Automated tumor segmentation and brain tissue extraction from multiparametric MRI of pediatric brain tumors: A multi-institutional study
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C. Davatzikos | M. Aboian | A. Resnick | A. Vossough | C. Kline | P. Storm | Ariana M. Familiar | J. Ware | S. Bagheri | Debanjan Haldar | L. Vidal | M. Prados | Rachel Madhogarhia | Sherjeel Arif | A. Nabavizadeh | H. Anderson | Nastaran Khalili | Wenxin Tu | Shuvanjan Haldar | Karthik Viswanathan | S. Muller | Anahita Fathi Kazerooni | Meen Chul Kim
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