加速MRI的临床适应之路

Michael S. Yao, M. Hansen
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引用次数: 0

摘要

加速MRI从稀疏采样信号数据重建临床解剖图像,以减少患者扫描时间。虽然最近的研究已经利用深度学习来完成这项任务,但这种方法通常只在没有信号损坏或资源限制的模拟环境中进行了探索。在这项工作中,我们探索增强神经网络MRI图像重建,以提高其临床相关性。也就是说,我们提出了一个用于检测图像伪影源的卷积神经网络模型,该模型的分类器f2得分为79.1%。我们还证明,在具有可变加速因子的MR信号数据上训练重建器可以在临床患者扫描期间将其平均性能提高2%。我们提供了一个损失函数来克服模型学习重建多个解剖和方向的MR图像时的灾难性遗忘。最后,我们提出了一种方法,在临床上获得的数据集和计算能力有限的情况下,使用模拟幻像数据对重建器进行预训练。我们的研究结果为加速MRI的临床应用提供了一条潜在的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Path Towards Clinical Adaptation of Accelerated MRI
Accelerated MRI reconstructs images of clinical anatomies from sparsely sampled signal data to reduce patient scan times. While recent works have leveraged deep learning to accomplish this task, such approaches have often only been explored in simulated environments where there is no signal corruption or resource limitations. In this work, we explore augmentations to neural network MRI image reconstructors to enhance their clinical relevancy. Namely, we propose a ConvNet model for detecting sources of image artifacts that achieves a classifier F 2 score of 79.1%. We also demonstrate that training reconstructors on MR signal data with variable acceleration factors can improve their average performance during a clinical patient scan by up to 2%. We offer a loss function to overcome catastrophic forgetting when models learn to reconstruct MR images of multiple anatomies and orientations. Finally, we propose a method for using simulated phantom data to pre-train reconstructors in situations with limited clinically acquired datasets and compute capabilities. Our results provide a potential path forward for clinical adaptation of accelerated MRI.
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