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Deep Transfer Learning for Modality Classification of Medical Images

机译:深度转移学习对医学图像的模式分类

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Medical images are valuable for clinical diagnosis and decision making. Image modality is an important primary step, as it is capable of aiding clinicians to access required medical image in retrieval systems. Traditional methods of modality classification are dependent on the choice of hand-crafted features and demand a clear awareness of prior domain knowledge. The feature learning approach may detect efficiently visual characteristics of different modalities, but it is limited to the number of training datasets. To overcome the absence of labeled data, on the one hand, we take deep convolutional neural networks (VGGNet, ResNet) with different depths pre-trained on ImageNet, fix most of the earlier layers to reserve generic features of natural images, and only train their higher-level portion on ImageCLEF to learn domain-specific features of medical figures. Then, we train from scratch deep CNNs with only six weight layers to capture more domain-specific features. On the other hand, we employ two data augmentation methods to help CNNs to give the full scope to their potential characterizing image modality features. The final prediction is given by our voting system based on the outputs of three CNNs. After evaluating our proposed model on the subfigure classification task in ImageCLEF2015 and ImageCLEF2016, we obtain new, state-of-the-art results—76.87% in ImageCLEF2015 and 87.37% in ImageCLEF2016—which imply that CNNs, based on our proposed transfer learning methods and data augmentation skills, can identify more efficiently modalities of medical images.
机译:医学图像对于临床诊断和决策很有价值。图像模态是重要的首要步骤,因为它可以帮助临床医生访问检索系统中所需的医学图像。模态分类的传统方法取决于手工制作特征的选择,并要求对先验领域知识有清楚的认识。特征学习方法可以有效地检测不同模态的视觉特征,但仅限于训练数据集的数量。为了克服缺少标签数据的问题,一方面,我们采用在ImageNet上预先训练了不同深度的深度卷积神经网络(VGGNet,ResNet),修复了大多数较早的层以保留自然图像的通用特征,并且仅进行训练在ImageCLEF上的高级部分,以学习医学领域特定领域的功能。然后,我们从头开始训练只有六个权重层的深层CNN,以捕获更多特定于域的功能。另一方面,我们采用了两种数据增强方法来帮助CNN充分发挥其潜在的表征图像形态特征的作用。我们的投票系统根据三个CNN的输出给出最终的预测。在针对ImageCLEF2015和ImageCLEF2016中的子图形分类任务评估了我们提出的模型之后,我们获得了最新的最新结果(ImageCLEF2015中为76.87%,ImageCLEF2016中为87.37%),这表明基于我们提出的转移学习方法的CNN和数据增强技能,可以更有效地识别医学图像的形式。

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