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Towards MR-Only Radiotherapy Treatment Planning: Synthetic CT Generation Using Multi-view Deep Convolutional Neural Networks

机译:迈向仅MR放射治疗计划:使用多视图深度卷积神经网络的合成CT生成

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Recently, Magnetic Resonance imaging-only (MR-only) radiotherapy treatment planning (RTP) receives growing interests since it is radiation-free and time/cost efficient. A key step in MR-only RTP is the generation of a synthetic CT from MR for dose calculation. Although deep learning approaches have achieved promising results on this topic, they still face two major challenges. First, it is very difficult to get perfectly registered CT-MR pairs to learn the intensity mapping, especially for abdomen and pelvic scans. Slight registration errors may mislead the deep network to converge at a sub-optimal CT-MR intensity matching. Second, training of a standard 3D deep network is very memory-consuming. In practice, one has to either shrink the size of the training network (sacrificing the accuracy) or use a patch-based sliding-window scheme (sacrificing the speed). In this paper, we proposed a novel method to address these two challenges. First, we designed a max-pooled cost function to accommodate imperfect registered CT-MR training pairs. Second, we proposed a network that consists of multiple 2D sub-networks (from different 3D views) followed by a combination sub-network. It reduces the memory consumption without losing the 3D context for high quality CT synthesis. We demonstrated our method can generate high quality synthetic CTs with much higher runtime efficiency compared to the state-of-the-art as well as our own benchmark methods. The proposed solution can potentially enable more effective and efficient MR-only RTPs in clinical settings.
机译:最近,仅磁共振成像(仅MR)放射治疗治疗计划(RTP)受到了越来越多的关注,因为它无辐射且具有时间/成本效益。仅MR的RTP中的关键步骤是从MR生成用于剂量计算的合成CT。尽管深度学习方法在此主题上取得了可喜的成果,但它们仍然面临两个主要挑战。首先,要获得完美配准的CT-MR对以学习强度图非常困难,尤其是对于腹部和骨盆扫描。轻微的配准错误可能会误导深度网络收敛于次佳的CT-MR强度匹配。其次,训练标准3D深度网络非常消耗内存。实际上,必须缩小训练网络的大小(牺牲准确性)或使用基于补丁的滑动窗口方案(牺牲速度)。在本文中,我们提出了一种新颖的方法来应对这两个挑战。首先,我们设计了一个最大池成本函数,以容纳不完善的注册CT-MR训练对。其次,我们提出了一个网络,该网络由多个2D子网(来自不同的3D视图)以及随后的组合子网组成。它减少了内存消耗,而不会丢失3D上下文以实现高质量的CT合成。我们证明了与现有技术和我们自己的基准测试方法相比,我们的方法可以生成具有更高运行时效率的高质量合成CT。所提出的解决方案可以在临床环境中潜在地实现更有效,更高效的纯MR RTP。

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