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Automatical Segmentation of Pelvic Organs After Hysterectomy by using Dilated Convolution U-Net++

机译:子宫扩张术后盆腔脏器的自动分割

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Accurate delineation of the clinical target volume (CTV) and organs at risk (OARs) in pelvic plays a crucial role in the follow-up radiotherapy of the patient after hysterectomy. However, manual delineation is a time-consuming task which is susceptible to inter-observer variation. Automatic organ delineation is reliant on the global context contained in the extracted feature map to segment the original CT image. Currently, numerous deep learning networks, like U-Net++, are widely used in this task. In this paper, we use a standard U-Net++ as a fundamental structure followed by using dilated convolutions to replace its standard convolutions. We observed that dilated convolutions enlarged the size of the receptive field significantly, fusing more global contextual information and increasing the accuracy of segmenting organs. We evaluate the performance of standard U-Net++ and improved U-Net++(with double-deck dilated convolution) on the multiple organs segmentation in pelvic respectively. Our data set consist of CT images of 70 patients after hysterectomy. We use the dice similarity coefficient to quantify the segmentation accuracy. The result of our experiment demonstrates that the improved U-Net++ outperforms the standard U-Net++ on the segmentation of bladder, CTV and rectum. The dice scores show in follow: 93.2%±4.2% vs 91.2%±3.7% for bladder, 89%±3.6% vs 85%±2.6% for CTV and 87.6%±3.6% vs 84.7%±2.1% for rectum. It shows that the segmentation result of the improved U-Net ++ network is closer to the results manually drawn by the doctor than the standard U-Net++.
机译:在子宫切除术后患者的后续放射治疗中,准确勾画出骨盆中的临床目标体积(CTV)和高危器官(OARs)至关重要。但是,手动划界是一项耗时的任务,易受观察者之间差异的影响。自动器官描绘取决于提取的特征图中包含的全局上下文,以分割原始CT图像。当前,许多深度学习网络(例如U-Net ++)已广泛用于此任务。在本文中,我们使用标准的U-Net ++作为基本结构,然后使用膨胀的卷积代替其标准卷积。我们观察到,扩张的卷积显着扩大了接收区域的大小,融合了更多的全局上下文信息并增加了分割器官的准确性。我们分别评估了标准的U-Net ++和改进的U-Net ++(带有双层扩张卷积)在骨盆中的多个器官分割方面的性能。我们的数据集包括子宫切除术后70例患者的CT图像。我们使用骰子相似系数来量化分割精度。我们的实验结果表明,在膀胱,CTV和直肠的分割方面,改进的U-Net ++优于标准U-Net ++。骰子得分如下:膀胱93.2%±4.2%,91.2%±3.7%,CTV 89%±3.6%,85%±2.6%,直肠87.6%±3.6%,84.7%±2.1%。它表明,与标准的U-Net ++相比,改进的U-Net ++网络的分割结果更接近医生手动绘制的结果。

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