Recommendations towards standards for quantitative MRI (qMRI) and outstanding needs
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Holden H. Wu | Edward F. Jackson | R. S. Hinks | J. Gunter | G. Metzger | R. Nordstrom | M. Does | M. Griswold | B. Sahiner | P. Mukherjee | S. Russek | R. Lattanzi | M. Steckner | A. Shukla-Dave | M. Boss | J. Evelhoch | D. Sullivan | L. Marinelli | Huiming Zhang | N. Serkova | K. Keenan | K. Stupic | L. Wilmes | J. R. Biller | J. Delfino | Stuart W. Hoffman | Geena Kim | Xiaojuan Li | A. Peskin | Elena Perez | Geena Kim
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