Wu Yinhao, Chen Bin, Zeng An, Pan Dan, Wang Ruixuan, Zhao Shen
School of Intelligent Systems Engineering, Sun Yat-Sen University, Guangzhou, China.
Affiliated Hangzhou First People's Hospital, Zhejiang University School of Medicine, Zhejiang, China.
Front Oncol. 2022 Jul 13;12:893972. doi: 10.3389/fonc.2022.893972. eCollection 2022.
Skin cancer is one of the most dangerous diseases in the world. Correctly classifying skin lesions at an early stage could aid clinical decision-making by providing an accurate disease diagnosis, potentially increasing the chances of cure before cancer spreads. However, achieving automatic skin cancer classification is difficult because the majority of skin disease images used for training are imbalanced and in short supply; meanwhile, the model's cross-domain adaptability and robustness are also critical challenges. Recently, many deep learning-based methods have been widely used in skin cancer classification to solve the above issues and achieve satisfactory results. Nonetheless, reviews that include the abovementioned frontier problems in skin cancer classification are still scarce. Therefore, in this article, we provide a comprehensive overview of the latest deep learning-based algorithms for skin cancer classification. We begin with an overview of three types of dermatological images, followed by a list of publicly available datasets relating to skin cancers. After that, we review the successful applications of typical convolutional neural networks for skin cancer classification. As a highlight of this paper, we next summarize several frontier problems, including data imbalance, data limitation, domain adaptation, model robustness, and model efficiency, followed by corresponding solutions in the skin cancer classification task. Finally, by summarizing different deep learning-based methods to solve the frontier challenges in skin cancer classification, we can conclude that the general development direction of these approaches is structured, lightweight, and multimodal. Besides, for readers' convenience, we have summarized our findings in figures and tables. Considering the growing popularity of deep learning, there are still many issues to overcome as well as chances to pursue in the future.
皮肤癌是世界上最危险的疾病之一。在早期正确分类皮肤病变有助于临床决策,通过提供准确的疾病诊断,有可能在癌症扩散前增加治愈的机会。然而,实现皮肤癌的自动分类很困难,因为用于训练的大多数皮肤疾病图像不均衡且数量短缺;同时,模型的跨域适应性和鲁棒性也是关键挑战。最近,许多基于深度学习的方法已广泛用于皮肤癌分类,以解决上述问题并取得了令人满意的结果。尽管如此,涵盖皮肤癌分类中上述前沿问题的综述仍然很少。因此,在本文中,我们全面概述了用于皮肤癌分类的最新基于深度学习的算法。我们首先概述三种类型的皮肤病图像,然后列出与皮肤癌相关的公开可用数据集。之后,我们回顾典型卷积神经网络在皮肤癌分类中的成功应用。作为本文的亮点,我们接下来总结几个前沿问题,包括数据不平衡、数据限制、域适应、模型鲁棒性和模型效率,以及在皮肤癌分类任务中的相应解决方案。最后,通过总结不同的基于深度学习的方法来解决皮肤癌分类中的前沿挑战,我们可以得出结论,这些方法的总体发展方向是结构化、轻量化和多模态的。此外,为方便读者,我们已将研究结果总结在图表中。考虑到深度学习越来越受欢迎,未来仍有许多问题需要克服,也有很多机会可以探索。