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 classifer $F_2$ 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.
翻译:加速 MRI 重建临床解剖图象的图像, 利用微量抽样信号数据, 减少病人扫描时间。 虽然最近的工作利用了深层学习来完成这项任务, 但这些方法通常只在没有信号腐败或资源限制的模拟环境中进行探索。 在这项工作中, 我们探索神经网络MRI图像重建器的扩增, 以提高其临床相关性。 也就是说, 我们提出一个ConvNet模型, 用于检测图像制品的来源, 从而达到79.1美元分之F_ 2。 我们还表明, 以可变加速系数来培训MR信号数据重建者, 可以在临床病人扫描期间提高平均性能, 最多为2美元。 当模型学会重建多解剖和定向的MR图像时, 我们提供一种灾难性的失职功能, 以克服灾难性的遗忘。 最后, 我们提出一种方法, 在临床获取的数据集和计算能力有限的情况下, 将模拟的幻影数据用于培训前重建者。 我们的结果为加速 MRI 的临床适应提供了一条可能的路径 。