Yilmaz Abdurrahim, Gencoglan Gulsum, Varol Rahmetullah, Demircali Ali Anil, Keshavarz Meysam, Uvet Huseyin
Mechatronics Engineering, Yildiz Technical University, 34349 Istanbul, Turkey.
Department of Business Administration, Bundeswehr University Munich, 85579 Munich, Germany.
J Clin Med. 2022 Aug 30;11(17):5102. doi: 10.3390/jcm11175102.
Dermoscopy is the visual examination of the skin under a polarized or non-polarized light source. By using dermoscopic equipment, many lesion patterns that are invisible under visible light can be clearly distinguished. Thus, more accurate decisions can be made regarding the treatment of skin lesions. The use of images collected from a dermoscope has both increased the performance of human examiners and allowed the development of deep learning models. The availability of large-scale dermoscopic datasets has allowed the development of deep learning models that can classify skin lesions with high accuracy. However, most dermoscopic datasets contain images that were collected from digital dermoscopic devices, as these devices are frequently used for clinical examination. However, dermatologists also often use non-digital hand-held (optomechanical) dermoscopes. This study presents a dataset consisting of dermoscopic images taken using a mobile phone-attached hand-held dermoscope. Four deep learning models based on the MobileNetV1, MobileNetV2, NASNetMobile, and Xception architectures have been developed to classify eight different lesion types using this dataset. The number of images in the dataset was increased with different data augmentation methods. The models were initialized with weights that were pre-trained on the ImageNet dataset, and then they were further fine-tuned using the presented dataset. The most successful models on the unseen test data, MobileNetV2 and Xception, had performances of 89.18% and 89.64%. The results were evaluated with the 5-fold cross-validation method and compared. Our method allows for automated examination of dermoscopic images taken with mobile phone-attached hand-held dermoscopes.
皮肤镜检查是在偏振或非偏振光源下对皮肤进行的视觉检查。通过使用皮肤镜设备,可以清晰区分许多在可见光下不可见的皮损模式。因此,在皮肤病变的治疗方面可以做出更准确的决策。使用从皮肤镜收集的图像既提高了人类检查者的工作效率,也促进了深度学习模型的发展。大规模皮肤镜数据集的可用性使得能够开发出可以高精度分类皮肤病变的深度学习模型。然而,大多数皮肤镜数据集包含从数字皮肤镜设备收集的图像,因为这些设备经常用于临床检查。然而,皮肤科医生也经常使用非数字手持式(光机械)皮肤镜。本研究展示了一个由使用手机连接的手持式皮肤镜拍摄的皮肤镜图像组成的数据集。基于MobileNetV1、MobileNetV2、NASNetMobile和Xception架构开发了四个深度学习模型,使用该数据集对八种不同的病变类型进行分类。通过不同的数据增强方法增加了数据集中的图像数量。这些模型使用在ImageNet数据集上预训练的权重进行初始化,然后使用所展示的数据集进一步微调。在未见测试数据上最成功的模型MobileNetV2和Xception的性能分别为89.18%和89.64%。结果采用5折交叉验证方法进行评估并比较。我们的方法允许对使用手机连接的手持式皮肤镜拍摄的皮肤镜图像进行自动检查。