Abstract

The segmentation of a skin lesion is regarded as very challenging because of the low contrast between the lesion and the surrounding skin, the existence of various artifacts, and different imaging acquisition conditions. The purpose of this study is to segment melanocytic skin lesions in dermoscopic and standard images by using a hybrid model combining a new hierarchical K-means and level set approach, called HK-LS. Although the level set method is usually sensitive to initial estimation, it is widely used in biomedical image segmentation because it can segment more complex images and does not require a large number of manually labelled images. The preprocessing step is used for the proposed model to be less sensitive to intensity inhomogeneity. The proposed method was evaluated on medical skin images from two publicly available datasets including the PH2 database and the Dermofit database. All skin lesions were segmented with high accuracies (>94%) and Dice coefficients (>0.91) of the ground truth on two databases. The quantitative experimental results reveal that the proposed method yielded significantly better results compared to other traditional level set models and has a certain advantage over the segmentation results of U-net in standard images. The proposed method had high clinical applicability for the segmentation of melanocytic skin lesions in dermoscopic and standard images.

Highlights

  • IntroductionMelanoma is a dangerous skin cancer that mostly appears in pigmented cells (melanocytes) in the skin

  • Melanoma is a dangerous skin cancer that mostly appears in pigmented cells in the skin

  • The quantitative experimental results revealed that the proposed method yielded significantly better results compared to other traditional level set models, and has a certain advantage over the segmentation results of U-net in standard images

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Summary

Introduction

Melanoma is a dangerous skin cancer that mostly appears in pigmented cells (melanocytes) in the skin. The imaging conditions are frequently inconsistent because images are acquired from different distances or under variable illumination conditions These may lead to problems when the size of the lesion is too small. An additional problem is related to the presence of intrinsic noise and artifacts, such as hair, blood vessels, air bubbles, and frames; variegated colors inside the lesion; and the lack of distinct boundaries to the surrounding skin [8]. These make it difficult to distinguish the skin lesion [9]. A growing interest has developed in the computational analysis of skin lesion images to assist clinicians in distinguishing early melanoma from benign lesions [10]

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