Skin cancer is the most common cancer worldwide, with melanoma being the deadliest form. Dermoscopy is a skin imaging modality that has shown an improvement in the diagnosis of skin cancer compared to visual examination without support. We evaluate the current state of the art in the classification of dermoscopic images based on the ISIC-2019 Challenge for the classification of skin lesions and current literature. Various deep neural network architectures pre-trained on the ImageNet data set are adapted to a combined training data set comprised of publicly available dermoscopic and clinical images of skin lesions using transfer learning and model fine-tuning. The performance and applicability of these models for the detection of eight classes of skin lesions are examined. Real-time data augmentation, which uses random rotation, translation, shear, and zoom within specified bounds is used to increase the number of available training samples. Model predictions are multiplied by inverse class frequencies and normalized to better approximate actual probability distributions. Overall prediction accuracy is further increased by using the arithmetic mean of the predictions of several independently trained models. The best single model has been published as a web service.
翻译:皮肤癌是全世界最常见的癌症,其最致命的形式是乳腺瘤。皮肤造影是一种皮肤成像模式,与无支持的视觉检查相比,皮肤癌诊断情况有所改善。我们根据国际标准行业分类-2019对皮肤损伤和当前文献分类的挑战,评估了脱温图像分类的最新水平。在图像网数据集上预先培训的各种深神经网络结构适应了综合培训数据集,该数据集包括公开提供的皮肤损伤的脱温和临床图像,采用转移学习和模型微调。这些模型在检测八类皮肤损伤方面的性能和适用性得到了检查。实时数据增强(在特定范围内使用随机旋转、翻译、剪切片和缩放来增加现有培训样本的数量)。模型预测以反等频率乘以更接近实际概率分布。通过使用数个独立培训模型预测的算术平均数进一步提高了总体预测的准确性。最佳的单一模型已经作为网络服务出版。