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Preliminary Feasibility Study of Imaging Registration Between Supine and Prone Breast CT in Breast Cancer Radiotherapy Using Residual Recursive Cascaded Networks

机译:使用残余递归级联网络乳腺癌放射治疗乳腺癌放射治疗的成像登记的初步可行性研究

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摘要

Breast cancer is one of the most common malignancies in women. The prone position in Partial Breast Irradiation (PBI) can better protect the heart and lung during radiotherapy. Supine position is used for CT imaging during treatment planning. The posture change in these two different positions may cause large deformation of breast, which make breast registration become a great challenge. Existing registration approaches for supine and prone breast images mainly use biomechanical modeling and iterative deformable images registration methods. However, the ability of these methods to capture such large deformations is limited. To tackle these problems, we propose an end-to-end residual recursive cascade network (RRCN) for supine and prone breast images registration. Unlike traditional deep learning networks, an affine subnetwork and several deformable subnetworks are trained together, enabling cooperation between subnetworks. Moreover, by using residual network connection, we can accelerate registration speed and reduce radiation dose. Registration accuracy is evaluated by visualizing registered images and computing normalized cross correlation (NCC). The experiment results show that RRCN with an average NCC of 0.982 ± 0.010 outperform VoxelMorph with an average NCC of 0.769 ± 0.070 and Recursive Cascaded Networks (RCN) with an average NCC of 0.914 ± 0.063, demonstrating the superior performance of the proposed method for supine and prone breast image registration. Because accurate deformable registration for this large-scale deformation is of great importance to the success of breast cancer radiotherapy, RRCN method has a strong potential to be a promising tool for future clinical practice in breast cancer radiotherapy.
机译:乳腺癌是女性中最常见的恶性肿瘤之一。部分乳房辐射(PBI)的俯卧位可以在放射治疗期间更好地保护心脏和肺。仰卧位用于治疗计划期间CT成像。这两个不同位置的姿势变化可能会导致乳房的大变形,使乳房注册成为一个巨大的挑战。仰卧和易于乳房图像的现有登记方法主要使用生物力学建模和迭代可变形图像登记方法。然而,这些方法捕获这种大变形的能力是有限的。为了解决这些问题,我们提出了一个端到端的残余递归级联网络(RRCN),用于仰卧和易于乳房图像登记。与传统的深度学习网络不同,仿视子网和几个可变形的子网,一起培训,从而实现子网之间的合作。此外,通过使用剩余网络连接,我们可以加速登记速度并减少辐射剂量。通过可视化注册图像和计算归一化交叉相关(NCC)来评估注册精度。实验结果表明,平均NCC为0.982±0.010优于voxelmorph的RRCN,平均NCC为0.769±0.070,递归级联网络(RCN),平均NCC为0.914±0.063,展示了仰卧提出的方法的优越性并且易于乳房图像登记。由于这种大规模变形的准确可变形注册对于乳腺癌放射治疗的成功非常重视,因此RRCN方法具有强大的潜力,可以成为未来乳腺癌放射治疗的临床实践的有希望的工具。

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