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Deep Convolutional Nets for Pulmonary Nodule Detection and Classification

机译:用于肺结节检测和分类的深卷积网

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In this study, a novel pulmonary nodule detection and classification system with 2D convolutional neural networks is proposed. The objective is to effectively address the challenges in lung cancer diagnosis and early treatment. The system consists of two stages: nodule detection and false positive reduction. For nodule detection, we introduce a detection framework based on Faster R-CNN, which integrates a deconvolution layer to enlarge the feature map and two region proposal networks to concatenate the useful information from the lower layer. In order to ensure high sensitivity, the conditions at this stage are simple and loose. Therefore, a boosting architecture based on 2D CNNs is designed for false positive reduction. In order to improve classification accuracy, every training model pays attention to those data that are not easy to classify. In experiments, our method is conducted on LUNA 16 challenge. The sensitivity of nodule candidate detection achieves 86.42%. For false positive reduction, sensitivities of 73.4% and 74.4% at 1/8 and 1/4 false positives per scan are obtained, respectively. It proves that our method can maintain a satisfactory sensitivity even with extremely low false positive rates.
机译:在这项研究中,提出了一种新型的带有二维卷积神经网络的肺结节检测和分类系统。目的是有效应对肺癌诊断和早期治疗中的挑战。该系统包括两个阶段:结节检测和假阳性减少。对于结节检测,我们引入了基于Faster R-CNN的检测框架,该框架集成了一个反卷积层以扩大特征图,并集成了两个区域建议网络以连接来自下层的有用信息。为了确保高灵敏度,此阶段的条件是简单且宽松的。因此,基于2D CNN的增强架构被设计用于误报减少。为了提高分类的准确性,每个训练模型都要注意那些不容易分类的数据。在实验中,我们的方法是针对LUNA 16挑战进行的。结节候选检测的灵敏度达到86.42%。对于假阳性减少,每次扫描分别在1/8和1/4假阳性时灵敏度分别为73.4%和74.4%。证明了我们的方法即使在极低的假阳性率下也能保持令人满意的灵敏度。

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