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Automatic Delineation of the Clinical Target Volume in Rectal Cancer for Radiation Therapy using Three-dimensional Fully Convolutional Neural Networks

机译:使用三维全卷积神经网络自动描述放射治疗的直肠癌临床目标体积

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Accurate, robust, and fast delineation of the clinical target volume (CTV) for the use in radiotherapy of rectal cancer (RC) is highly sought-after. Convolutional neural networks (CNNs) have proven themselves very effective in various segmentation tasks on medical images. Despite this, their application in CTV delineation is not yet fully explored. This study uses the three-dimensional fully convolutional neural network architecture called V-net for CTV delineation. The West China Hospital (Chengdu, China) provided this study with 120 annotated CT scans. For improved performance and to battle data scarcity, the available scans were augmented. Trained on 100 CT-scans for 20 hours and tested on 20 previously unseen CT-scans the network achieved a mean dice similarity coefficient (DSC) of 0.90 and a mean delineation time per CTV of 0.60 seconds. The proposed method is compared with two other state-of-the-art CNNs and is shown to be superior.
机译:迫切需要用于直肠癌(RC)放射治疗的临床目标体积(CTV)的准确,可靠和快速的描绘。卷积神经网络(CNN)已证明自己在医学图像的各种分割任务中非常有效。尽管如此,它们在CTV轮廓中的应用还没有得到充分的探索。这项研究使用称为V-net的三维完全卷积神经网络架构进行CTV描绘。华西医院(中国成都)为这项研究提供了120条带注释的CT扫描。为了提高性能并应对数据短缺,增加了可用的扫描。在100次CT扫描上训练了20个小时,并在20次以前未见过的CT扫描上进行了测试,该网络实现了平均骰子相似系数(DSC)为0.90和每CTV的平均描绘时间为0.60秒。所提出的方法与其他两个最新的CNN进行了比较,并被证明是更好的方法。

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