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Explaining Deep Features Using Radiologist-Defined Semantic Features and Traditional Quantitative Features

机译:使用放射科医师定义的语义特征和传统定量特征解释深层特征

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摘要

Quantitative features are generated from a tumor phenotype by various data characterization, feature-extraction approaches and have been used successfully as a biomarker. These features give us information about a nodule, for example, nodule size, pixel intensity, histogram-based information, and texture information from wavelets or a convolution kernel. Semantic features, on the other hand, can be generated by an experienced radiologist and consist of the common characteristics of a tumor, for example, location of a tumor, fissure, or pleural wall attachment, presence of fibrosis or emphysema, concave cut on nodule surface. These features have been derived for lung nodules by our group. Semantic features have also shown promise in predicting malignancy. Deep features from images are generally extracted from the last layers before the classification layer of a convolutional neural network (CNN). By training with the use of different types of images, the CNN learns to recognize various patterns and textures. But when we extract deep features, there is no specific naming approach for them, other than denoting them by the feature column number (position of a neuron in a hidden layer). In this study, we tried to relate and explain deep features with respect to traditional quantitative features and semantic features. We discovered that 26 deep features from the Vgg-S neural network and 12 deep features from our trained CNN could be explained by semantic or traditional quantitative features. From this, we concluded that those deep features can have a recognizable definition via semantic or quantitative features.
机译:定量特征是通过各种数据表征,特征提取方法从肿瘤表型产生的,并已成功地用作生物标记。这些功能为我们提供了有关结节的信息,例如结节大小,像素强度,基于直方图的信息以及来自小波或卷积核的纹理信息。另一方面,语义特征可以由经验丰富的放射科医生生成,并由肿瘤的共同特征组成,例如,肿瘤的位置,裂隙或胸膜壁附着,纤维化或肺气肿的存在,结节上的凹形切口表面。这些特征是我们小组针对肺结节得出的。语义特征在预测恶性肿瘤方面也显示出了希望。通常从卷积神经网络(CNN)的分类层之前的最后一层提取图像的深层特征。通过使用不同类型的图像进行训练,CNN学会了识别各种图案和纹理。但是,当我们提取深层特征时,除了用特征列号(隐藏层中神经元的位置)表示它们之外,没有针对它们的特定命名方法。在这项研究中,我们试图就传统的定量特征和语义特征来关联和解释深层特征。我们发现,Vgg-S神经网络的26个深度特征和我们训练有素的CNN的12个深度特征可以用语义或传统的定量特征来解释。据此,我们得出结论,这些深层特征可以通过语义或定量特征得到可识别的定义。

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