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首页> 外文期刊>BMC Medical Imaging >Classification of lung nodules in CT scans using three-dimensional deep convolutional neural networks with a checkpoint ensemble method
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Classification of lung nodules in CT scans using three-dimensional deep convolutional neural networks with a checkpoint ensemble method

机译:使用检查点集成方法的三维深度卷积神经网络对CT扫描中的肺结节进行分类

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摘要

Accurately detecting and examining lung nodules early is key in diagnosing lung cancers and thus one of the best ways to prevent lung cancer deaths. Radiologists spend countless hours detecting small spherical-shaped nodules in computed tomography (CT) images. In addition, even after detecting nodule candidates, a considerable amount of effort and time is required for them to determine whether they are real nodules. The aim of this paper is to introduce a high performance nodule classification method that uses three dimensional deep convolutional neural networks (DCNNs) and an ensemble method to distinguish nodules between non-nodules. In this paper, we use a three dimensional deep convolutional neural network (3D DCNN) with shortcut connections and a 3D DCNN with dense connections for lung nodule classification. The shortcut connections and dense connections successfully alleviate the gradient vanishing problem by allowing the gradient to pass quickly and directly. Connections help deep structured networks to obtain general as well as distinctive features of lung nodules. Moreover, we increased the dimension of DCNNs from two to three to capture 3D features. Compared with shallow 3D CNNs used in previous studies, deep 3D CNNs more effectively capture the features of spherical-shaped nodules. In addition, we use an alternative ensemble method called the checkpoint ensemble method to boost performance. The performance of our nodule classification method is compared with that of the state-of-the-art methods which were used in the LUng Nodule Analysis 2016 Challenge. Our method achieves higher competition performance metric (CPM) scores than the state-of-the-art methods using deep learning. In the experimental setup ESB-ALL, the 3D DCNN with shortcut connections and the 3D DCNN with dense connections using the checkpoint ensemble method achieved the highest CPM score of 0.910. The result demonstrates that our method of using a 3D DCNN with shortcut connections, a 3D DCNN with dense connections, and the checkpoint ensemble method is effective for capturing 3D features of nodules and distinguishing nodules between non-nodules.
机译:尽早准确地检测和检查肺结节是诊断肺癌的关键,因此是预防肺癌死亡的最佳方法之一。放射科医生花费大量时间检测计算机断层扫描(CT)图像中的球形小结节。另外,即使在检测到结节候选者之后,仍需要大量的精力和时间来确定它们是否为真正的结节。本文的目的是介绍一种使用三维深度卷积神经网络(DCNN)的高性能结节分类方法和一种将结节区分为非结节的集成方法。在本文中,我们使用具有快捷连接的三维深度卷积神经网络(3D DCNN)和具有密集连接的3D DCNN进行肺结节分类。快捷连接和密集连接通过允许渐变快速直接通过而成功缓解了渐变消失的问题。连接有助于深层结构化网络,以获取肺结节的一般特征和独特特征。此外,我们将DCNN的尺寸从两个增加到三个,以捕获3D特征。与以前的研究中使用的浅3D CNN相比,深3D CNN更有效地捕获了球形结节的特征。另外,我们使用另一种称为“检查点集成”方法的集成方法来提高性能。我们将结节分类方法的性能与2016年《结核结节分析》挑战赛中使用的最新方法进行了比较。与使用深度学习的最新方法相比,我们的方法获得了更高的竞争绩效指标(CPM)分数。在实验设置ESB-ALL中,使用检查点集成方法的具有快捷连接的3D DCNN和具有密集连接的3D DCNN获得了0.910的最高CPM得分。结果表明,我们的方法使用具有快捷连接的3D DCNN,具有密集连接的3D DCNN和检查点集成方法可有效捕获结节的3D特征并区分非结节。

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