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Pulmonary Nodule Detection in CT Images: False Positive Reduction Using Multi-View Convolutional Networks

机译:CT图像中的肺结节检测:使用多视图卷积网络的假阳性减少

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摘要

We propose a novel Computer-Aided Detection (CAD) system for pulmonary nodules using multi-view convolutional networks (ConvNets), for which discriminative features are automatically learnt from the training data. The network is fed with nodule candidates obtained by combining three candidate detectors specifically designed for solid, subsolid, and large nodules. For each candidate, a set of 2-D patches from differently oriented planes is extracted. The proposed architecture comprises multiple streams of 2-D ConvNets, for which the outputs are combined using a dedicated fusion method to get the final classification. Data augmentation and dropout are applied to avoid overfitting. On 888 scans of the publicly available LIDC-IDRI dataset, our method reaches high detection sensitivities of 85.4% and 90.1% at 1 and 4 false positives per scan, respectively. An additional evaluation on independent datasets from the ANODE09 challenge and DLCST is performed. We showed that the proposed multi-view ConvNets is highly suited to be used for false positive reduction of a CAD system.
机译:我们提出了一种新颖的计算机辅助检测(CAD)系统,该系统使用多视图卷积网络(ConvNets)进行肺结节的识别,可从训练数据中自动识别特征。向网络馈送结瘤候选物,该结瘤候选物是通过组合三个专为实心,亚实心和大结节设计的候选检测器而获得的。对于每个候选者,从不同方向的平面中提取一组二维补丁。所提出的体系结构包括二维ConvNets的多个流,使用专用的融合方法对其输出进行组合以获得最终分类。进行数据扩充和删除可避免过拟合。在公开的LIDC-IDRI数据集的888次扫描中,我们的方法在每次扫描1次和4次假阳性时分别达到85.4%和90.1%的高检测灵敏度。对来自ANODE09挑战和DLCST的独立数据集进行了附加评估。我们表明,提出的多视图ConvNets非常适合用于CAD系统的误报减少。

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