Lee Yul Hee, Shim Ji-Su, Kim Young Jae, Jeon Ji Soo, Kang Sung-Yoon, Lee Sang Pyo, Lee Sang Min, Kim Kwang Gi
Department of Nursing, Gachon University College of Nursing, 191, Hambangmoe-ro, Yeonsu-gu, Incheon, 21936, Korea.
Department of Internal Medicine, Ewha Womans University College of Medicine, Seoul, Korea.
J Imaging Inform Med. 2025 Feb;38(1):467-475. doi: 10.1007/s10278-024-01075-0. Epub 2024 Aug 9.
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.
皮肤点刺试验(SPT)是识别与免疫球蛋白E介导的过敏性疾病相关的致敏变应原的关键工具,这些疾病包括哮喘、过敏性鼻炎、特应性皮炎、荨麻疹、血管性水肿和过敏反应。然而,由于需要测量变应原在皮肤上诱发的红斑和风团大小,SPT labor-intensive且耗时。在本研究中,我们使用图像预处理方法和深度学习模型对智能手机摄像头拍摄的SPT图像中的风团和红斑进行分割。随后,我们通过将结果与真实数据进行比较来评估深度学习模型的性能。使用对比度受限自适应直方图均衡化(CLAHE),一种旨在增强图像对比度的图像预处理技术,我们增强了来自33名参与者的46张SPT图像的色彩对比度。我们分别使用144个和150个训练数据集建立了用于风团和红斑分割的深度学习模型。风团分割模型的准确率为0.9985,灵敏度为0.5621,特异性为0.9995,Dice相似系数为0.7079,而红斑分割模型的准确率为0.9660,灵敏度为0.5787,特异性为0.97977,Dice相似系数为0.6636。在SPT中使用图像预处理和深度学习技术有望通过确保风团和红斑的准确分割、产生一致的评估结果以及简化诊断过程,对医疗实践产生重大积极影响。