用于皮肤癌疾病检测与分类的深度残差学习图像识别模型

IF 0.8 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Acta Informatica Pragensia Pub Date : 2022-08-04 DOI:10.18267/j.aip.189
J. M. Al-Tuwaijari, Naeem Th. Yousir, Nafea Ali Majeed Alhammad, S. Mostafa
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引用次数: 0

摘要

皮肤癌无疑是最致命的疾病之一,早期发现这种疾病可以挽救生命。深度学习在基于图像的皮肤癌检测和分类中的有用性和能力已经在许多研究中进行了调查。然而,由于皮肤癌肿瘤的形状和颜色的多样性,深度学习算法会错误地区分肿瘤是癌性的还是良性的。在本文中,我们使用了三种不同的预训练的最先进的深度学习模型:DenseNet121, VGG19和改进的ResNet152,对皮肤图像数据集进行分类。该数据集共有3297张皮肤镜图像和两种诊断类别:良性和恶性。这三种模型都得到了迁移学习的支持,并根据准确率、损失、精度、召回率、f1分数和ROC标准进行了测试和评估。随后,结果表明,改进后的ResNet152模型显著优于其他模型,准确率得分为92%,ROC得分为91%。DenseNet121和VGG19模型的准确率得分分别为90%和79%,ROC得分分别为88%和75%。随后,基于ResNet152模型实现了深度残差学习皮肤癌识别(ResNetScr)系统,该系统具有帮助皮肤科医生诊断皮肤癌的能力。
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Deep Residual Learning Image Recognition Model for Skin Cancer Disease Detection and Classification
Skin cancer is undoubtedly one of the deadliest diseases, and early detection of this disease can save lives. The usefulness and capabilities of deep learning in detecting and categorizing skin cancer based on images have been investigated in many studies. However, due to the variety of skin cancer tumour shapes and colours, deep learning algorithms misclassify whether a tumour is cancerous or benign. In this paper, we employed three different pre-trained state-of-the-art deep learning models: DenseNet121, VGG19 and an improved ResNet152, in classifying a skin image dataset. The dataset has a total of 3297 dermatoscopy images and two diagnostic categories: benign and malignant. The three models are supported by transfer learning and have been tested and evaluated based on the criteria of accuracy, loss, precision, recall, f1 score and ROC. Subsequently, the results show that the improved ResNet152 model significantly outperformed the other models and achieved an accuracy score of 92% and an ROC score of 91%. The DenseNet121 and VGG19 models achieve accuracy scores of 90% and 79% and ROC scores of 88% and 75%, respectively. Subsequently, a deep residual learning skin cancer recognition (ResNetScr) system has been implemented based on the ResNet152 model, and it has the capacity to help dermatologists in diagnosing skin cancer.
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来源期刊
Acta Informatica Pragensia
Acta Informatica Pragensia Social Sciences-Library and Information Sciences
CiteScore
1.70
自引率
0.00%
发文量
26
审稿时长
12 weeks
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