Accelerating GluCEST imaging using deep learning for B

Autor: Yiran, Li, Danfeng, Xie, Abigail, Cember, Ravi Prakash Reddy, Nanga, Hanlu, Yang, Dushyant, Kumar, Hari, Hariharan, Li, Bai, John A, Detre, Ravinder, Reddy, Ze, Wang
Rok vydání: 2019
Předmět:
Zdroj: Magn Reson Med
ISSN: 1522-2594
Popis: PURPOSE. Glutamate Chemical Exchange Saturation Transfer (GluCEST) MRI is a noninvasive technique for mapping parenchymal glutamate in the brain. Because of the sensitivity to field (B(0)) 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 sensitive to patient motions. Since 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(0) 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 one 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 increase 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.
Databáze: OpenAIRE