Evaluation of 14 nonlinear deformation algorithms applied to human brain MRI registration
Arno Klein(Child Mind Institute), Ramin V. Parsey(Stony Brook University), Daniel Rueckert(Munich Center for Machine Learning), Brian Avants(California University of Pennsylvania), Babak A. Ardekani(Nathan Kline Institute for Psychiatric Research), Tom Vercauteren(King's College London), John Ashburner(University College London), Pierre Hellier(Institut national de recherche en sciences et technologies du numérique), Gary E. Christensen(University of Iowa), Claude Lepage(McGill University), J. John Mann(New York Psychoanalytic Society and Institute), D. Louis Collins(Montreal Neurological Institute and Hospital), Jesper Andersson(University of Oxford), Roger P. Woods(University of California, Los Angeles), Paul M. Thompson(University of Southern California), Mark Jenkinson(John Radcliffe Hospital), Joo Hyun Song(University of Iowa), James C. Gee(California University of Pennsylvania)
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