To explain or not to explain?—Artificial intelligence explainability in clinical decision support systems
Julia Amann(ETH Zurich), Sara Gerke(Harvard University), Megan Coffee, Sune Holm(University of Copenhagen), Roberto V. Zicari(Seoul National University), Vince I. Madai(Berlin Institute of Health at Charité - Universitätsmedizin Berlin), Dennis Vetter(Goethe University Frankfurt), Thilo Hagendorff(University of Tübingen), Michelle Livne(Charité - Universitätsmedizin Berlin), Helle Collatz Christensen(University of Copenhagen), Stig Nikolaj Fasmer Blomberg(University of Copenhagen), Andy Spezzatti(University of California, Berkeley), Inga Strümke(Norwegian University of Science and Technology), Thomas Krendl Gilbert(Cornell University)
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