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Self-supervised Recurrent Neural Network for 4D Abdominal and In-utero MR Imaging

机译:4D腹部和Utero MR成像的自我监督的经常性神经网络

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Accurately estimating and correcting the motion artifacts are crucial for 3D image reconstruction of the abdominal and in-utero magnetic resonance imaging (MRI). The state-of-art methods are based on slice-to-volume registration (SVR) where multiple 2D image stacks are acquired in three orthogonal orientations. In this work, we present a novel reconstruction pipeline that only needs one orientation of 2D MRI scans and can reconstruct the full high-resolution image without masking or registration steps. The framework consists of two main stages: the respiratory motion estimation using a self-supervised recurrent neural network, which learns the respiratory signals that are naturally embedded in the asymmetry relationship of the neighborhood slices and cluster them according to a respiratory state. Then, we train a 3D deconvolutional network for super-resolution (SR) reconstruction of the sparsely selected 2D images using integrated reconstruction and total variation loss. We evaluate the classification accuracy on 5 simulated images and compare our results with the SVR method in adult abdominal and inutero MRI scans. The results show that the proposed pipeline can accurately estimate the respiratory state and reconstruct 4D SR volumes with better or similar performance to the 3D SVR pipeline with less than 20% sparsely selected slices. The method has great potential to transform the 4D abdominal and in-utero MRI in clinical practice.
机译:准确地估计和校正运动伪影对腹部的3D图像重建和在子宫内的磁共振成像(MRI)是至关重要的。国家的技术的方法是基于在多个2D图像堆叠在三个正交方向获取的切片与体积注册(SVR)。在这项工作中,我们提出了一个新颖的重建管道,只有需要的2D核磁共振成像扫描一个取向,并且可以重构完整的高分辨率图像而没有掩蔽或登记步骤。该框架包括两个主要阶段:使用自监督回归神经网络,其得知自然嵌入在附近切片的不对称关系,并根据呼吸状态群集他们的呼吸信号呼吸运动估计。然后,我们培养了使用集成重建和总损耗的变化的稀疏选择的2D图像的超分辨率(SR)重建3D解卷积网络。我们评估5个模拟图像分类精度和我们的研究结果与成人腹痛和inutero MRI扫描的SVR方法进行比较。结果表明,所提出的管道可以准确地估计呼吸状态和重建4D SR卷具有更好或类似的性能到3D SVR管道具有小于20%的疏所选切片。该方法具有很大的潜力来改造4D腹部及子宫内MRI在临床实践中。

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