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3D Convolutional Neural Network for Automatic Detection of Lung Nodules in Chest CT

机译:3D卷积神经网络,用于胸部肺结核肺结节

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Deep convolutional neural networks (CNNs) form the backbone of many state-of-the-art computer vision systems for classification and segmentation of 2D images. The same principles and architectures can be extended to three dimensions to obtain 3D CNNs that are suitable for volumetric data such as CT scans. In this work, we train a 3D CNN for automatic detection of pulmonary nodules in chest CT images using volumes of interest extracted from the LIDC dataset. We then convert the 3D CNN which has a fixed field of view to a 3D fully convolutional network (FCN) which can generate the score map for the entire volume efficiently in a single pass. Compared to the sliding window approach for applying a CNN across the entire input volume, the FCN leads to a nearly 800-fold speed-up, and thereby fast generation of output scores for a single case. This screening FCN is used to generate difficult negative examples that are used to train a new discriminant CNN. The overall system consists of the screening FCN for fast generation of candidate regions of interest, followed by the discrimination CNN.
机译:深度卷积神经网络(CNNS)形成许多最先进的计算机视觉系统的骨干,用于2D图像的分类和分割。可以扩展到相同的原理和架构,以获得适用于诸如CT扫描的体积数据的3D CNN。在这项工作中,我们使用从LIDC数据集中提取的感兴趣的感兴趣的感兴趣的感兴趣的感兴趣训练3D CNN以自动检测胸部CT图像中的肺结节。然后,我们将具有固定视野的3D CNN转换为3D完全卷积网络(FCN),其可以在单个通过中有效地为整个体积产生分数图。与用于在整个输入体积上施加CNN的滑动窗口方法相比,FCN引导到近800倍的加速,从而快速产生单个案例的输出分数。该筛选FCN用于产生用于训练新判别CNN的困难的负例。整体系统包括筛选FCN,用于快速产生候选地区的候选地区,其次是歧视CNN。

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