图像中黑色素瘤检测的鲁棒深度学习框架

Trisha Sarkar, Anushka Khare, Mohit Parekh, Param Mehta, Avani Bhuva
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引用次数: 0

摘要

黑色素瘤是一种皮肤癌,发生在黑色素细胞癌变时,是成年人死亡的常见原因。黑色素瘤的存在可以通过活组织检查得到最终证实,但这些报告往往需要时间。早期发现黑色素瘤可以提高死亡率并降低成本。基于人工智能的辅助工具可以帮助早期发现。大多数研究都集中在皮肤镜图像或非皮肤镜图像的检测上,而不是两者兼而有之。在本文中,我们提出了一种新的广义框架,可以在皮肤镜和非皮肤镜图像中检测黑色素瘤。该框架包括预处理管道、数据增强和解决类失衡,然后是VGG-16模型。该模型在非皮肤镜图像上的灵敏度为87%,在皮肤镜图像上的灵敏度为91%(对于黑色素瘤病例)。
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Robust deep learning framework for the detection of melanoma in images
Melanoma, a type of skin cancer, occurs when melanocytes become cancerous and is a common cause of death in adults. The presence of melanoma can be conclusively proved through biopsies, but these lap reports often take time. Early detection of melanoma could improve mortality rates and reduce costs. AI-based assistive tools can aid early detection. Most studies focus on detection either in dermoscopic images or in non-dermoscopic images, not both. In this paper, we propose a novel generalised framework which can detect melanoma in both dermoscopic and non-dermoscopic images. The framework includes a preprocessing pipeline, data augmentation and resolving class imbalances, followed by a VGG-16 model. The model gives a sensitivity (for melanoma cases) of 87% on non-dermoscopic images and 91 % on dermoscopic images.
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