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NoduleNet: Decoupled False Positive Reduction for Pulmonary Nodule Detection and Segmentation

机译:NoduleNet:用于肺结节检测和分割的去耦假阳性还原

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Pulmonary nodule detection, false positive reduction and segmentation represent three of the most common tasks in the computer aided analysis of chest CT images. Methods have been proposed for each task with deep learning based methods heavily favored recently. However training deep learning models to solve each task separately may be sub-optimal - resource intensive and without the benefit of feature sharing. Here, we propose a new end-to-end 3D deep convolutional neural net (DCNN), called NoduleNet, to solve nodule detection, false positive reduction and nodule segmentation jointly in a multi-task fashion. To avoid friction between different tasks and encourage feature diversification, we incorporate two major design tricks: (1) decoupled feature maps for nodule detection and false positive reduction, and (2) a segmentation refinement subnet for increasing the precision of nodule segmentation. Extensive experiments on the large-scale LIDC dataset demonstrate that the multi-task training is highly beneficial, improving the nodule detection accuracy by 10.27%, compared to the baseline model trained to only solve the nodule detection task. We also carry out systematic ablation studies to highlight contributions from each of the added components. Code is available at https://github.com/uci-cbcl/NoduleNet.
机译:肺结节检测,假阳性减少和分割是胸部CT图像计算机辅助分析中最常见的三个任务。已经提出了针对每个任务的方法,而基于深度学习的方法近来受到广泛青睐。但是,训练深度学习模型以分别解决每个任务可能不是最佳选择-资源密集型且没有特征共享的好处。在这里,我们提出了一种新的端到端3D深卷积神经网络(DCNN),称为NoduleNet,以多任务方式联合解决结节检测,假阳性减少和结节分割。为了避免不同任务之间的摩擦并鼓励特征多样化,我们采用了两个主要的设计技巧:(1)解耦特征图以进行结节检测和假阳性减少;(2)分段细化子网以提高结节分割的精度。在大规模LIDC数据集上进行的大量实验表明,与仅训练结节检测任务的基线模型相比,多任务训练非常有益,将结节检测准确性提高了10.27%。我们还将进行系统的消融研究,以突出显示每个附加组件的贡献。可从https://github.com/uci-cbcl/NoduleNet获得代码。

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