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3D fully convolutional network-based segmentation of lung nodules in CT images with a clinically inspired data synthesis method

机译:3D基于全卷积网络的CT图像中的肺结节细分,具有临床启发数据合成方法

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In the management of lung nodules, it is important to precisely assess nodule size on computed tomography (CT) images. Given that the malignancy of nodules varies according to their composition, component-wise assessment is useful for diagnosing lung cancer. To improve the accuracy of volumetric measurement of lung nodules, we propose a deep learning-based method for segmenting nodules into multiple components, namely, solid, ground glass opacity (GGO), and cavity. We train a 3D fully convolutional network (FCN) with component-wise dice loss and apply a conditional random field (CRF) to refine the segmentation boundaries. To further gain the accuracy, we artificially generate synthetic cavitary nodules based on clinical observations and then augment the dataset for training the network. In experiments using about 300 CT images of clinical nodules, we evaluated our method in terms of mean absolute percentage error of volumetric measurement. We confirmed that our method achieved 15.84% lower error (averaged over 2 components of solid and GGO) compared with a conventional method based on image processing, and the error for cavity was decreased by 2.87% with our data-synthesis method.
机译:在肺结节的管理中,重要的是精确地评估计算断层扫描(CT)图像上的结节大小。鉴于结节的恶性肿瘤因其组成而变化,组分 - 明智评估可用于诊断肺癌。为了提高肺结节体积测量的准确性,我们提出了一种基于深度学习的方法,用于将结节分割成多个组分,即固体,磨碎的玻璃透明度(GGO)和腔。我们用组件 - 明智的骰子丢失训练3D完全卷积的网络(FCN),并应用条件随机字段(CRF)以优化分割边界。为了进一步提高准确性,我们基于临床观察,人工生成了合成空腔结节,然后增加了用于训练网络的数据集。在使用约300ct的临床结节图像的实验中,我们在体积测量的平均绝对百分比误差方面评估了我们的方法。我们确认,与基于图像处理的常规方法相比,我们的方法达到了15.84%的误差(平均固体和GGO组分),并且通过我们的数据合成方法减少了2.87%的腔误差。

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