基于临床图像的不同CNN面部皮肤病分类算法研究

Dr. S. Karthikeyan, Dr. A. Kingsly Jabakumar, B. Anuradha
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摘要

皮肤问题不仅损害身体健康,而且还会引起心理问题,特别是对于面部受损甚至毁容的患者。使用智能设备,大多数人能够获得方便的面部皮肤状况的临床图像。另一方面,卷积神经网络(cnn)在成像领域已经取得了接近甚至优于人类的表现。因此,本文研究了基于临床图像的不同CNN人脸皮肤病分类算法。首先,从Xiangya-Derm(据我们所知,这是中国最大的皮肤病临床图像数据集)中,我们建立了一个包含2656张面部图像的数据集,这些图像属于六种常见的皮肤病[脂溢性角化病(SK)、光化性角化病(AK)、酒渣鼻(ROS)、红斑狼疮(LE)、基底细胞癌(BCC)和鳞状细胞癌(SCC)]。我们使用五种主流网络算法对数据集中的这些疾病进行分类,并对结果进行比较。然后,我们使用相同疾病类型的独立数据集进行研究,但来自其他身体部位,对我们的模型进行迁移学习。比较性能,使用迁移学习的模型在几乎所有结构上都取得了更高的平均精度和召回率。在包含388张人脸图像的测试数据集中,最佳模型对LE、BCC和SK的召回率分别达到92.9%、89.2%和84.3%,平均召回率和准确率分别达到77.0%和70.8%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Studies on Different CNN Algorithms for Face Skin Disease Classification Based on Clinical Image
Skin problems not only injure physical health but also induce psychological problems, especially for patients whose faces have been damaged or even disfigured. Using smart devices, most of the people are able to obtain convenient clinical images of their face skin condition. On the other hand, the convolutional neural networks (CNNs) have achieved near or even better performance than human beings in the imaging field. Therefore, this paper studied different CNN algorithms for face skin disease classification based on the clinical images. First, from Xiangya–Derm, which is, to the best of our knowledge, China’s largest clinical image dataset of skin diseases, we established a dataset that contains 2656 face images belonging to six common skin diseases [seborrheic keratosis (SK), actinic keratosis (AK), rosacea (ROS), lupus erythematosus (LE), basal cell carcinoma (BCC), and squamous cell carcinoma (SCC)]. We performed studies using five mainstream network algorithms to classify these diseases in the dataset and compared the results. Then, we performed studies using an independent dataset of the same disease types, but from other body parts, to perform transfer learning on our models. Comparing the performances, the models that used transfer learning achieved a higher average precision and recall for almost all structures. In the test dataset, which included 388 facial images, the best model achieved 92.9%, 89.2%, and 84.3% recalls for the LE, BCC, and SK, respectively, and the mean recall and precision reached 77.0% and 70.8%
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