Skin cancer is the most common malignancy in the world. Automated skin cancer detection would significantly improve early detection rates and prevent deaths. To help with this aim, a number of datasets have been released which can be used to train Deep Learning systems - these have produced impressive results for classification. However, this only works for the classes they are trained on whilst they are incapable of identifying skin lesions from previously unseen classes, making them unconducive for clinical use. We could look to massively increase the datasets by including all possible skin lesions, though this would always leave out some classes. Instead, we evaluate Siamese Neural Networks (SNNs), which not only allows us to classify images of skin lesions, but also allow us to identify those images which are different from the trained classes - allowing us to determine that an image is not an example of our training classes. We evaluate SNNs on both dermoscopic and clinical images of skin lesions. We obtain top-1 classification accuracy levels of 74.33% and 85.61% on clinical and dermoscopic datasets, respectively. Although this is slightly lower than the state-of-the-art results, the SNN approach has the advantage that it can detect out-of-class examples. Our results highlight the potential of an SNN approach as well as pathways towards future clinical deployment.
翻译:皮肤癌是世界上最常见的恶性肿瘤。 自动皮肤癌检测将极大地提高早期检测率,防止死亡。 为了达到这个目的,我们释放了一些数据集,这些数据集可用于培训深层学习系统,这些数据集产生了令人印象深刻的分类结果。 然而,这些数据集只能用于他们受训的班级,而他们无法识别先前不为人知的班级的皮肤损伤,因此无法对临床使用进行有益的评估。我们可以通过包括所有可能的皮肤损伤来大规模增加数据集,尽管这总是会留下一些课。相反,我们评估了西亚麻风神经网络(SNN),这不仅使我们能够对皮肤损伤图像进行分类,而且还使我们能够识别与受过训练的班级不同的图像。这只让我们确定一个图像不是我们培训课程的范例。我们评估皮肤损伤和临床损害的临床图像。我们获得了74.33%和85.61%的最高分类精确度,而临床和德摩科数据集(SNN)的精确度水平却略低一些。 尽管这使我们的临床结果比S-NN的定位更接近于未来的水平。