应用深度迁移学习方法对皮肤癌症进行分类

IF 0.3 Q4 COMPUTER SCIENCE, THEORY & METHODS Computer Science-AGH Pub Date : 2022-09-16 DOI:10.53070/bbd.1172782
Doaa Khalid Abdulridha AL-SAEDİ, Serkan Savaş
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引用次数: 4

摘要

皮肤癌是人类社会严重的健康危害。当产生皮肤颜色的色素癌变时,这种疾病就会发展起来。皮肤科医生在诊断皮肤癌时面临困难,因为许多皮肤癌的颜色似乎相同。因此,早期诊断病变(皮肤癌的基础)对于彻底治愈皮肤癌患者是至关重要和有益的。随着人工智能(AI)技术的发展,在创建自动化方法方面取得了重大进展,以帮助皮肤科医生识别皮肤癌。人工智能技术的广泛接受,使得大量病变和良性溃疡照片的使用得到了组织学的授权。本研究使用国际皮肤成像协作(ISIC)数据集比较了六种用于皮肤癌分类的可选迁移学习网络(深度网络)。DenseNet、Xception、InceptionResNetV2、ResNet50和MobileNet是研究中使用的迁移学习网络,最近在不同的研究中取得了成功。为了弥补ISIC数据集的不平衡,对低频类的照片进行了增强。结果表明,增强方法对分类成功是合适的,分类准确率高,f分数降低了假阴性。修正后的DenseNet121是研究中使用的其他迁移学习网络中最成功的模型,准确率为98.35%。
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Classification of Skin Cancer with Deep Transfer Learning Method
Skin cancer is a serious health hazard for human society. This disease is developed when the pigments that produce skin color become cancerous. Dermatologists face difficulties in diagnosing skin cancer since many skin cancer colors seem identical. As a result, early diagnosis of lesions (the foundation of skin cancer) is very crucial and beneficial in totally curing skin cancer patients. Significant progress has been made in creating automated methods with the development of artificial intelligence (AI) technologies to aid dermatologists in the identification of skin cancer. The widespread acceptance of AI-powered technologies has enabled the use of a massive collection of photos of lesions and benign sores authorized by histology. This research compares six alternative transfer learning networks (deep networks) for skin cancer classification using the International Skin Imaging Collaboration (ISIC) dataset. DenseNet, Xception, InceptionResNetV2, ResNet50, and MobileNet were the transfer learning networks employed in the investigation which were successful in different studies recently. To compensate for the imbalance in the ISIC dataset, the photos of classes with low frequencies are augmented. The results show that augmentation is appropriate for the classification success, with high classification accuracies and F-scores with decreased false negatives. With an accuracy rate of 98.35%, modified DenseNet121 was the most successful model against the rest of the transfer learning nets utilized in the study.
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来源期刊
Computer Science-AGH
Computer Science-AGH COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
1.40
自引率
0.00%
发文量
18
审稿时长
20 weeks
期刊最新文献
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