A motion-corrected deep-learning reconstruction framework for accelerating whole-heart magnetic resonance imaging in patients with congenital heart disease.

IF 4.2 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Andrew Phair, Anastasia Fotaki, Lina Felsner, Thomas J Fletcher, Haikun Qi, René M Botnar, Claudia Prieto
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引用次数: 0

Abstract

Background: Cardiovascular magnetic resonance (CMR) is an important imaging modality for the assessment and management of adult patients with congenital heart disease (CHD). However, conventional techniques for three-dimensional (3D) whole-heart acquisition involve long and unpredictable scan times and methods that accelerate scans via k-space undersampling often rely on long iterative reconstructions. Deep-learning-based reconstruction methods have recently attracted much interest due to their capacity to provide fast reconstructions while often outperforming existing state-of-the-art methods. In this study, we sought to adapt and validate a non-rigid motion-corrected model-based deep learning (MoCo-MoDL) reconstruction framework for 3D whole-heart MRI in a CHD patient cohort.

Methods: The previously proposed deep-learning reconstruction framework MoCo-MoDL, which incorporates a non-rigid motion-estimation network and a denoising regularization network within an unrolled iterative reconstruction, was trained in an end-to-end manner using 39 CHD patient datasets. Once trained, the framework was evaluated in eight CHD patient datasets acquired with seven-fold prospective undersampling. Reconstruction quality was compared with the state-of-the-art non-rigid motion-corrected patch-based low-rank reconstruction method (NR-PROST) and against reference images (acquired with three-or-four-fold undersampling and reconstructed with NR-PROST).

Results: Seven-fold undersampled scan times were 2.1 ± 0.3 minutes and reconstruction times were ∼30 seconds, approximately 240 times faster than an NR-PROST reconstruction. Image quality comparable to the reference images was achieved using the proposed MoCo-MoDL framework, with no statistically significant differences found in any of the assessed quantitative or qualitative image quality measures. Additionally, expert image quality scores indicated the MoCo-MoDL reconstructions were consistently of a higher quality than the NR-PROST reconstructions of the same data, with the differences in 12 of the 22 scores measured for individual vascular structures found to be statistically significant.

Conclusion: The MoCo-MoDL framework was applied to an adult CHD patient cohort, achieving good quality 3D whole-heart images from ∼2-minute scans with reconstruction times of ∼30 seconds.

用于加速先天性心脏病患者全心磁共振成像的运动校正深度学习重建框架。
背景:磁共振成像是评估和管理先天性心脏病(CHD)成人患者的重要成像方式。然而,传统的三维全心采集技术需要很长且不可预测的扫描时间,而通过 k 空间欠采样加速扫描的方法往往依赖于长时间的迭代重建。基于深度学习的重建方法最近引起了广泛关注,因为它们能够提供快速重建,同时性能往往优于现有的最先进方法。在本研究中,我们试图调整和验证基于模型的非刚性运动校正深度学习(MoCo-MoDL)重建框架,并在冠心病患者队列中应用于三维全心磁共振成像:之前提出的深度学习重建框架 MoCo-MoDL,将一个非刚性运动估计网络和一个去噪正则化网络整合到一个非滚动迭代重建中,并使用 39 个冠心病患者数据集以端到端方式进行训练。训练完成后,该框架在以七倍前瞻性欠采样获取的 8 个冠心病患者数据集中进行了评估。重建质量与最先进的基于非刚性运动校正补丁的低秩重建方法(NR-PROST)和参考图像(采用三或四倍欠采样采集并用 NR-PROST 重建)进行了比较:七倍欠采样扫描时间为 2.1 ± 0.3 分钟,重建时间约为 30 秒,比 NR-PROST 重建快约 240 倍。使用提议的 MoCo-MoDL 框架可获得与参考图像相当的图像质量,在任何定量或定性图像质量评估指标上都没有发现显著的统计学差异。此外,专家图像质量评分表明,MoCo-MoDL 重建的质量始终高于相同数据的 NR-PROST 重建,在针对单个血管结构测量的 22 项评分中,有 12 项评分的差异具有统计学意义:MoCo-MoDL框架被应用于成人冠心病患者群,通过约2分钟的扫描获得了高质量的三维全心图像,重建时间约为30秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
10.90
自引率
12.50%
发文量
61
审稿时长
6-12 weeks
期刊介绍: Journal of Cardiovascular Magnetic Resonance (JCMR) publishes high-quality articles on all aspects of basic, translational and clinical research on the design, development, manufacture, and evaluation of cardiovascular magnetic resonance (CMR) methods applied to the cardiovascular system. Topical areas include, but are not limited to: New applications of magnetic resonance to improve the diagnostic strategies, risk stratification, characterization and management of diseases affecting the cardiovascular system. New methods to enhance or accelerate image acquisition and data analysis. Results of multicenter, or larger single-center studies that provide insight into the utility of CMR. Basic biological perceptions derived by CMR methods.
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