Affiliation:
1. Department of Medical Information Engineering, School of Biomedical Engineering, Anhui Medical University, Hefei 230032, Anhui, China
Abstract
Evaluation of vitiligo relies on accurate segmentation of lesions, and traditional segmentation methods mainly focus on near-field images. This study proposes a deep learning-based model for accurately segmenting lesions in wide-field vitiligo images. In this study, a dataset of 1267 wide-field vitiligo images was established to train and evaluate segmentation models. A Swin R-CNN model, which combined a Swin Transformer tiny network with a watershed algorithm, was proposed for segmenting lesions. The performances of the Swin R-CNN model and five other models were evaluated and compared through visual and quantitative perspectives. Additionally, the Spearman rank correlation test was performed to analyze result consistency between the Swin R-CNN model and dermatologists in measuring lesion area. The Swin R-CNN model accurately segmented lesions in the wide-field vitiligo images, surpassing other models in both visual and quantitative performance, with an average precision of 84.72% and an average recall of 77.81%. The correlation coefficients between the evaluation results of the Swin R-CNN model and three dermatologists were 0.88, 0.94, and 0.91, respectively. The Swin R-CNN model accurately segments lesions in the wide-field vitiligo images and quantifies lesion area at the dermatologist level. The Swin R-CNN model can provide reliable analytical results for the vitiligo evaluation.
Publisher
World Scientific Pub Co Pte Ltd