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一种基于皮肤病变图像的黑色素瘤分割与分类的新型多任务学习网络。

A Novel Multi-Task Learning Network Based on Melanoma Segmentation and Classification with Skin Lesion Images.

作者信息

Alenezi Fayadh, Armghan Ammar, Polat Kemal

机构信息

Department of Electrical Engineering, College of Engineering, Jouf University, Sakaka 72388, Saudi Arabia.

Department of Electrical and Electronics Engineering, Bolu Abant Izzet Baysal University, Bolu 14280, Turkey.

出版信息

Diagnostics (Basel). 2023 Jan 10;13(2):262. doi: 10.3390/diagnostics13020262.

Abstract

Melanoma is known worldwide as a malignant tumor and the fastest-growing skin cancer type. It is a very life-threatening disease with a high mortality rate. Automatic melanoma detection improves the early detection of the disease and the survival rate. In accordance with this purpose, we presented a multi-task learning approach based on melanoma recognition with dermoscopy images. Firstly, an effective pre-processing approach based on max pooling, contrast, and shape filters is used to eliminate hair details and to perform image enhancement operations. Next, the lesion region was segmented with a VGGNet model-based FCN Layer architecture using enhanced images. Later, a cropping process was performed for the detected lesions. Then, the cropped images were converted to the input size of the classifier model using the very deep super-resolution neural network approach, and the decrease in image resolution was minimized. Finally, a deep learning network approach based on pre-trained convolutional neural networks was developed for melanoma classification. We used the International Skin Imaging Collaboration, a publicly available dermoscopic skin lesion dataset in experimental studies. While the performance measures of accuracy, specificity, precision, and sensitivity, obtained for segmentation of the lesion region, were produced at rates of 96.99%, 92.53%, 97.65%, and 98.41%, respectively, the performance measures achieved rates for classification of 97.73%, 99.83%, 99.83%, and 95.67%, respectively.

摘要

黑色素瘤作为一种恶性肿瘤和增长最快的皮肤癌类型,在全球范围内广为人知。它是一种极具生命威胁的疾病,死亡率很高。黑色素瘤的自动检测有助于提高该疾病的早期检测率和生存率。基于这一目的,我们提出了一种基于皮肤镜图像黑色素瘤识别的多任务学习方法。首先,使用基于最大池化、对比度和形状滤波器的有效预处理方法来消除毛发细节并进行图像增强操作。接下来,使用增强后的图像,通过基于VGGNet模型的全卷积网络(FCN)层架构对病变区域进行分割。随后,对检测到的病变进行裁剪处理。然后,使用超深超分辨率神经网络方法将裁剪后的图像转换为分类器模型的输入大小,并将图像分辨率的降低最小化。最后,开发了一种基于预训练卷积神经网络的深度学习网络方法用于黑色素瘤分类。在实验研究中,我们使用了国际皮肤成像协作组织提供的一个公开可用的皮肤镜皮肤病变数据集。病变区域分割的准确率、特异性、精确率和敏感度的性能指标分别为96.99%、92.53%、97.65%和98.41%,而分类的性能指标分别达到了97.73%、99.83%、99.83%和95.67%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/15c6/9857507/c169865dd3b4/diagnostics-13-00262-g001.jpg

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