TY - JOUR
T1 - A Bayesan methodology to improve prediction of early graft loss after liver transplantation derived from the liver match study.
AU - Angelico, M
AU - Nardi, A
AU - Fagiuoli, S
AU - Strazzabosco, M
AU - Caraceni, P
AU - Toniutto, Pl
AU - Nannicosta, A
AU - Salizzoni, Tm
AU - Romagnoli, R
AU - Bertolotti, G
AU - Patrono, D
AU - De Carlis, L
AU - Slim, A
AU - Mangoni, Jm
AU - Rossi, G
AU - Caccamo, L
AU - Antonelli, B
AU - Mazzaferro, V
AU - Regalia, E
AU - Sposito, C
AU - Colledan, M
AU - Corno, V
AU - Tagliabue, F
AU - Marin, S
AU - Cillo, U
AU - Vitale, A
AU - Gringeri, E
AU - Donataccio, M
AU - Donataccio, D
AU - Baccarani, U
AU - Lorenzin, D
AU - Bitetto, D
AU - Valente, U
AU - Gelli, M
AU - Cupo, P
AU - Avolio, Alfonso Wolfango
AU - Vespasiano, F.
PY - 2014
Y1 - 2014
N2 - 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.\r\n\r\nMETHODS: 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.\r\n\r\nRESULTS: 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).\r\n\r\nCONCLUSION: 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.
AB - 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.\r\n\r\nMETHODS: 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.\r\n\r\nRESULTS: 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).\r\n\r\nCONCLUSION: 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.
KW - Bayesan methodology
KW - Liver match
KW - Transplantation Outcome
KW - liver transplantation
KW - Bayesan methodology
KW - Liver match
KW - Transplantation Outcome
KW - liver transplantation
UR - https://publicatt.unicatt.it/handle/10807/65084
UR - https://www.scopus.com/inward/citedby.uri?partnerID=HzOxMe3b&scp=84895547429&origin=inward
UR - https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=84895547429&origin=inward
U2 - 10.1016/j.dld.2013.11.004
DO - 10.1016/j.dld.2013.11.004
M3 - Article
SN - 1590-8658
VL - 46
SP - 340
EP - 347
JO - Digestive and Liver Disease
JF - Digestive and Liver Disease
IS - Aprile
ER -