mokhtari, Ricardo
e66fd454-5bbb-4556-b306-f27bf3a3993f
Pan, Kevin
4ce2c81a-b96d-4585-a627-688fac1c588a
Olabi, Bayanne
e87e1112-ba5a-46ce-b822-ad60a254fa74
Earp, Eleanor
0a933342-0127-4e58-9dcc-3e5b5edabdc6
Steele, Lloyd
0b97325d-d9e5-4de8-b31b-0e598c45ccb3
Williams, Hywel C.
41a47f08-d65d-4c83-ba87-139a31125483
Tanaka, Reiko J.
f8415912-067d-4c92-b916-e3c1cb6ab3f9

Attar, Rahman, Hurault, Guillem, Wang, Zihao, Mokhtari, Ricardo, Pan, Kevin, Olabi, Bayanne, Earp, Eleanor, Steele, Lloyd, Williams, Hywel C. and Tanaka, Reiko J. (2023) Reliable detection of eczema areas for fully automated assessment of eczema severity from digital camera images. JID Innovations, 3 (5), [100213]. (doi:10.1016/j.xjidi.2023.100213).

Record type: Article

Abstract

Assessing the severity of eczema in clinical research requires face-to-face skin examination by trained staff. Such approaches are resource-intensive for participants and staff, challenging during pandemics, and prone to inter- and intra-observer variation. Computer vision algorithms have been proposed to automate the assessment of eczema severity using digital camera images. However, they often require human intervention to detect eczema lesions and cannot automatically assess eczema severity from real-world images in an end-to-end pipeline. We developed a model to detect eczema lesions from images using data augmentation and pixel-level segmentation of eczema lesions on 1,345 images provided by dermatologists. We evaluated the quality of the obtained segmentation compared with that of the clinicians, the robustness to varying imaging conditions encountered in real-life images, such as lighting, focus, and blur, and the performance of downstream severity prediction when using the detected eczema lesions. The quality and robustness of eczema lesion detection increased by approximately 25% and 40%, respectively, compared with that of our previous eczema detection model. The performance of the downstream severity prediction remained unchanged. Use of skin segmentation as an alternative to eczema segmentation that requires specialist labeling showed the performance on par with when eczema segmentation is used.

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Accepted/In Press date: 22 May 2023
e-pub ahead of print date: 18 July 2023
Published date: 8 September 2023

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Local EPrints ID: 507637
URI: http://eprints.soton.ac.uk/id/eprint/507637
ISSN: 2667-0267
PURE UUID: 831b1bee-63c1-40a0-8e03-cfb9666dc72b

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Date deposited: 16 Dec 2025 17:37
Last modified: 16 Dec 2025 17:37

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Contributors

Author: Rahman Attar
Author: Guillem Hurault
Author: Zihao Wang
Author: Ricardo Mokhtari
Author: Kevin Pan
Author: Bayanne Olabi
Author: Eleanor Earp
Author: Lloyd Steele
Author: Hywel C. Williams
Author: Reiko J. Tanaka

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