Analyzing breast cancer invasive disease event classification through explainable artificial intelligence
Raffaella Massafra(Istituto Tumori Bari), Vito Lorusso(Istituto Tumori Bari), Maria Colomba Comes(Istituto Tumori Bari), R. Bellotti(University of Bari Aldo Moro), Annarita Fanizzi(Istituto Tumori Bari), Domenico Pomarico(Istituto Nazionale di Fisica Nucleare, Sezione di Bari), L. Rinaldi(Istituto Tumori Bari), Maria Irene Pastena(Istituto Tumori Bari), Angela Lombardi(Polytechnic University of Bari), Daniele La Forgia(Istituto Tumori Bari), Sergio Diotaiuti(Istituto Tumori Bari), Annalisa Nardone(Istituto Tumori Bari), Vittorio Didonna(Istituto Tumori Bari), Pasquale Tamborra(Istituto Tumori Bari), Agnese Latorre(Istituto Tumori Bari), Samantha Bove(Istituto Tumori Bari), Francesco Giotta(Istituto Tumori Bari), Cosmo Maurizio Ressa(Istituto Tumori Bari), Angelo Paradiso(Universidad de Oviedo), Nicola Amoroso(University of Bari Aldo Moro), Alfredo Zito(Istituto Tumori Bari), Luisa Galati(European Institute of Oncology)
Cited by 31
Related Papers
Signatures of mutational processes in human cancer
|Nature|2013|10.1k
PAMELA Measurements of Cosmic-Ray Proton and Helium Spectra
|Science|2011|899
New Measurement of the Antiproton-to-Proton Flux Ratio up to 100 GeV in the Cosmic Radiation
|Physical Review Letters|2009|549
PAMELA Results on the Cosmic-Ray Antiproton Flux from 60 MeV to 180 GeV in Kinetic Energy
|Physical Review Letters|2010|544