Deep‐learning‐based super‐resolution for accelerating chemical exchange saturation transfer MRI
R. Prabakaran(City University of Hong Kong), Kannie W. Y. Chan(Kennedy Krieger Institute), Jianpan Huang(Xiamen University), Joseph H. C. Lai(City University of Hong Kong), Jiadi Xu(Kennedy Krieger Institute), Se Weon Park(City University of Hong Kong), Abdul‐mojeed Olabisi Ilyas, Kexin Wang(Kennedy Krieger Institute), Zilin Chen(Chinese Academy of Medical Sciences & Peking Union Medical College), Huabing Liu(City University of Hong Kong)
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