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Rectum Segmentation in Brachytherapy Dataset Using Recurrent Network

机译:使用反复网络的近距表数据集中的直肠分段

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In brachytherapy, the segmentation accuracy of the target tumor and surrounding organs is very important. In recent years, deep learning models have improved the performance of organ segmentation and have been widely used. However, it is still a huge challenge for some organs with variable shapes. The basic idea of the work presented in this paper is to accurately divide the rectal computed tomography image dataset so that patients can obtain more accurate brachytherapy. In this work, we used 3D U-Net and Long ShortTerm Memory (LSTM) to improve the accuracy of rectal segmentation. This model was trained and tested on the rectal computed tomography image dataset, which contains 51 patients undergoing radiation therapy. The dice coefficient is used as the evaluation index in all results of organ segmentation. After experiments are done, it can be seen that the proposed method has good performance in rectal segmentation.
机译:在近距离放射治疗中,靶肿瘤和周围器官的分割准确性非常重要。近年来,深入学习模型提高了器官分割的性能,并被广泛使用。然而,对于具有可变形状的某些器官来说,这仍然是一个巨大的挑战。本文提出的工作的基本思想是准确地划分直肠计算机断层摄影图像数据集,以便患者可以获得更准确的近距离放射治疗。在这项工作中,我们使用3D U-Net和Long ShortTerm Memory(LSTM)来提高直肠分割的准确性。该模型培训并在直肠上计算断层摄影图像数据集上进行了测试,该数据集包含51名接受放射治疗的患者。将骰子系数用作器官分割的所有结果中的评估指标。实验完成后,可以看出该方法在直肠分割方面具有良好的性能。

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