Remote assessment of eczema severity via AI-powered skin image analytics: a systematic review
Remote assessment of eczema severity via AI-powered skin image analytics: a systematic review
Various studies have been published on the remote assessment of eczema severity from digital camera images. Successful deployment of an accurate and robust AI-powered tool for such purposes can aid the formulation of eczema treatment plans and assist in patient monitoring. This review aims to provide an overview of the quality of published studies on this topic and to identify challenges and suggestions to improve the robustness and reliability of existing tools. We identified 25 articles from the Scopus database that aimed to assess eczema severity automatically from digital camera images by eczema area detection (n=13), which is important for prior delineation of the most relevant clinical features, and/or severity prediction (n=12). Deep learning methods (n=14) were more commonly used in recent years over conventional machine learning (n=11). A set of 20 pre-defined criteria were used for critical appraisal in this study. Study quality was hindered in many cases due to dataset challenges, with only 28% of studies reporting patient age range and 16% reporting skin phototype range. Furthermore, 52% of studies utilised solely non-public datasets and only 17% provided open-source access to code repositories, making validation of experimental results a significant challenge. In terms of algorithm design, attempts to improve model accuracy and process automation are widely reported. However, there remains limited implementation of methods for explicitly improving model trustworthiness and robustness. There is a need for a high-quality dataset with a sufficient number of bias-free images and consistent labels, as well as improved image analytics methods, to enhance the state of remote eczema severity assessment algorithms. Improving the interpretability and explainability of developed tools will further improve long-term reliability and trustworthiness.
Deep neural networks, Eczema, Fully automated image analytics, Severity scores
Huang, Leo
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Tang, Wai Hoh
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Attar, Rahman
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Gore, Claudia
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Williams, Hywel C.
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Custovic, Adnan
17d8d092-73b8-44fb-bf48-5cea7b29e3fc
Tanaka, Reiko J.
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Huang, Leo
49ca2305-3bb6-4a7c-a0ca-7f28def2b9e1
Tang, Wai Hoh
0b658120-61d8-44f3-9f4e-dfbec0fb2fb6
Attar, Rahman
f5efd538-042a-4647-9d46-1370d3049b72
Gore, Claudia
4ad3cf91-6348-44bc-b5f0-1cbcef54afc0
Williams, Hywel C.
41a47f08-d65d-4c83-ba87-139a31125483
Custovic, Adnan
17d8d092-73b8-44fb-bf48-5cea7b29e3fc
Tanaka, Reiko J.
f8415912-067d-4c92-b916-e3c1cb6ab3f9
Huang, Leo, Tang, Wai Hoh, Attar, Rahman, Gore, Claudia, Williams, Hywel C., Custovic, Adnan and Tanaka, Reiko J.
(2024)
Remote assessment of eczema severity via AI-powered skin image analytics: a systematic review.
Artificial Intelligence in Medicine, 156, [102968].
(doi:10.1016/j.artmed.2024.102968).
Abstract
Various studies have been published on the remote assessment of eczema severity from digital camera images. Successful deployment of an accurate and robust AI-powered tool for such purposes can aid the formulation of eczema treatment plans and assist in patient monitoring. This review aims to provide an overview of the quality of published studies on this topic and to identify challenges and suggestions to improve the robustness and reliability of existing tools. We identified 25 articles from the Scopus database that aimed to assess eczema severity automatically from digital camera images by eczema area detection (n=13), which is important for prior delineation of the most relevant clinical features, and/or severity prediction (n=12). Deep learning methods (n=14) were more commonly used in recent years over conventional machine learning (n=11). A set of 20 pre-defined criteria were used for critical appraisal in this study. Study quality was hindered in many cases due to dataset challenges, with only 28% of studies reporting patient age range and 16% reporting skin phototype range. Furthermore, 52% of studies utilised solely non-public datasets and only 17% provided open-source access to code repositories, making validation of experimental results a significant challenge. In terms of algorithm design, attempts to improve model accuracy and process automation are widely reported. However, there remains limited implementation of methods for explicitly improving model trustworthiness and robustness. There is a need for a high-quality dataset with a sufficient number of bias-free images and consistent labels, as well as improved image analytics methods, to enhance the state of remote eczema severity assessment algorithms. Improving the interpretability and explainability of developed tools will further improve long-term reliability and trustworthiness.
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Accepted/In Press date: 19 August 2024
e-pub ahead of print date: 22 August 2024
Additional Information:
Publisher Copyright:
© 2024 The Author(s)
Keywords:
Deep neural networks, Eczema, Fully automated image analytics, Severity scores
Identifiers
Local EPrints ID: 502133
URI: http://eprints.soton.ac.uk/id/eprint/502133
ISSN: 0933-3657
PURE UUID: e1d64b7e-358e-426f-9144-405f5c091e7b
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Date deposited: 17 Jun 2025 16:42
Last modified: 17 Jun 2025 17:09
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Contributors
Author:
Leo Huang
Author:
Wai Hoh Tang
Author:
Rahman Attar
Author:
Claudia Gore
Author:
Hywel C. Williams
Author:
Adnan Custovic
Author:
Reiko J. Tanaka
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