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Clinical Target Volume Auto-Segmentation of Esophageal Cancer for Radiotherapy After Radical Surgery Based on Deep Learning

机译:基于深度学习的自由基外科治疗食管癌临床目标体积自动分割

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摘要

Radiotherapy plays an important role in controlling the local recurrence of esophageal cancer after radical surgery. Segmentation of the clinical target volume is a key step in radiotherapy treatment planning, but it is time-consuming and operator-dependent. This paper introduces a deep dilated convolutional U-network to achieve fast and accurate clinical target volume auto-segmentation of esophageal cancer after radical surgery. The deep dilated convolutional U-network, which integrates the advantages of dilated convolution and the U-network, is an end-to-end architecture that enables rapid training and testing. A dilated convolution module for extracting multiscale context features containing the original information on fine texture and boundaries is integrated into the U-network architecture to avoid information loss due to down-sampling and improve the segmentation accuracy. In addition, batch normalization is added to the deep dilated convolutional U-network for fast and stable convergence. In the present study, the training and validation loss tended to be stable after 40 training epochs. This deep dilated convolutional U-network model was able to segment the clinical target volume with an overall mean Dice similarity coefficient of 86.7% and a respective 95% Hausdorff distance of 37.4 mm, indicating reasonable volume overlap of the auto-segmented and manual contours. The mean Cohen kappa coefficient was 0.863, indicating that the deep dilated convolutional U-network was robust. Comparisons with the U-network and attention U-network showed that the overall performance of the deep dilated convolutional U-network was best for the Dice similarity coefficient, 95% Hausdorff distance, and Cohen kappa coefficient. The test time for segmentation of the clinical target volume was approximately 25 seconds per patient. This deep dilated convolutional U-network could be applied in the clinical setting to save time in delineation and improve the consistency of contouring.
机译:放射治疗在控制食管癌根治术后局部复发的重要作用。临床靶区的分割是放射治疗计划的关键一步,但它是耗时且取决于运营商。本文介绍了深刻的扩张卷积U型网络,实现快速,准确的临床靶区食管癌根治性手术后的自动分割。深扩张卷积U型网络,它集成了扩张卷积的优点和U网络,是一个终端到终端的体系结构,使快速训练和测试。用于提取多尺度上下文中的扩张型卷积模块的特征在于包含在质地细腻和边界的原始信息被整合到U的网络架构,以避免信息丢失由于下采样和提高分割准确度。此外,批标准化加入到深扩张卷积U型网络快速稳定收敛。在本研究中,培训和验证损失往往经过40个训练时期是稳定的。此深扩张卷积U型网络模型能够段临床目标体积的86.7%的总平均骰子相似系数和37.4毫米的各自95%Hausdorff距离,表示自动分段和手动轮廓的合理量的重叠。平均科恩卡伯系数为0.863,这表明深扩张卷积U型网络是稳健的。与U-网络和注意力U形网络的比较表明,该深的整体性能扩张卷积U型网络是最适合的骰子相似系数,95%Hausdorff距离,和Cohen卡伯系数。测试时间为临床目标体积的分割为每位患者大约25秒。这种深层扩张卷积U型网络可以在临床上被应用到节省时间划分,提高轮廓的一致性。

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