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Deepnodule: Multi-Task Learning of Segmentation Bootstrap for Pulmonary Nodule Detection

机译:DeepNodule:肺结核检测分割引导的多任务学习

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Pulmonary nodule detection and segmentation are the necessary successively steps in lung cancer screening with low-dose computed tomography (CT) scans. However, the state-of-the-art models focus on solving tasks separately, thereby ignore the correlation between each task. Besides, most nodule detectors adopt anchor-based method falling to achieve good performance in low FPs per scan. To overcome those barriers, we present a novel multi-task 3D convolutional network (DeepNodule) for simultaneous nodule detection and segmentation in a shared-and-fined manner. Meanwhile, we utilize the center-point of the predicted segmentation masks to refine the bounding box coordinate and get a more precise nodule location. Furthermore, we design a 3D Gated Channel Transformation convolutional attention block for learning nodule features better. Experiments conducted on LUNA16 dataset demonstrates that DeepNodule obtains competitive performance, with the sensitivity of nodule candidate detection achieving 92.0%, and the accuracy of nodule segmentation reaching 80.04%.
机译:肺结结检测和分割是肺癌筛选中的必要步骤,具有低剂量计算断层扫描(CT)扫描。然而,最先进的模型专注于分别解决任务,从而忽略每个任务之间的相关性。此外,大多数结节探测器采用基于锚的方法落下,以在每次扫描的低FPS中实现良好的性能。为了克服这些障碍,我们提出了一种新的多任务3D卷积网络(Deepnodule),用于以共享和罚款的方式同时结节检测和分段。同时,我们利用预测分割掩模的中心点来改进边界盒坐标并获得更精确的结节位置。此外,我们设计了一个3D门控通道转换卷积注意力,用于学习结节功能更好。在Luna16 Dataset上进行的实验表明,Deadnodule获得竞争性能,具有结节候选检测的敏感性,实现92.0%,结节分割的准确性达到80.04%。

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