The impact of venous thromboembolism before open or minimally-invasive radical cystectomy in the USA: insurance claims data on perioperative outcomes and healthcare costs
Francesco Del Giudice(Sapienza University of Rome), Benjamin I. CHUNG(Stanford University), Anas Tresh(Stanford University), Biagio Barone(Ospedale San Paolo), Francesco Porpiglia(University of Turin), Dalila CARINO(Policlinico Umberto I), Bernardo ROCCO(University of Milan), Gian Maria BUSETTO(University of Foggia), Ugo FALAGARIO(University of Foggia), Felice CROCETTO(University of Naples Federico II), Benjamin PRADERE(Lyon Genou Centre Albert Trillat), Wojciech KRAJEWSKI(Wroclaw Medical University), Łukasz NOWAK(Wroclaw Medical University), Marco MOSCHINI(Vita-Salute San Raffaele University), Andrea MARI(University of Florence), Simone CRIVELLARO(University of Illinois Chicago), Cristian FIORI(University of Turin), Daniele AMPARORE(University of Turin), Renate PICHLER(Innsbruck Medical University), Shufeng LI(Stanford University), Benjamin CHALLACOMBE(St Thomas' Hospital), Rajesh NAIR(St Thomas' Hospital), Sophia Prendiville(Stanford University), Federico BELLADELLI(Vita-Salute San Raffaele University), Ettore DE BERARDINIS(Policlinico Umberto I), Vincenzo ASERO(Policlinico Umberto I), Carlo M. SCORNAJENGHI(Policlinico Umberto I), Matteo FERRO(Istituti di Ricovero e Cura a Carattere Scientifico), Riccardo AUTORINO(Rush University Medical Center), Tomasz Szydełko(Wroclaw Medical University), Abhay Rané(East Surrey Hospital), Satvir Basran(Stanford Medicine)
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