IEEE Trans Med Imaging. 2020 Dec;39(12):4310-4321. doi: 10.1109/TMI.2020.3017353. Epub 2020 Nov 30.
The discovery of the theory of compressed sensing brought the realisation that many inverse problems can be solved even when measurements are "incomplete". This is particularly interesting in magnetic resonance imaging (MRI), where long acquisition times can limit its use. In this work, we consider the problem of learning a sparse sampling pattern that can be used to optimally balance acquisition time versus quality of the reconstructed image. We use a supervised learning approach, making the assumption that our training data is representative enough of new data acquisitions. We demonstrate that this is indeed the case, even if the training data consists of just 7 training pairs of measurements and ground-truth images; with a training set of brain images of size 192 by 192, for instance, one of the learned patterns samples only 35% of k-space, however results in reconstructions with mean SSIM 0.914 on a test set of similar images. The proposed framework is general enough to learn arbitrary sampling patterns, including common patterns such as Cartesian, spiral and radial sampling.
压缩感知理论的发现使人们意识到,即使在测量“不完全”的情况下,许多逆问题也可以得到解决。这在磁共振成像(MRI)中尤其有趣,因为长时间的采集时间可能会限制其使用。在这项工作中,我们考虑了学习稀疏采样模式的问题,该模式可用于在采集时间与重建图像质量之间进行最佳平衡。我们使用了一种监督学习方法,假设我们的训练数据足以代表新的数据采集。我们证明了即使在训练数据仅由 7 对测量值和真实图像组成的情况下,这种情况确实如此;例如,对于大小为 192 乘 192 的脑图像训练集,其中一个学习模式仅对 k 空间进行 35%的采样,但在类似图像的测试集上,重建结果的平均 SSIM 为 0.914。所提出的框架足够通用,可以学习任意的采样模式,包括常见的模式,如笛卡尔、螺旋和径向采样。