Dermatology Department, Wuhan No.1 Hospital, Hubei, China.
Dermatology Hospital of Southern Medical University, Guangzhou, China.
Front Public Health. 2022 Oct 20;10:1034772. doi: 10.3389/fpubh.2022.1034772. eCollection 2022.
Pigmented skin disease is caused by abnormal melanocyte and melanin production, which can be induced by genetic and environmental factors. It is also common among the various types of skin diseases. The timely and accurate diagnosis of pigmented skin disease is important for reducing mortality. Patients with pigmented dermatosis are generally diagnosed by a dermatologist through dermatoscopy. However, due to the current shortage of experts, this approach cannot meet the needs of the population, so a computer-aided system would help to diagnose skin lesions in remote areas containing insufficient experts. This paper proposes an algorithm based on a fusion network for the detection of pigmented skin disease. First, we preprocess the images in the acquired dataset, and then we perform image flipping and image style transfer to augment the images to alleviate the imbalance between the various categories in the dataset. Finally, two feature-level fusion optimization schemes based on deep features are compared with a classifier-level fusion scheme based on a classification layer to effectively determine the best fusion strategy for satisfying the pigmented skin disease detection requirements. Gradient-weighted Class Activation Mapping (Grad_CAM) and Grad_CAM++ are used for visualization purposes to verify the effectiveness of the proposed fusion network. The results show that compared with those of the traditional detection algorithm for pigmented skin disease, the accuracy and Area Under Curve (AUC) of the method in this paper reach 92.1 and 95.3%, respectively. The evaluation indices are greatly improved, proving the adaptability and accuracy of the proposed method. The proposed method can assist clinicians in screening and diagnosing pigmented skin disease and is suitable for real-world applications.
色素性皮肤病是由异常的黑素细胞和黑色素产生引起的,这可能是由遗传和环境因素引起的。它也是各种皮肤疾病中常见的一种。及时准确地诊断色素性皮肤病对于降低死亡率非常重要。皮肤科医生通常通过皮肤镜来诊断患有色素性皮肤病的患者。然而,由于目前专家短缺,这种方法无法满足人口的需求,因此计算机辅助系统将有助于诊断缺乏专家的偏远地区的皮肤病变。本文提出了一种基于融合网络的色素性皮肤病检测算法。首先,我们对采集到的数据集进行预处理,然后进行图像翻转和图像风格转换,以增加图像数量,从而减轻数据集中各类别之间的不平衡。最后,将基于深度特征的两种特征级融合优化方案与基于分类层的分类器级融合方案进行比较,以有效确定最佳融合策略,满足色素性皮肤病检测要求。使用梯度加权类激活映射(Grad_CAM)和 Grad_CAM++进行可视化,以验证所提出的融合网络的有效性。结果表明,与传统的色素性皮肤病检测算法相比,本文方法的准确率和 AUC 分别达到 92.1%和 95.3%。评估指标得到了很大的提高,证明了所提出方法的适应性和准确性。该方法可以帮助临床医生筛查和诊断色素性皮肤病,适用于实际应用。