Artificial intelligence for breast cancer: Implications for diagnosis and management
Jehad Feras AlSamhori(University of Jordan), Abdulqadir J. Nashwan(University of Sharjah), Abdel Rahman Feras AlSamhori(University of Jordan), Ahmad Feras AlSamhori(University of Jordan), Hamzeh Feras Alshahwan(University of Jordan), Ahmad Qalajo(University of Jordan), Mohammad Al Soudi(University of Jordan), Rihane Zakraoui(University of Jordan), Mohammed Al-abbadi(University of Jordan), Leslie Anne Duncan(The University of Texas Health Science Center at Houston), Saif Aldeen AlRyalat(University of Colorado System)
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