Université Paris 5 Descartes, AP-HP and Inserm Institut Cochin 2f016, Hôpital Cochin, Department of Dermatology, Paris, France.
Facolta di Medicina et Chirugia, UNIMORE Iniversita Degli Studi di Modena e Reggio Emilia, Modena, Italy.
Eur J Dermatol. 2019 Apr 1;29(S1):4-7. doi: 10.1684/ejd.2019.3538.
Diagnosis in dermatology is largely based on contextual factors going far beyond the visual and dermoscopic inspection of a lesion. Diagnostic tools such as the different types of dermoscopy, confocal microscopy and optical coherence tomography (OCT) are available and all of these have shown their importance in improving the dermatologist's ability, especially in the diagnosis of skin cancer. Their use, however, remains limited and time consuming, and optimizing their practice appears to be difficult, requiring extensive pre-processing, lesion segmentation and extraction of domain-specific visual features before classification. Over the last two decades, image recognition has been a matter of interest in a large part of our society and in industry, leading to the development of several techniques such as convolutional processing combined with artificial intelligence or neural networks (CNN/ANN). The aim of the present manuscript is to provide a short overview of the most recent data about CNN in the field of dermatology, mainly in skin cancer detection and its diagnosis.
在皮肤病学中,诊断主要基于超出病变视觉和皮肤镜检查的背景因素。现已有多种诊断工具,如不同类型的皮肤镜检查、共聚焦显微镜和光相干断层扫描(OCT),这些都已证明了它们在提高皮肤科医生的诊断能力方面的重要性,尤其是在诊断皮肤癌方面。然而,这些工具的使用仍然受到限制且耗时,而且似乎很难优化其应用,因为在分类之前需要进行广泛的预处理、病变分割和提取特定于领域的视觉特征。在过去的二十年中,图像识别已成为我们社会和工业界的关注焦点,导致了卷积处理与人工智能或神经网络(CNN/ANN)等多种技术的发展。本文的目的是简要概述皮肤科领域中关于 CNN 的最新数据,主要是在皮肤癌检测及其诊断方面。