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首页> 外文期刊>IEEE Transactions on Medical Imaging >Non-Rigid Respiratory Motion Estimation of Whole-Heart Coronary MR Images Using Unsupervised Deep Learning
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Non-Rigid Respiratory Motion Estimation of Whole-Heart Coronary MR Images Using Unsupervised Deep Learning

机译:无监督深度学习的全心冠状动脉图像的非刚性呼吸运动估计

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摘要

Non-rigid motion-corrected reconstruction has been proposed to account for the complex motion of the heart in free-breathing 3D coronary magnetic resonance angiography (CMRA). This reconstruction framework requires efficient and accurate estimation of non-rigid motion fields from undersampled images at different respiratory positions (or bins). However, state-of-the-art registration methods can be time-consuming. This article presents a novel unsupervised deep learning-based strategy for fast estimation of inter-bin 3D non-rigid respiratory motion fields for motion-corrected free-breathing CMRA. The proposed 3D respiratory motion estimation network (RespME-net) is trained as a deep encoder-decoder network, taking pairs of 3D image patches extracted from CMRA volumes as input and outputting the motion field between image patches. Using image warping by the estimated motion field, a loss function that imposes image similarity and motion smoothness is adopted to enable training without ground truth motion field. RespME-net is trained patch-wise to circumvent the challenges of training a 3D network volume-wise which requires large amounts of GPU memory and 3D datasets. We perform 5-fold cross-validation with 45 CMRA datasets and demonstrate that RespME-net can predict 3D non-rigid motion fields with subpixel accuracy (0.44 +/- 0.38 mm) within similar to 10 seconds, being similar to 20 times faster than a GPU-implemented state-of-the-art non-rigid registration method. Moreover, we perform non-rigid motion-compensated CMRA reconstruction for 9 additional patients. The proposed RespME-net has achieved similar motion-corrected CMRA image quality to the conventional registration method regarding coronary artery length and sharpness.
机译:已经提出了非刚性运动校正的重建,以考虑心脏在自由呼吸3D冠状动脉磁共振血管造影(CMRA)中的复杂运动。该重建框架需要在不同呼吸位置(或垃圾箱)的下采样图像中的非刚性运动场的高效和准确地估计。但是,最先进的注册方法可能是耗时的。本文提出了一种简洁的深度学习基于深度学习的战略,可用于运动校正自由呼吸CMRA的箱间3D非刚性呼吸运动场的快速估计。所提出的3D呼吸运动估计网络(RESPME-NET)被培训为深度编码器解码器网络,采用从CMRA卷中提取的3D图像贴片,作为输入和输出图像补片之间的运动场。使用估计的运动场的图像翘曲,采用了一种造型图像相似性和运动平滑度的损耗函数来实现没有地面真相运动场的训练。 respme-net培训了修补程序,以规避培训3D网络卷的挑战,这需要大量GPU存储器和3D数据集。我们使用45 cmra数据集执行5倍交叉验证,并证明Respme-net可以在类似于10秒内预测具有子像素精度(0.44 +/- 0.38 mm)的3D非刚性运动场,类似于速度的20倍GPU实施的最先进的非刚性登记方法。此外,我们对9名患者进行了非刚性运动补偿CMRA重建。所提出的respme-net已经实现了类似的运动校正的CMRA图像质量,以与冠状动脉长度和清晰度的常规登记方法。

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