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Pulmonary Nodule Classification with Deep Convolutional Neural Networks on Computed Tomography Images

机译:深度卷积神经网络在计算机断层扫描图像上的肺结节分类

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摘要

Computer aided detection (CAD) systems can assist radiologists by offering a second opinion on early diagnosis of lung cancer. Classification and feature representation play critical roles in false-positive reduction (FPR) in lung nodule CAD. We design a deep convolutional neural networks method for nodule classification, which has an advantage of autolearning representation and strong generalization ability. A specified network structure for nodule images is proposed to solve the recognition of three types of nodules, that is, solid, semisolid, and ground glass opacity (GGO). Deep convolutional neural networks are trained by 62,492 regions-of-interest (ROIs) samples including 40,772 nodules and 21,720 nonnodules from the Lung Image Database Consortium (LIDC) database. Experimental results demonstrate the effectiveness of the proposed method in terms of sensitivity and overall accuracy and that it consistently outperforms the competing methods.
机译:计算机辅助检测(CAD)系统可以通过对肺癌的早期诊断提供第二种意见来帮助放射科医生。分类和特征表示在肺结节CAD的假阳性减少(FPR)中起关键作用。我们设计了一种用于结节分类的深度卷积神经网络方法,该方法具有自动学习表示和推广能力强的优点。提出了一种针对结节图像的指定网络结构,以解决对三种类型结节的识别,即固态,半固态和毛玻璃不透明(GGO)。深度卷积神经网络由来自肺图像数据库协会(LIDC)数据库的62,492个感兴趣区域(ROI)样本进行训练,其中包括40,772个结节和21,720个非结节。实验结果证明了该方法在灵敏度和总体准确性方面的有效性,并且始终优于竞争方法。

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