Image-mode performance characterisation of a positron emission tomography subsystem designed for Biology-guided radiotherapy (BgRT)
Zhiqiang Hu(Jiangsu University), Murat Sürücü(Stanford University), Shervin M. Shirvani(RefleXion Medical (United States)), O.M. Oderinde(RefleXion Medical (United States)), Bin Han(Stanford University), Matthew Bieniosek(RefleXion Medical (United States)), Nataliya Kovalchuk(Stanford University), Daniel T. Chang(Stanford University), Yulan Ren(Stanford University), Lucas K. Vitzthum(Stanford University), Peter D. Olcott(RefleXion Medical (United States)), Lei Xing(Stanford University), Valentina Ferri(Stanford University), Thomas Laurence(RefleXion Medical (United States)), Manoj Narayanan(RefleXion Medical (United States)), Andrei Iagaru(Society of Nuclear Medicine and Molecular Imaging)
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