首页> 外文期刊>Informatics in Medicine Unlocked >Hybrid classification of diffuse liver diseases in ultrasound images using deep convolutional neural networks
【24h】

Hybrid classification of diffuse liver diseases in ultrasound images using deep convolutional neural networks

机译:利用深卷积神经网络杂交肝病弥漫性肝病的杂化分类

获取原文
           

摘要

Despite the fact that liver biopsy is considered to be the gold standard for detecting diffuse liver diseases, it is an invasive method with numerous side effects. Diffuse liver diagnosis using ultrasound imaging may be influenced by Physician subjectivity. Therefore, an accurate classification of liver diseases remains a notable demand. In this study, to categorize the liver status, a novel deep classifier, comprised of pre-trained deep convolutional neural networks (CNNs) is proposed. Several networks, namely ResNeXt, ResNet18, ResNet34, ResNet50, and AlexNet which concatenated with fully connected networks (FCNs) are used. Extracted deep features using transfer learning can provide sufficient classification information. An FCN can then put images into different states of the disease, namely normal liver, liver hepatitis, and cirrhosis. Two-class (normal/cirrhosis, normal/hepatitis, and cirrhosis/hepatitis) and three-class (normal/cirrhosis/hepatitis) classifiers were trained to distinguish these liver images. Since two-class classifiers showed better performance compared to the three-class classifiers, a hybrid classifier is proposed so as to integrate the weighted probabilities of the classes obtained by means of each individual classifier. Then, a majority voting strategy is employed to select the class with a higher score. The experimental results show an accuracy of 86.4% using ResNet50 with a hybrid classifier for liver images which were classified into three classes. In the distinction between normal and cirrhosis liver as well as normal and hepatitis liver, the results demonstrate the sensitivity and specificity of the first group to be 90.9% and 86.4% and the latter group shows the sensitivity of 90.9%, and specificity of 81.8%.
机译:尽管肝脏活检被认为是检测弥漫性肝脏疾病的黄金标准,但它是一种具有许多副作用的侵入方法。使用超声成像的弥漫性肝脏诊断可能受到医师主体性的影响。因此,准确分类肝病仍然是一个值得注意的需求。在本研究中,提出对肝脏地位进行分类,提出了一种由预先训练的深卷积神经网络(CNN)的新型深度分类器。使用若干网络,即Resnext,Reset18,Resnet34,Reset50和与完全连接的网络(FCN)连接的alexNet。利用转移学习提取的深度特征可以提供足够的分类信息。然后,FCN可以将图像放入疾病的不同状态,即正常的肝,肝肝炎和肝硬化。培训两类(正常/肝硬化,正常/肝炎和肝炎)和三类(正常/肝硬化/肝炎)分类器,以区分这些肝脏图像。由于两流的分类器与三类分类器相比显示出更好的性能,因此提出了一种混合分类器,以便集成借助于每个单独分类器获得的类的加权概率。然后,使用大多数投票策略来选择具有更高分数的课程。实验结果表明,使用Reset50的精度为86.4%,具有用于肝脏图像的混合分类器,其分为三类。在正常和肝硬化肝脏以及正常和肝炎肝之间的区分中,结果证明了第一组的敏感性和特异性为90.9%和86.4%,后者组显示了90.9%的敏感性,特异性为81.8% 。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号