Rams, hounds and white boxes: Investigating human-AI collaboration protocols in medical diagnosis
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F. Cabitza | M. Cameli | M. Barandas | L. Sconfienza | M. Pastore | A. Campagner | G. Mandoli | Luca Ronzio | Hugo Gamboa | Duarte Folgado | M. C. Pastore | Andrea Campagner
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