A Scaled-2D CNN for Skin Cancer Diagnosis

T. H. Rafi, R. Shubair
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引用次数: 2

Abstract

Every year, doctors diagnose skin cancer in around 3 million or more patients across the globe. Currently, it is one of the most widely recognized kinds of cancers for human health. Hence, we need an early diagnosis to prevail any critical condition of the infected patients. Apparently, it can treat with topical drugs, if it diagnoses in an early stage. Hence as an outcome, skin cancer is responsible for less than 1% of all cancer deaths. There are two types of tumors in the skin cancer diseases domain, such as benign and malignant. To develop a robust and early screening system to diagnose skin cancer, it requires an efficient algorithm for prediction, trained with a large dataset. The primary aim of this research is to develop an efficient skin cancer screening process using a robust deep neural network with a large dataset. In this paper, we intend to determine considerate and dangerous types of skin cancer tumors using dermoscopic images from a publicly available dataset. We proposed an efficient and fast scaled 2D-CNN based on EfficientNet-B7 deep neural architecture with image preprocessing. This paper also uses two different pre-trained deep neural architectures, such as VGG19, and ResNet-50 to compare the performance with the proposed architecture. The proposed architecture outperformed the other pre-trained CNN models whereas the proposed architecture achieved higher AUC and accuracy compared to other architectures.
一种用于皮肤癌诊断的比例二维CNN
每年,医生在全球范围内诊断出大约300万或更多的皮肤癌患者。目前,它是危害人类健康的最广泛认识的癌症之一。因此,我们需要早期诊断,以防止感染患者出现任何危急情况。显然,如果在早期诊断出来,它可以用局部药物治疗。因此,皮肤癌在所有癌症死亡中所占的比例不到1%。在皮肤癌疾病领域有两种类型的肿瘤,如良性和恶性。为了开发一个强大的早期筛查系统来诊断皮肤癌,它需要一个有效的预测算法,并经过大型数据集的训练。本研究的主要目的是利用具有大型数据集的鲁棒深度神经网络开发一种有效的皮肤癌筛查过程。在本文中,我们打算使用来自公开数据集的皮肤镜图像来确定考虑和危险类型的皮肤癌肿瘤。我们提出了一种基于effentnet - b7深度神经网络架构并进行图像预处理的高效、快速的2D-CNN。本文还使用了两种不同的预训练深度神经架构,如VGG19和ResNet-50来比较其性能。所提出的体系结构优于其他预训练的CNN模型,并且与其他体系结构相比,所提出的体系结构获得了更高的AUC和精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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