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A deep-learning based automatic pulmonary nodule detection system

机译:基于深度学习的自动肺结核检测系统

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Lung cancer is the deadliest cancer worldwide. Early detection of lung cancer is a promising way to lower the risk of dying. Accurate pulmonary nodule detection in computed tomography (CT) images is crucial for early diagnosis of lung cancer. The development of computer-aided detection (CAD) system of pulmonary nodules contributes to making the CT analysis more accurate and with more efficiency. Recent studies from other groups have been focusing on lung cancer diagnosis CAD system by detecting medium to large nodules. However, to fully investigate the relevance between nodule features and cancer diagnosis, a CAD that is capable of detecting nodules with all sizes is needed. In this paper, we present a deep-learning based automatic all size pulmonary nodule detection system by cascading two artificial neural networks. We firstly use a U-net like 3D network to generate nodule candidates from CT images. Then, we use another 3D neural network to refine the locations of the nodule candidates generated from the previous subsystem. With the second sub-system, we bring the nodule candidates closer to the center of the ground truth nodule locations. We evaluate our system on a public CT dataset provided by the Lung Nodule Analysis (LUNA) 2016 grand challenge. The performance on the testing dataset shows that our system achieves 90% sensitivity with an average of 4 false positives per scan. This indicates that our system can be an aid for automatic nodule detection, which is beneficial for lung cancer diagnosis.
机译:肺癌是全世界最致命的癌症。早期检测肺癌是降低死亡风险的有希望的方式。计算机断层扫描(CT)图像中精确的肺结核检测对于早期诊断肺癌是至关重要的。肺结核的计算机辅助检测(CAD)系统的发展有助于使CT分析更准确,效率更高。其他群体的最近研究通过检测培养基到大结节,一直专注于肺癌诊断CAD系统。然而,为了充分调查结节特征和癌症诊断之间的相关性,需要一种能够检测所有尺寸的结节的CAD。在本文中,我们通过级联两个人工神经网络呈现了一种深度学习的自动肺结结检测系统。我们首先使用U-Net等3D网络来从CT图像生成结节候选。然后,我们使用另一个3D神经网络来优化从先前子系统产生的结节候选的位置。通过第二个子系统,我们将结节候选人更接近地面真相结节位置的中心。我们在肺结核分析(Luna)2016年大挑战提供的公共CT数据集上评估我们的系统。测试数据集的性能显示,我们的系统每次扫描平均达到90%的灵敏度,平均为4个误报。这表明我们的系统可以是自动结节检测的辅助,这对肺癌诊断有益。

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