Radiation Oncology Department, Stanford University, Stanford, California 94305, USA.
Radiology Department, University of California San Diego, La Jolla, California 92093, USA.
Magn Reson Imaging. 2020 Oct;72:78-86. doi: 10.1016/j.mri.2020.06.011. Epub 2020 Jun 29.
Quantitative magnetic resonance imaging (MRI) attracts attention due to its support to quantitative image analysis and data driven medicine. However, the application of quantitative MRI is severely limited by the long data acquisition time required by repetitive image acquisition and measurement of field map. Inspired by recent development of artificial intelligence, we propose a deep learning strategy to accelerate the acquisition of quantitative MRI, where every quantitative T map is derived from two highly undersampled variable-contrast images with radiofrequency field inhomogeneity automatically compensated. In a multi-step framework, variable-contrast images are first jointly reconstructed from incoherently undersampled images using convolutional neural networks; then T map and B map are predicted from reconstructed images employing deep learning. Thus, the acceleration includes undersampling in every input image, a reduction in the number of variable contrast images, as well as a waiver of B map measurement. The strategy is validated in T mapping of cartilage. Acquired with a consistent imaging protocol, 1224 image sets from 51 subjects are used for the training of the prediction models, and 288 image sets from 12 subjects are used for testing. High degree of acceleration is achieved with image fidelity well maintained. The proposed method can be broadly applied to quantify other tissue properties (e.g. T, T) as well.
定量磁共振成像(MRI)因其支持定量图像分析和数据驱动医学而受到关注。然而,定量 MRI 的应用受到重复图像采集和场图测量所需的长数据采集时间的严重限制。受人工智能最新发展的启发,我们提出了一种深度学习策略来加速定量 MRI 的采集,其中每个定量 T 图都源自两个具有射频场不均匀性的高度欠采样变量对比度图像,该图像自动补偿。在多步框架中,使用卷积神经网络首先从非相干欠采样图像重建变量对比度图像;然后使用深度学习从重建图像中预测 T 图和 B 图。因此,加速包括在每个输入图像中进行欠采样、减少变量对比度图像的数量以及放弃 B 图测量。该策略在软骨 T 映射中得到了验证。使用一致的成像协议采集,从 51 个受试者中获得了 1224 个图像集用于预测模型的训练,从 12 个受试者中获得了 288 个图像集用于测试。在很好地保持图像保真度的情况下实现了高度的加速。该方法可广泛应用于量化其他组织特性(例如 T、T)。