皮肤癌分割与分类的深度学习与迁移学习

Lin Li, Wonseok Seo
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引用次数: 3

摘要

根据皮肤癌基金会的说法,皮肤癌是迄今为止美国和全世界最常见的癌症类型。皮肤癌的早期诊断至关重要,因为在早期阶段进行适当的治疗可以增加治愈和恢复的机会。然而,皮肤科医生对皮肤镜图像的目视检查容易出错且耗时。为了确保皮肤癌的准确诊断和更快的治疗,人们利用深度学习技术对皮肤病变进行自动分割和分类。本文在对图像进行处理后,建立Mask R-CNN模型进行病灶分割,其中利用Microsoft COCO数据集预训练的权值进行迁移学习。将训练好的Mask R-CNN模型的权值保存并转移到下一个任务——皮肤损伤分类中,训练一个Mask R-CNN模型进行分类。我们的实验是在2018年国际皮肤成像协作(ISIC 2018)的基准数据集上进行的,并使用ISIC 2018中使用的相同指标进行评估。病变边界分割和病变分类的准确率分别达到96%和80%的平衡多类准确率。
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Deep Learning and Transfer Learning for Skin Cancer Segmentation and Classification
According to Skin Cancer Foundation, skin cancer is by far the most common type of cancer in the United States and worldwide. Early diagnosis of skin cancer is critical because proper treatment at early stages can increase the chance of cure and recovery. However, visual inspection of dermoscopic images by dermatologists is error-prone and time-consuming. To ensure accurate diagnosis and faster treatment of skin cancer, deep learning techniques have been utilized to conduct automated skin lesion segmentation and classification. In this paper, after image processing, a Mask R-CNN model is built for lesion segmentation, where transfer learning is utilized by using the pre-trained weights from Microsoft COCO dataset. The weights of the trained Mask R-CNN model are saved and transferred to the next task - skin lesion classification, to train a Mask R-CNN model for classification. Our experiments are conducted on the benchmark datasets from the International Skin Imaging Collaboration 2018 (ISIC 2018) and evaluated by the same metrics used in ISIC 2018. The lesion boundary segmentation and lesion classification have achieved an accuracy of 96% and a balanced multiclass accuracy of 80%, respectively.
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