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The effect of kernel size of CNNs for lung nodule classification

机译:CNNs核大小对肺结节分类的影响

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Early detection in lung nodule will be helpful for lung cancer diagnosis. Computer-aided detection (CAD) system to automatic detection of pulmonary nodules is one of the most effective methods to decrease the burden on radiologists where they have to analyze a huge number of thoracic Computed Tomography (CT) scans to find out suspicious nodules. Lung nodule classification is crucial to implement a trustable lung nodule detection system. With the rapid development of deep learning in the field of object recognition, good performance on lung nodules classification has been achieved with Convolutional Neural Network (CNN). In this study, we propose three CNN architectures which are adapted to represent small, normal and large networks. We implement different CNN architectures with various kernel sizes to compare the performances of different combinations of CNN architectures and convolution kernels. The method is evaluated on the public Lung Image Database Consortium (LIDC) dataset of 1018 patients scans. The experiment shows the relation of convolution layers and kernel size has affection on the sensitivity of result in our model. The proposed method achieved a sensitivity of 88.22%~94.18%.
机译:肺结节的早期发现将有助于肺癌的诊断。用于自动检测肺结节的计算机辅助检测(CAD)系统是减轻放射科医生负担的最有效方法之一,放射科医生必须分析大量的胸部CT扫描以发现可疑结节。肺结节分类对于实施可信赖的肺结节检测系统至关重要。随着对象识别领域深度学习的快速发展,卷积神经网络(CNN)在肺结节分类方面取得了良好的性能。在这项研究中,我们提出了三种CNN体系结构,分别适合于代表小型,常规和大型网络。我们实现了具有各种内核大小的不同CNN体系结构,以比较CNN体系结构和卷积内核的不同组合的性能。该方法在1018例患者扫描的公共肺图像数据库协会(LIDC)数据集上进行了评估。实验表明,在我们的模型中,卷积层和内核大小之间的关系会影响结果的敏感性。所提出的方法灵敏度达到了88.22%〜94.18%。

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