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基于图像分解和迁移学习的乳腺超声病变分类

Breast ultrasound lesion classification based on image decomposition and transfer learning.

作者信息

Zhuang Zhemin, Kang Yuqiang, Joseph Raj Alex Noel, Yuan Ye, Ding Wanli, Qiu Shunmin

机构信息

Key Laboratory of Digital Signal and Image Processing of Guangdong Province, Department of Electronic Engineering, Shantou University, Shantou, Guangdong, China.

Imaging Department, First Hospital of Medical College of Shantou University, Shantou, Guangdong, China.

出版信息

Med Phys. 2020 Dec;47(12):6257-6269. doi: 10.1002/mp.14510. Epub 2020 Oct 20.

Abstract

PURPOSE

In medical image analysis, deep learning has great application potential. Discovering a method for extracting valuable information from medical images and integrating that information closely with medical treatment has recently become a major topic of interest. Because obtaining large volumes of breast lesion ultrasound image data is difficult, transfer learning is usually employed to obtain benign and malignant classification of breast lesions. However, because of blurred unclear regions of interest in breast lesion ultrasound images and severe speckle noise interference, convolutional neural networks have proven ineffective in extracting features, thus providing unreliable classification results.

METHODS

This study employs image decomposition to obtain fuzzy enhanced and bilateral filtered images to enrich input information of breast lesions. Fuzzy enhanced, bilateral filtered, and original ultrasound images comprise multifeature data, which are presented as inputs to a pre-trained model to realize knowledge fusion. Therefore, effective features of breast lesions are extracted and then used to train fully connected layers with ground truths provided by a doctor to accomplish the classification.

RESULTS

A pre-trained VGG16 model was used to extract features from multifeature data, and these features were fused to train the fully connected layers to realize classification. The performance score reported is as follows: accuracy of 93%, sensitivity of 95%, specificity of 88%, F1 score of 0.93, and AUC of 0.97.

CONCLUSIONS

Compared with using a single original ultrasound image for feature extraction, multifeature data based on image decomposition enables the pre-trained model to extract more relevant features, thereby providing better classification results than those from traditional transfer learning techniques.

摘要

目的

在医学图像分析中,深度学习具有巨大的应用潜力。近年来,探索从医学图像中提取有价值信息并将该信息与医学治疗紧密结合的方法已成为一个主要的研究热点。由于获取大量乳腺病变超声图像数据较为困难,通常采用迁移学习来实现乳腺病变的良恶性分类。然而,由于乳腺病变超声图像中感兴趣区域模糊不清以及严重的斑点噪声干扰,卷积神经网络在提取特征方面已被证明效果不佳,从而导致分类结果不可靠。

方法

本研究采用图像分解来获取模糊增强和双边滤波后的图像,以丰富乳腺病变的输入信息。模糊增强、双边滤波后的图像以及原始超声图像构成多特征数据,将其作为输入提供给预训练模型以实现知识融合。因此,提取乳腺病变的有效特征,然后利用医生提供的真实数据训练全连接层以完成分类。

结果

使用预训练的VGG16模型从多特征数据中提取特征,并将这些特征融合以训练全连接层来实现分类。报告的性能得分如下:准确率为93%,灵敏度为95%,特异性为88%,F1得分为0.93,AUC为0.97。

结论

与使用单一原始超声图像进行特征提取相比,基于图像分解的多特征数据能使预训练模型提取更多相关特征,从而提供比传统迁移学习技术更好的分类结果。

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