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A deep learning-shape driven level set synergism for pulmonary nodule segmentation

机译:用于肺结节分割的深度学习形状驱动水平集协同

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摘要

Accurate pulmonary nodule segmentation, an essential pre-requisite in every computer-aided diagnosis (CAD) system, significantly helps in the risk assessment of lung cancer. In this paper, we propose a synergistic combination of deep learning and shape driven level sets for automated and accurate lung nodule segmentation. A coarse-to-fine solution is adopted, where, a deep fully convolutional network is employed to obtain coarse segmentation. To achieve fine segmentation, shape driven evolution of level sets is designed. The seed points for initializing the level sets are obtained from the coarse segmentation of deep network in an automated manner. Perimeter and circularity of the evolving contours are employed for guiding the evolution of level sets. Experiments on the publicly available LIDC/IDRI dataset clearly reveal that our method outperforms several state-of-the-art competitors as well as its constituent parts, i.e., deep network and level set, when applied in isolation. (C) 2019 Elsevier B.V. All rights reserved.
机译:准确的肺结节分割是每个计算机辅助诊断(CAD)系统中必不可少的先决条件,极大地有助于肺癌的风险评估。在本文中,我们提出了深度学习和形状驱动水平集的协同组合,以实现自动和准确的肺结节分割。采用了从粗到精的解决方案,其中,使用深的全卷积网络来获得粗分割。为了实现精细分割,设计了形状驱动的水平集演变。用于初始化级别集的种子点可以通过自动方式从深度网络的粗略分割中获得。不断变化的轮廓线的周长和圆度用于指导水平集的演化。在公开可用的LIDC / IDRI数据集上进行的实验清楚地表明,当单独应用时,我们的方法优于几个最先进的竞争对手及其组成部分(即深层网络和级别集)。 (C)2019 Elsevier B.V.保留所有权利。

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