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Neural-network-based method for intrathoracic airway detection from three-dimensional CT images

机译:基于神经网络的三维CT图像胸腔气道检测方法

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Abstract: This paper presents a neural network-based method for intrathoracic airway detection and segmentation from 3D HRCT images. Two feed-forward neural networks are independently trained to identify various airway appearances in 3D CT images. While the first network identifies potential airways located adjacent to vessels, the second network identifies potential airways by assessing the existence of walls surrounding airways, The two networks are combined to construct a dual-network classifier taking its inputs from a 21 $MUL 21 moving subimage window: (1) raw gray-level subimage and (2) 4 directional profiles. By design, each network provides a superset of airways that are present in the CT images and only the airways identified by both networks are considered reliable. After the networks are trained by the generalized delta rule with momentum using limited number of airwayonairway samples apart from the validation data sets, the generalization performance of the networks is assessed with two independent standards consisting of 282 and 167 observer-traced airways. The performance of the current method is compared with that of the conventional seeded region growing method. Our validation results indicate that the presented method indeed provide enhanced detection of peripheral airways compared to the conventional region growing method. !13
机译:摘要:本文提出了一种基于神经网络的3D HRCT图像胸腔气道检测和分割方法。两个前馈神经网络经过独立训练,可以识别3D CT图像中的各种气道外观。当第一个网络识别位于船只附近的潜在气道时,第二个网络通过评估气道周围壁的存在来识别潜在气道。将这两个网络组合起来,以构造一个双网络分类器,并从21个$ MUL 21移动子图像中获取其输入。窗口:(1)原始灰度子图像和(2)4个方向配置文件。通过设计,每个网络都提供CT图像中存在的气道的超集,并且只有这两个网络标识的气道才被认为是可靠的。在使用除验证数据集以外的有限数量的气道/非气道样本,通过动量的广义德尔塔规则对网络进行训练后,使用由282和167个观察者追踪的气道组成的两个独立标准评估网络的泛化性能。将当前方法的性能与常规种子区域生长方法的性能进行比较。我们的验证结果表明,与传统的区域生长方法相比,该方法确实可以增强对周围气道的检测。 !13

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