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09-08-2024 | Erythema

Allergy Wheal and Erythema Segmentation Using Attention U-Net

Authors: Yul Hee Lee, Ji-Su Shim, Young Jae Kim, Ji Soo Jeon, Sung-Yoon Kang, Sang Pyo Lee, Sang Min Lee, Kwang Gi Kim

Published in: Journal of Imaging Informatics in Medicine | Issue 1/2025

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Abstract

The skin prick test (SPT) is a key tool for identifying sensitized allergens associated with immunoglobulin E-mediated allergic diseases such as asthma, allergic rhinitis, atopic dermatitis, urticaria, angioedema, and anaphylaxis. However, the SPT is labor-intensive and time-consuming due to the necessity of measuring the sizes of the erythema and wheals induced by allergens on the skin. In this study, we used an image preprocessing method and a deep learning model to segment wheals and erythema in SPT images captured by a smartphone camera. Subsequently, we assessed the deep learning model’s performance by comparing the results with ground-truth data. Using contrast-limited adaptive histogram equalization (CLAHE), an image preprocessing technique designed to enhance image contrast, we augmented the chromatic contrast in 46 SPT images from 33 participants. We established a deep learning model for wheal and erythema segmentation using 144 and 150 training datasets, respectively. The wheal segmentation model achieved an accuracy of 0.9985, a sensitivity of 0.5621, a specificity of 0.9995, and a Dice similarity coefficient of 0.7079, whereas the erythema segmentation model achieved an accuracy of 0.9660, a sensitivity of 0.5787, a specificity of 0.97977, and a Dice similarity coefficient of 0.6636. The use of image preprocessing and deep learning technology in SPT is expected to have a significant positive impact on medical practice by ensuring the accurate segmentation of wheals and erythema, producing consistent evaluation results, and simplifying diagnostic processes.
Literature
1.
go back to reference Lee YM: Advanced Course: Allergy: How to do primary care as an allergy specialist? The Korean Journal of Internal Medicine 2016:218–220, 2016 Lee YM: Advanced Course: Allergy: How to do primary care as an allergy specialist? The Korean Journal of Internal Medicine 2016:218–220, 2016
2.
go back to reference Organization WH: Prevention of allergy and allergic asthma. World Health Organization 1–14, 2003 Organization WH: Prevention of allergy and allergic asthma. World Health Organization 1–14, 2003
3.
go back to reference Pijnenborg H, Nilsson L, Dreborg S: Estimation of skin prick test reactions with a scanning program. Allergy 51:782–788, 1996CrossRefPubMed Pijnenborg H, Nilsson L, Dreborg S: Estimation of skin prick test reactions with a scanning program. Allergy 51:782–788, 1996CrossRefPubMed
4.
go back to reference Yun SY, Seo GB, An SR, Lee JG: Differences in reproducibility according to the criteria for determining allergic skin terminal test. Journal of Korean Academy of Asthma, Allergy and Clinical Immunology 17:549–555, 1997 Yun SY, Seo GB, An SR, Lee JG: Differences in reproducibility according to the criteria for determining allergic skin terminal test. Journal of Korean Academy of Asthma, Allergy and Clinical Immunology 17:549–555, 1997
5.
go back to reference Weiser K, et al.: The diagnosis of food allergy: a systematic review and meta-analysis. Allergy 69:76–86, 2014CrossRef Weiser K, et al.: The diagnosis of food allergy: a systematic review and meta-analysis. Allergy 69:76–86, 2014CrossRef
6.
go back to reference Michel S, Scherer K, Heijnen I, Bircher A: Skin prick test and basophil reactivity to cetuximab in patients with I g E to alpha‐gal and allergy to red meat. Allergy 69:403–405, 2014CrossRefPubMed Michel S, Scherer K, Heijnen I, Bircher A: Skin prick test and basophil reactivity to cetuximab in patients with I g E to alpha‐gal and allergy to red meat. Allergy 69:403–405, 2014CrossRefPubMed
7.
go back to reference Vlieg‐Boerstra B, Van De Weg W, Van Der Heide S, Dubois A: Where to prick the apple for skin testing? Allergy 68:1196–1198, 2013CrossRefPubMed Vlieg‐Boerstra B, Van De Weg W, Van Der Heide S, Dubois A: Where to prick the apple for skin testing? Allergy 68:1196–1198, 2013CrossRefPubMed
8.
go back to reference Lamminen H, Voipio V: Computer‐aided skin prick test. Experimental dermatology 17:975–976, 2008CrossRefPubMed Lamminen H, Voipio V: Computer‐aided skin prick test. Experimental dermatology 17:975–976, 2008CrossRefPubMed
9.
go back to reference Park Y, et al.: A new approach to quantify and grade radiation dermatitis using deep-learning segmentation in skin photographs. Clinical Oncology 35:e10–e19, 2023CrossRefPubMed Park Y, et al.: A new approach to quantify and grade radiation dermatitis using deep-learning segmentation in skin photographs. Clinical Oncology 35:e10–e19, 2023CrossRefPubMed
10.
go back to reference Steppan J, Hanke S: Analysis of skin lesion images with deep learning. arXiv preprint arXiv:210103814, 2021 Steppan J, Hanke S: Analysis of skin lesion images with deep learning. arXiv preprint arXiv:210103814, 2021
11.
go back to reference Peña JC, Pacheco JA, Marrugo AG: Skin prick test wheal detection in 3D images via convolutional neural networks. In 2021 IEEE 2nd International Congress of Biomedical Engineering and Bioengineering (CI-IB&BI) 1–4, 2021 Peña JC, Pacheco JA, Marrugo AG: Skin prick test wheal detection in 3D images via convolutional neural networks. In 2021 IEEE 2nd International Congress of Biomedical Engineering and Bioengineering (CI-IB&BI) 1–4, 2021
12.
go back to reference Lu J, Manton JH, Kazmierczak E, Sinclair R: Erythema detection in digital skin images. In 2010 IEEE International Conference on Image Processing 2545–2548, 2010 Lu J, Manton JH, Kazmierczak E, Sinclair R: Erythema detection in digital skin images. In 2010 IEEE International Conference on Image Processing 2545–2548, 2010
13.
go back to reference Al-Amri SS, Kalyankar N, Khamitkar S: Image segmentation by using edge detection. International journal on computer science and engineering 2:804–807, 2010 Al-Amri SS, Kalyankar N, Khamitkar S: Image segmentation by using edge detection. International journal on computer science and engineering 2:804–807, 2010
14.
go back to reference Kim JY: Understanding of allergy skin test. The Korean Society for Clinical Laboratory Physiology 2:155–172, 2010 Kim JY: Understanding of allergy skin test. The Korean Society for Clinical Laboratory Physiology 2:155–172, 2010
15.
go back to reference Lee JE, Kim JH, Lim DH, Chung SW, Son BK: Use of Erythema as An Interpreting Index of the Skin Prick Test. Journal of the Korean Pediatric Society 41:966–973, 1998 Lee JE, Kim JH, Lim DH, Chung SW, Son BK: Use of Erythema as An Interpreting Index of the Skin Prick Test. Journal of the Korean Pediatric Society 41:966–973, 1998
16.
go back to reference Zhong J, Bian Z, Hatt CR, Burris NS: Segmentation of the thoracic aorta using an attention-gated u-net. In Medical Imaging 2021: Computer-Aided Diagnosis 11597:147–153, 2021 Zhong J, Bian Z, Hatt CR, Burris NS: Segmentation of the thoracic aorta using an attention-gated u-net. In Medical Imaging 2021: Computer-Aided Diagnosis 11597:147–153, 2021
17.
go back to reference Oktay O, Schlemper J, Folgoc LL, Lee M, Heinrich M, Misawa K, Mori K, McDonagh S, Hammerla NY, Kainz B, Glocker B, Rueckert D: Attention U-Net: Learning where to look for the pancreas. arXiv preprint arXiv:1804.039992018, 2018 Oktay O, Schlemper J, Folgoc LL, Lee M, Heinrich M, Misawa K, Mori K, McDonagh S, Hammerla NY, Kainz B, Glocker B, Rueckert D: Attention U-Net: Learning where to look for the pancreas. arXiv preprint arXiv:1804.039992018, 2018
18.
go back to reference Musa P, Al Rafi F, Lamsani M: A Review: Contrast-Limited Adaptive Histogram Equalization (CLAHE) methods to help the application of face recognition. In 2018 third international conference on informatics and computing (ICIC) 1–6, 2018 Musa P, Al Rafi F, Lamsani M: A Review: Contrast-Limited Adaptive Histogram Equalization (CLAHE) methods to help the application of face recognition. In 2018 third international conference on informatics and computing (ICIC) 1–6, 2018
19.
go back to reference Oneto L: Model selection and error estimation in a nutshell. Springer International Publishing 15:1–132 ,2020 Oneto L: Model selection and error estimation in a nutshell. Springer International Publishing 15:1–132 ,2020
20.
go back to reference Rex DE, Shattuck DW, Woods RP, Narr KL, Luders E, Rehm K, Toga AW: A meta-algorithm for brain extraction in MRI. NeuroImage 23:625–637, 2004CrossRefPubMed Rex DE, Shattuck DW, Woods RP, Narr KL, Luders E, Rehm K, Toga AW: A meta-algorithm for brain extraction in MRI. NeuroImage 23:625–637, 2004CrossRefPubMed
21.
go back to reference Clark M: Skin assessment in dark pigmented skin: a challenge in pressure ulcer prevention. Nursing times 106:16–17, 2010PubMed Clark M: Skin assessment in dark pigmented skin: a challenge in pressure ulcer prevention. Nursing times 106:16–17, 2010PubMed
22.
go back to reference Sprigle S, Zhang L, Duckworth M: Detection of skin erythema in darkly pigmented skin using multispectral images. Advances in skin & wound care 22:172–179, 2009CrossRef Sprigle S, Zhang L, Duckworth M: Detection of skin erythema in darkly pigmented skin using multispectral images. Advances in skin & wound care 22:172–179, 2009CrossRef
Metadata
Title
Allergy Wheal and Erythema Segmentation Using Attention U-Net
Authors
Yul Hee Lee
Ji-Su Shim
Young Jae Kim
Ji Soo Jeon
Sung-Yoon Kang
Sang Pyo Lee
Sang Min Lee
Kwang Gi Kim
Publication date
09-08-2024
Publisher
Springer International Publishing
Keyword
Erythema
Published in
Journal of Imaging Informatics in Medicine / Issue 1/2025
Print ISSN: 2948-2925
Electronic ISSN: 2948-2933
DOI
https://doi.org/10.1007/s10278-024-01075-0