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Contextual Convolutional Neural Networks for Lung Nodule Classification Using Gaussian Weighted Average Image Patches

机译:使用高斯加权平均图像贴片的肺结核分类的背景卷积神经网络

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Lung cancer is the most common cause of cancer-related death. To diagnose lung cancers in early stages, numerous studies and approaches have been developed for cancer screening with computed tomography (CT) imaging. In recent years, convolutional neural networks (CNN) have become one of the most common and reliable techniques in computer aided detection (CADe) and diagnosis (CADx) by achieving state-of-the-art-level performances for various tasks. In this study, we propose a CNN classification system for false positive reduction of initially detected lung nodule candidates. First, image patches of lung nodule candidates are extracted from CT scans to train a CNN classifier. To reflect the volumetric contextual information of lung nodules to 2D image patch, we propose a weighted average image patch (WAIP) generation by averaging multiple slice images of lung nodule candidates. Moreover, to emphasize central slices of lung nodules, slice images are locally weighted according to Gaussian distribution and averaged to generate the 2D WAIP. With these extracted patches, 2D CNN is trained to achieve the classification of WAIPs of lung nodule candidates into positive and negative labels. We used LUNA 2016 public challenge database to validate the performance of our approach for false positive reduction in lung CT nodule classification. Experiments show our approach improves the classification accuracy of lung nodules compared to the baseline 2D CNN with patches from single slice image.
机译:肺癌是癌症相关死亡的最常见原因。为了诊断早期阶段的肺癌,已经开发了具有计算断层扫描(CT)成像的癌症筛查的许多研究和方法。近年来,通过实现各种任务的最新级性能,卷积神经网络(CNN)已成为计算机辅助检测(CADE)和诊断(CADX)中最常见和可靠的技术之一。在这项研究中,我们提出了一种用于初始检测到的肺结节候选的假阳性降低的CNN分类系统。首先,从CT扫描中提取肺结节候选物的图像斑块,以训练CNN分类器。为了反映肺结核的体积上下文信息至2D图像贴片,我们通过平均肺结节候选的多个切片图像提出加权平均图像贴片(WAIP)生成。此外,为了强调中央切片的肺结节,切片图像根据高斯分布局部加权,并平均以产生2D磁石。利用这些提取的贴剂,培训2D CNN以实现肺结核候选物的易甲酸中的分类成正面和负标记。我们使用了Luna 2016公共挑战数据库,以验证我们对肺CT结节分类的假阳性降低的方法的性能。实验表明,与来自单个切片图像的斑块的基线2D CNN相比,我们的方法提高了肺结节的分类准确性。

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