Keywords:
Performed at one institution, Diagnostic or prognostic study, Retrospective, Cancer, Screening, Computer Applications-Detection, diagnosis, CAD, Mammography, Oncology, Breast, Artificial Intelligence, Artificial Intelligence and Machine Learning
Authors:
G. Porrello, A. Orlando, M. I. Schillaci, M. Dimarco, M. L. Di Vittorio, S. Busalacchi, M. insalaco, S. Vitabile, M. Midiri; Palermo/IT
DOI:
10.26044/ecr2020/C-05794
References
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