Abstract

Automatic melanoma detection from dermoscopic skin samples is a very challenging task. However, using a deep learning approach as a machine vision tool can overcome some challenges. This research proposes an automated melanoma classifier based on a deep convolutional neural network (DCNN) to accurately classify malignant vs. benign melanoma. The structure of the DCNN is carefully designed by organizing many layers that are responsible for extracting low to high-level features of the skin images in a unique fashion. Other vital criteria in the design of DCNN are the selection of multiple filters and their sizes, employing proper deep learning layers, choosing the depth of the network, and optimizing hyperparameters. The primary objective is to propose a lightweight and less complex DCNN than other state-of-the-art methods to classify melanoma skin cancer with high efficiency. For this study, dermoscopic images containing different cancer samples were obtained from the International Skin Imaging Collaboration datastores (ISIC 2016, ISIC2017, and ISIC 2020). We evaluated the model based on accuracy, precision, recall, specificity, and F1-score. The proposed DCNN classifier achieved accuracies of 81.41%, 88.23%, and 90.42% on the ISIC 2016, 2017, and 2020 datasets, respectively, demonstrating high performance compared with the other state-of-the-art networks. Therefore, this proposed approach could provide a less complex and advanced framework for automating the melanoma diagnostic process and expediting the identification process to save a life.

Highlights

  • Skin cancer is an invasive disease caused by the abnormal growth of melanocyte cells in the body, which tend to replicate and spread through lymph nodes to destroy surrounding tissues [1]

  • As per the statistics of the International Agency for Research for Cancer (IARC) [3], 19.3 million new cases were diagnosed with cancer, with a mortality rate of about 10 million people in 2020

  • Several experiments for skin lesion classification were conducted on different dermoscopic lesion images to evaluate the performance of the lesion classification network (LCNet)

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Summary

Introduction

Skin cancer is an invasive disease caused by the abnormal growth of melanocyte cells in the body, which tend to replicate and spread through lymph nodes to destroy surrounding tissues [1]. The damaged cells develop a mole on the external skin layer, categorized as malignant or benign, whereas melanoma is considered cancer because it is more dangerous and life-threatening. Skin cancer is a widespread and dangerous disease globally, with 300,000 newly diagnosed cases and over 1 million deaths each month worldwide in 2018 [2]. As per the statistics of the International Agency for Research for Cancer (IARC) [3], 19.3 million new cases were diagnosed with cancer, with a mortality rate of about 10 million people in 2020. The control over mortality rate due to cancer is challenging; the latest development in image processing and artificial intelligence approaches may help diagnose melanoma early as early detection and prognosis can increase the survival rate. Computer-aided diagnostic (CAD) tools save time and effort compared with existing clinical approaches

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