Predicting pathological complete response to neoadjuvant systemic therapy for triple-negative breast cancers using deep learning on multiparametric MRIs

Zijian Zhou, Beatriz E. Adrada, Rosalind P. Candelaria, Nabil Elshafeey, Medine Boge, Rania M. Mohamed, Sanaz Pashapoor, Jia Sun, Zhan Xu, Bikash Panthi, Jong Bum Son, Mary S. Guirguis, Miral M. Patel, Gary J. Whitman, Tanya W. Moseley, Marion E. Scoggins, Jason B. White, Jennifer K. Litton, Vincente Valero, Kelly K. HuntDebu Tripathy, Wei Yang, Peng Wei, Clinton Yam, Mark D. Pagel, Gaiane M. Rauch, Jingfei Ma

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Medicine & Life Sciences