Background: To generate a robust predictive model of Early (3 months) Graft Loss after liver transplantation, we used a Bayesian approach to combine evidence from a prospective European cohort (Liver-Match) and the United Network for Organ Sharing registry. Methods: Liver-Match included 1480 consecutive primary liver transplants performed from 2007 to 2009 and the United Network for Organ Sharing a time-matched series of 9740 transplants. There were 173 and 706 Early Graft Loss, respectively. Multivariate analysis identified as significant predictors of Early Graft Loss: donor age, donation after cardiac death, cold ischaemia time, donor body mass index and height, recipient creatinine, bilirubin, disease aetiology, prior upper abdominal surgery and portal thrombosis. Results: A Bayesian Cox model was fitted to Liver-Match data using the United Network for Organ Sharing findings as prior information, allowing to generate an Early Graft Loss-Donor Risk Index and an Early Graft Loss-Recipient Risk Index. A Donor-Recipient Allocation Model, obtained by adding Early Graft Loss-Donor Risk Index to Early Graft Loss-Recipient Risk Index, was then validated in a distinct United Network for Organ Sharing (year 2010) cohort including 2964 transplants. Donor-Recipient Allocation Model updating using the independent Turin Transplant Centre dataset, allowed to predict Early Graft Loss with good accuracy (c-statistic: 0.76). Conclusion: Donor-Recipient Allocation Model allows a reliable donor and recipient-based Early Graft Loss prediction. The Bayesian approach permits to adapt the original Donor-Recipient Allocation Model by incorporating evidence from other cohorts, resulting in significantly improved predictive capability. © 2013 Editrice Gastroenterologica Italiana S.r.l.

A Bayesian methodology to improve prediction of early graft loss after liver transplantation derived from the Liver Match study

Pinna A. D.;Caraceni P.;Bertolotti G.;Patrono D.;Antonelli B.;Gelli M.;Pinna A. D.;Grazi G. L.;Cucchetti A.;Cuomo O.;
2014

Abstract

Background: To generate a robust predictive model of Early (3 months) Graft Loss after liver transplantation, we used a Bayesian approach to combine evidence from a prospective European cohort (Liver-Match) and the United Network for Organ Sharing registry. Methods: Liver-Match included 1480 consecutive primary liver transplants performed from 2007 to 2009 and the United Network for Organ Sharing a time-matched series of 9740 transplants. There were 173 and 706 Early Graft Loss, respectively. Multivariate analysis identified as significant predictors of Early Graft Loss: donor age, donation after cardiac death, cold ischaemia time, donor body mass index and height, recipient creatinine, bilirubin, disease aetiology, prior upper abdominal surgery and portal thrombosis. Results: A Bayesian Cox model was fitted to Liver-Match data using the United Network for Organ Sharing findings as prior information, allowing to generate an Early Graft Loss-Donor Risk Index and an Early Graft Loss-Recipient Risk Index. A Donor-Recipient Allocation Model, obtained by adding Early Graft Loss-Donor Risk Index to Early Graft Loss-Recipient Risk Index, was then validated in a distinct United Network for Organ Sharing (year 2010) cohort including 2964 transplants. Donor-Recipient Allocation Model updating using the independent Turin Transplant Centre dataset, allowed to predict Early Graft Loss with good accuracy (c-statistic: 0.76). Conclusion: Donor-Recipient Allocation Model allows a reliable donor and recipient-based Early Graft Loss prediction. The Bayesian approach permits to adapt the original Donor-Recipient Allocation Model by incorporating evidence from other cohorts, resulting in significantly improved predictive capability. © 2013 Editrice Gastroenterologica Italiana S.r.l.
2014
Angelico M.; Nardi A.; Romagnoli R.; Marianelli T.; Corradini S.G.; Tandoi F.; Gavrila C.; Salizzoni M.; Pinna A.D.; Cillo U.; Gridelli B.; De Carlis L.G.; Colledan M.; Gerunda G.E.; Costa A.N.; Strazzabosco M.; Angelico M.; Cillo U.; Fagiuoli S.; Strazzabosco M.; Caraceni P.; Toniutto P.L.; Sal-izzoni T.M.; Bertolotti G.; Patrono D.; DeCarlis L.; Slim A.; Mangoni J.M.E.; Rossi G.; Caccamo L.; Antonelli B.; Mazzaferro V.; Regalia E.; Sposito C.; Colledan M.; Corno V.; Marin S.; Cillo U.; Vitale A.; Gringeri E.; Donataccio M.; Donataccio D.; Baccarani U.; Lorenzin D.; Bitetto D.; Valente U.; Gelli M.; Cupo P.; Gerunda G.E.; Rompianesi G.; Pinna A.D.; Grazi G.L.; Cucchetti A.; Zanfi C.; Risaliti A.; Faraci M.G.; Tisone G.; Anselmo A.; Lenci I.; Sforza D.; Agnes S.; Di Mugno M.; Avolio A.M.; Ettorre G.M.; Miglioresi L.; Vennarecci G.; Berloco P.; Rossi M.; Corradini G.; Molinaro A.; Calise F.; Scuderi V.; Cuomo O.; Migliaccio C.; Lupo L.; Notarnicola G.; Gridelli B.; Volpes R.; LiPetri S.; Zamboni G.; Carbotta G.; Dedola S.
File in questo prodotto:
Eventuali allegati, non sono esposti

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/960579
 Attenzione

Attenzione! I dati visualizzati non sono stati sottoposti a validazione da parte dell'ateneo

Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 16
  • ???jsp.display-item.citation.isi??? 14
social impact