Fast chemical exchange saturation transfer imaging based on PROPELLER acquisition and deep neural network reconstruction.
Chenlu GuoJian WuJens T RosenbergTangi RousselShuhui CaiCongbo CaiPublished in: Magnetic resonance in medicine (2020)
Although the deep neural network is trained entirely on synthesized data, it works well on reconstructing experimental data. The proof of concept study demonstrates that the combination of the PROPELLER sampling scheme and the deep neural network enables considerable acceleration of saturated image acquisition and may find applications in CEST MRI.