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Representation of Deep Features using Radiologist defined Semantic Features

机译:使用放射科医生定义的语义特征表示深层特征

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Semantic features are common radiological traits used to characterize a lesion by a trained radiologist. These features have been recently formulated, quantified on a point scale in the context of lung nodules by our group. Certain radiological semantic traits have been shown to extremely predictive of malignancy [26]. Semantic traits observed by a radiologist at examination describe the nodules and the morphology of the lung nodule shape, size, border, attachment to vessel or pleural wall, location and texture etc. Deep features are numeric descriptors often obtained from a convolutional neural network (CNN) which are widely used for classification and recognition. Deep features may contain information about texture and shape, primarily. Lately, with the advancement of deep learning, convolutional neural networks (CNN) are also being used to analyze lung nodules. In this study, we relate deep features to semantic features by looking for similarity in ability to classify. Deep features were obtained using a transfer learning approach from both an ImageNet pre-trained CNN and our trained CNN architecture. We found that some of the semantic features can be represented by one or more deep features. In this process, we can infer that some deep feature(s) have similar discriminatory ability as semantic features.
机译:语义特征是受过训练的放射科医生用来表征病变的常见放射学特征。这些特征是我们小组最近制定的,在肺结节的背景下以点规模量化。某些放射学语义特征已显示出对恶性肿瘤的高度预测[26]。放射科医生在检查时观察到的语义特征描述了结核的结节和形态,大小,边界,与血管或胸膜壁的附着,位置和质地等。深部特征通常是从卷积神经网络(CNN)获得的数字描述符),广泛用于分类和识别。深层特征可能主要包含有关纹理和形状的信息。最近,随着深度学习的发展,卷积神经网络(CNN)也被用于分析肺结节。在这项研究中,我们通过寻找分类能力的相似性将深层特征与语义特征联系起来。使用转移学习方法从ImageNet预先训练的CNN和我们训练有素的CNN架构中获得了深层功能。我们发现某些语义特征可以由一个或多个深层特征表示。在此过程中,我们可以推断出某些深层特征具有与语义特征相似的区分能力。

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