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Deep Residual 3D U-Net for Joint Segmentation and Texture Classification of Nodules in Lung

机译:用于肺结节的联合分割和纹理分类的深残留3D U-Net

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In this work we present a method for lung nodules segmentation, their texture classification and subsequent follow-up recommendation from the CT image of lung. Our method consists of neural network model based on popular U-Net architecture family but modified for the joint nodule segmentation and its texture classification tasks and an ensemble-based model for the follow-up recommendation. This solution was evaluated within the LNDb 2020 medical imaging challenge and produced the best nodule segmentation result on the final leaderboard.
机译:在这项工作中,我们提出了一种从肺部CT图像中进行肺结节分割,纹理分类和后续随访建议的方法。我们的方法包括基于流行的U-Net架构族但针对关节结节分割及其纹理分类任务进行了修改的神经网络模型,以及用于后续推荐的基于集合的模型。在LNDb 2020医学成像挑战赛中对该解决方案进行了评估,并在最终的排行榜上产生了最佳的结节分割结果。

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