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Groupwise Non-Rigid Registration with Deep Learning: An Affordable Solution Applied to 2D Cardiac Cine MRI Reconstruction

机译:GroupWise非刚性注册与深度学习:适用于2D心脏调MRI重建的实惠的解决方案

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摘要

Groupwise image (GW) registration is customarily used for subsequent processing in medical imaging. However, it is computationally expensive due to repeated calculation of transformations and gradients. In this paper, we propose a deep learning (DL) architecture that achieves GW elastic registration of a 2D dynamic sequence on an affordable average GPU. Our solution, referred to as dGW, is a simplified version of the well-known U-net. In our GW solution, the image that the other images are registered to, referred to in the paper as template image, is iteratively obtained together with the registered images. Design and evaluation have been carried out using 2D cine cardiac MR slices from 2 databases respectively consisting of 89 and 41 subjects. The first database was used for training and validation with 66.6–33.3% split. The second one was used for validation (50%) and testing (50%). Additional network hyperparameters, which are—in essence—those that control the transformation smoothness degree, are obtained by means of a forward selection procedure. Our results show a 9-fold runtime reduction with respect to an optimization-based implementation; in addition, making use of the well-known structural similarity (SSIM) index we have obtained significative differences with dGW with respect to an alternative DL solution based on Voxelmorph.
机译:GroupWise图像(GW)注册通常用于医学成像的后续处理。然而,由于重复计算转换和梯度,它是计算昂贵的。在本文中,我们提出了一种深度学习(DL)架构,其在经济实惠的平均GPU上实现了2D动态序列的GW弹性登记。我们的解决方案称为DGW,是众所周知的U-Net的简化版本。在我们的GW解决方案中,将其他图像登记为在纸张中被登记的图像作为模板图像被迭代地与注册图像一起获得。使用来自2个数据库的2D Cine心MR片进行设计和评估,分别由89和41个受试者组成。第一个数据库用于培训和验证,拆分66.6-33.3%。第二个用于验证(50%)和测试(50%)。通过正向选择过程获得附加的网络超参数 - 基本上 - 控制转换平滑度的那些。我们的结果表明,关于基于优化的实现,缩短了9倍的运行时间;此外,利用众所周知的结构相似性(SSIM)指数我们已经获得了基于Voxelmorph的替代DL溶液的DGW与DGW的显着差异。

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