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Esophagus Segmentation in CT Images via Spatial Attention Network and STAPLE Algorithm

机译:通过空间关注网络和钉算法在CT图像中的食道分割

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摘要

One essential step in radiotherapy treatment planning is the organ at risk of segmentation in Computed Tomography (CT). Many recent studies have focused on several organs such as the lung, heart, esophagus, trachea, liver, aorta, kidney, and prostate. However, among the above organs, the esophagus is one of the most difficult organs to segment because of its small size, ambiguous boundary, and very low contrast in CT images. To address these challenges, we propose a fully automated framework for the esophagus segmentation from CT images. The proposed method is based on the processing of slice images from the original three-dimensional (3D) image so that our method does not require large computational resources. We employ the spatial attention mechanism with the atrous spatial pyramid pooling module to locate the esophagus effectively, which enhances the segmentation performance. To optimize our model, we use group normalization because the computation is independent of batch sizes, and its performance is stable. We also used the simultaneous truth and performance level estimation (STAPLE) algorithm to reach robust results for segmentation. Firstly, our model was trained by k-fold cross-validation. And then, the candidate labels generated by each fold were combined by using the STAPLE algorithm. And as a result, Dice and Hausdorff Distance scores have an improvement when applying this algorithm to our segmentation results. Our method was evaluated on SegTHOR and StructSeg 2019 datasets, and the experiment shows that our method outperforms the state-of-the-art methods in esophagus segmentation. Our approach shows a promising result in esophagus segmentation, which is still challenging in medical analyses.
机译:放射治疗计划中的一个重要步骤是计算断层摄影(CT)分段风险的器官。最近的一些研究侧重于肺,心脏,食道,气管,肝脏,主动脉,肾脏和前列腺等几种器官。然而,在上述器官中,由于其小尺寸,暧昧的边界和CT图像中的对比度非常低,因此食道是最困难的器官之一。为解决这些挑战,我们向CT图像提出了一个完全自动化的框架,用于从CT图像中的食道分割。所提出的方法基于从原始三维(3D)图像的切片图像的处理,以便我们的方法不需要大型计算资源。我们采用空间注意机制,具有所居住的空间金字塔池模块,有效地定位食道,这提高了分割性能。为了优化我们的模型,我们使用小组归一化,因为计算无关,其性能稳定。我们还使用了同时的真理和性能级别估计(Staple)算法来达到分割的强大结果。首先,我们的模型受到k折交叉验证的培训。然后,通过使用钉算法组合每个折叠产生的候选标签。因此,当将该算法应用于我们的分割结果时,骰子和豪血码距离分数具有改进。我们的方法在Segthor和StructseG 2019数据集上进行了评估,实验表明,我们的方法优于食道分割中最先进的方法。我们的方法在医学分析中表现出对食道分割的有希望的结果。

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