Skin cancer is the most common human malignancy(American Cancer Society) which is primarily diagnosed visually, starting with an initial clinical screening and followed potentially by dermoscopic(related to skin) analysis, a biopsy and histopathological examination. Skin cancer occurs when errors (mutations) occur in the DNA of skin cells. The mutations cause the cells to grow out of control and form a mass of cancer cells. The aim of this study was to try to classify images of skin lesions with the help of convolutional neural networks. The deep neural networks show humongous potential for image classification while taking into account the large variability exhibited by the environment. Here we trained images based on the pixel values and classified them on the basis of disease labels. The dataset was acquired from an Open Source Kaggle Repository(Kaggle Dataset)which itself was acquired from ISIC(International Skin Imaging Collaboration) Archive. The training was performed on multiple models accompanied with Transfer Learning. The highest model accuracy achieved was over 86.65%. The dataset used is publicly available to ensure credibility and reproducibility of the aforementioned result.
翻译:皮肤癌是人类最常见的恶性肿瘤(美国癌症协会),主要通过视觉诊断,先是初步临床检查,然后是皮肤(与皮肤有关)分析、生物检查和病理学检查。皮肤癌发生在皮肤细胞DNA出现错误(变异)时。突变使细胞失去控制,形成大量癌症细胞。本研究的目的是试图在卷发神经网络的帮助下,对皮肤损伤图像进行分类。深神经网络显示图像分类的巨大潜力,同时考虑到环境显示的巨大变异性。我们在这里根据像素值对图像进行了培训,并根据疾病标签对其进行分类。数据集是从开放源Kagle Repostory(Kagle数据集)获得的,该数据集本身是从ISIC(国际皮肤成像协作)档案中获取的。培训是在与转移学习有关的多个模型上进行的。实现的最高模型精确率超过了86.65%。使用的数据集可以公开获取,以确保上述结果的可信度和可复制性。