1. Automated Detection and Segmentation of Vascular Structures of Skin Lesions Seen in Dermoscopy, With an Application to Basal Cell Carcinoma Classification
- Author
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Tim K. Lee, Harvey Lui, Z. Jane Wang, Pegah Kharazmi, and Mohammed I. AlJasser
- Subjects
Pathology ,medicine.medical_specialty ,Skin Neoplasms ,Erythema ,Dermoscopy ,Pattern Recognition, Automated ,030218 nuclear medicine & medical imaging ,Lesion ,Hemoglobins ,030207 dermatology & venereal diseases ,03 medical and health sciences ,0302 clinical medicine ,Health Information Management ,Image Interpretation, Computer-Assisted ,Humans ,Medicine ,Basal cell carcinoma ,Segmentation ,Electrical and Electronic Engineering ,Skin ,integumentary system ,business.industry ,medicine.disease ,Independent component analysis ,Thresholding ,Computer Science Applications ,Random forest ,Carcinoma, Basal Cell ,Area Under Curve ,medicine.symptom ,Skin cancer ,business ,Biotechnology - Abstract
Blood vessels are important biomarkers in skin lesions both diagnostically and clinically. Detection and quantification of cutaneous blood vessels provide critical information toward lesion diagnosis and assessment. In this paper, a novel framework for detection and segmentation of cutaneous vasculature from dermoscopy images is presented and the further extracted vascular features are explored for skin cancer classification. Given a dermoscopy image, we segment vascular structures of the lesion by first decomposing the image using independent-component analysis into melanin and hemoglobin components. This eliminates the effect of pigmentation on the visibility of blood vessels. Using k-means clustering, the hemoglobin component is then clustered into normal, pigmented, and erythema regions. Shape filters are then applied to the erythema cluster at different scales. A vessel mask is generated as a result of global thresholding. The segmentation sensitivity and specificity of 90% and 86% were achieved on a set of 500 000 manually segmented pixels provided by an expert. To further demonstrate the superiority of the proposed method, based on the segmentation results, we defined and extracted vascular features toward lesion diagnosis in basal cell carcinoma (BCC). Among a dataset of 659 lesions (299 BCC and 360 non-BCC), a set of 12 vascular features are extracted from the final vessel images of the lesions and fed into a random forest classifier. When compared with a few other state-of-art methods, the proposed method achieves the best performance of 96.5% in terms of area under the curve (AUC) in differentiating BCC from benign lesions using only the extracted vascular features.
- Published
- 2017
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