School of Engineering, Computer and Mathematical Sciences, Auckland University of Technology, Auckland 1010, New Zealand.
School of Innovation, Design and Engineering, Mälardalen University, 722 20 Västerås, Sweden.
Sensors (Basel). 2022 Feb 2;22(3):1134. doi: 10.3390/s22031134.
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.
自动从皮肤镜样本中检测黑色素瘤是一项极具挑战性的任务。然而,使用深度学习方法作为机器视觉工具可以克服一些挑战。本研究提出了一种基于深度卷积神经网络(DCNN)的自动黑色素瘤分类器,以准确地对恶性与良性黑色素瘤进行分类。DCNN 的结构经过精心设计,通过组织许多层来负责以独特的方式提取皮肤图像的低到高层特征。DCNN 设计中的其他重要标准是选择多个滤波器及其大小、使用适当的深度学习层、选择网络的深度以及优化超参数。主要目标是提出一种比其他最先进方法更轻量级和更简单的 DCNN,以高效地对黑色素瘤皮肤癌进行分类。在这项研究中,从国际皮肤成像合作数据存储库(ISIC 2016、ISIC2017 和 ISIC 2020)中获得了包含不同癌症样本的皮肤镜图像。我们基于准确性、精度、召回率、特异性和 F1 分数来评估模型。所提出的 DCNN 分类器在 ISIC 2016、2017 和 2020 数据集上的准确率分别为 81.41%、88.23%和 90.42%,与其他最先进的网络相比表现出较高的性能。因此,这种方法可以为自动化黑色素瘤诊断过程提供一个更简单、先进的框架,并加速识别过程,以拯救生命。