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基于双分支网络的临床皮肤病变分类

Classification of clinical skin lesions with double-branch networks.

作者信息

Wang Hui, Qi Qianqian, Sun Weijia, Li Xue, Yao Chunli

机构信息

College of Computer Science and Engineering, Changchun University of Technology, Changchun, China.

Department of Dermatology, The Second Hospital of Jilin University, Changchun, China.

出版信息

Front Med (Lausanne). 2023 Jun 9;10:1114362. doi: 10.3389/fmed.2023.1114362. eCollection 2023.

Abstract

INTRODUCTION

Malignant skin lesions pose a great threat to the health of patients. Due to the limitations of existing diagnostic techniques, such as poor accuracy and invasive operations, malignant skin lesions are highly similar to other skin lesions, with low diagnostic efficiency and high misdiagnosis rates. Automatic medical image classification using computer algorithms can effectively improve clinical diagnostic efficiency. However, existing clinical datasets are sparse and clinical images have complex backgrounds, problems with noise interference such as light changes and shadows, hair occlusions, etc. In addition, existing classification models lack the ability to focus on lesion regions in complex backgrounds.

METHODS

In this paper, we propose a DBN (double branch network) based on a two-branch network model that uses a backbone with the same structure as the original network branches and the fused network branches. The feature maps of each layer of the original network branch are extracted by our proposed CFEBlock (Common Feature Extraction Block), the common features of the feature maps between adjacent layers are extracted, and then these features are combined with the feature maps of the corresponding layers of the fusion network branch by FusionBlock, and finally the total prediction results are obtained by weighting the prediction results of both branches. In addition, we constructed a new dataset CSLI (Clinical Skin Lesion Images) by combining the publicly available dataset PAD-UFES-20 with our collected dataset, the CSLI dataset contains 3361 clinical dermatology images for six disease categories: actinic keratosis (730), cutaneous basal cell carcinoma (1136), malignant melanoma (170) cutaneous melanocytic nevus (391), squamous cell carcinoma (298) and seborrheic keratosis (636).

RESULTS

We divided the CSLI dataset into a training set, a validation set and a test set, and performed accuracy, precision, sensitivity, specificity, f1score, balanced accuracy, AUC summary, visualisation of different model training, ROC curves and confusion matrix for various diseases, ultimately showing that the network performed well overall on the test data.

DISCUSSION

The DBN contains two identical feature extraction network branches, a structure that allows shallow feature maps for image classification to be used with deeper feature maps for information transfer between them in both directions, providing greater flexibility and accuracy and enhancing the network's ability to focus on lesion regions. In addition, the dual branch structure of DBN provides more possibilities for model structure modification and feature transfer, and has great potential for development.

摘要

引言

恶性皮肤病变对患者健康构成巨大威胁。由于现有诊断技术存在局限性,如准确性差和侵入性操作等,恶性皮肤病变与其他皮肤病变极为相似,诊断效率低且误诊率高。利用计算机算法进行自动医学图像分类可有效提高临床诊断效率。然而,现有的临床数据集稀疏,临床图像背景复杂,存在诸如光照变化和阴影等噪声干扰问题、毛发遮挡等。此外,现有的分类模型缺乏在复杂背景下聚焦病变区域的能力。

方法

在本文中,我们基于双分支网络模型提出了一种深度信念网络(DBN),该模型使用与原始网络分支和融合网络分支结构相同的主干。原始网络分支各层的特征图由我们提出的CFEBlock(通用特征提取块)提取,提取相邻层特征图之间的共同特征,然后通过FusionBlock将这些特征与融合网络分支相应层的特征图相结合,最后通过对两个分支的预测结果进行加权得到总预测结果。此外,我们通过将公开可用的数据集PAD-UFES-20与我们收集的数据集相结合,构建了一个新的数据集CSLI(临床皮肤病变图像),CSLI数据集包含3361张临床皮肤科图像,涵盖六种疾病类别:光化性角化病(730张)、皮肤基底细胞癌(1136张)、恶性黑色素瘤(170张)、皮肤黑素细胞痣(391张)、鳞状细胞癌(298张)和脂溢性角化病(636张)。

结果

我们将CSLI数据集划分为训练集、验证集和测试集,并针对各种疾病进行了准确率、精确率、灵敏度、特异性、F1分数、平衡准确率、AUC汇总、不同模型训练的可视化、ROC曲线和混淆矩阵分析,最终表明该网络在测试数据上总体表现良好。

讨论

DBN包含两个相同的特征提取网络分支,这种结构允许用于图像分类的浅层特征图与用于在它们之间进行双向信息传递的深层特征图一起使用,提供了更大灵活性和准确性,并增强了网络聚焦病变区域的能力。此外,DBN的双分支结构为模型结构修改和特征传递提供了更多可能性,具有很大的发展潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d42d/10288876/d94bddc66533/fmed-10-1114362-g0001.jpg

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