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利用深度学习进行 B 校正加速 GluCEST 成像。

Accelerating GluCEST imaging using deep learning for B correction.

机构信息

Department of Electrical and Computer Engineering, Temple University, Philadelphia, Pennsylvania, USA.

Department of Radiology, University of Pennsylvania Perelman School of Medicine, Philadelphia, Pennsylvania, USA.

出版信息

Magn Reson Med. 2020 Oct;84(4):1724-1733. doi: 10.1002/mrm.28289. Epub 2020 Apr 17.

Abstract

PURPOSE

Glutamate weighted Chemical Exchange Saturation Transfer (GluCEST) MRI is a noninvasive technique for mapping parenchymal glutamate in the brain. Because of the sensitivity to field (B ) inhomogeneity, the total acquisition time is prolonged due to the repeated image acquisitions at several saturation offset frequencies, which can cause practical issues such as increased sensitivity to patient motions. Because GluCEST signal is derived from the small z-spectrum difference, it often has a low signal-to-noise-ratio (SNR). We proposed a novel deep learning (DL)-based algorithm armed with wide activation neural network blocks to address both issues.

METHODS

B correction based on reduced saturation offset acquisitions was performed for the positive and negative sides of the z-spectrum separately. For each side, a separate deep residual network was trained to learn the nonlinear mapping from few CEST-weighted images acquired at different ppm values to the one at 3 ppm (where GluCEST peaks) in the same side of the z-spectrum.

RESULTS

All DL-based methods outperformed the "traditional" method visually and quantitatively. The wide activation blocks-based method showed the highest performance in terms of Structural Similarity Index (SSIM) and peak signal-to-noise ratio (PSNR), which were 0.84 and 25dB respectively. SNR increases in regions of interest were over 8dB.

CONCLUSION

We demonstrated that the new DL-based method can reduce the entire GluCEST imaging time by ˜50% and yield higher SNR than current state-of-the-art.

摘要

目的

谷氨酸加权化学交换饱和传递(GluCEST)MRI 是一种用于绘制大脑实质谷氨酸的非侵入性技术。由于对磁场(B)不均匀性的敏感性,由于在几个饱和偏移频率下重复采集图像,总采集时间延长,这可能导致增加对患者运动的敏感性等实际问题。由于 GluCEST 信号源自小 z 谱差异,因此通常具有低信噪比(SNR)。我们提出了一种基于深度神经网络的新型算法,配备了宽激活神经网络块,以解决这两个问题。

方法

对 z 谱的正侧和负侧分别进行基于减少饱和偏移采集的 B 校正。对于每一侧,单独训练一个单独的深度残差网络,以学习从不同 ppm 值采集的少数几个 CEST 加权图像到同一 z 谱的 3 ppm 处(GluCEST 峰)的非线性映射。

结果

所有基于 DL 的方法在视觉和定量方面都优于“传统”方法。基于宽激活块的方法在结构相似性指数(SSIM)和峰值信噪比(PSNR)方面表现出最高的性能,分别为 0.84 和 25dB。感兴趣区域的 SNR 增加了 8dB 以上。

结论

我们证明了新的基于 DL 的方法可以将整个 GluCEST 成像时间减少约 50%,并产生比当前最先进方法更高的 SNR。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d5f8/8082274/df1d8e2668de/nihms-1659891-f0001.jpg

相似文献

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Accelerating GluCEST imaging using deep learning for B correction.利用深度学习进行 B 校正加速 GluCEST 成像。
Magn Reson Med. 2020 Oct;84(4):1724-1733. doi: 10.1002/mrm.28289. Epub 2020 Apr 17.

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