TY - JOUR
T1 - Development and validation of a REcurrent Liver cAncer Prediction ScorE (RELAPSE) following liver transplantation in patients with hepatocellular carcinoma
T2 - Analysis of the US Multicenter HCC Transplant Consortium
AU - Tran, Benjamin V.
AU - Moris, Dimitrios
AU - Markovic, Daniela
AU - Zaribafzadeh, Hamed
AU - Henao, Ricardo
AU - Lai, Quirino
AU - Florman, Sander S.
AU - Tabrizian, Parissa
AU - Haydel, Brandy
AU - Ruiz, Richard M.
AU - Klintmalm, Goran B.
AU - Lee, David D.
AU - Taner, C. Burcin
AU - Hoteit, Maarouf
AU - Levine, Matthew H.
AU - Cillo, Umberto
AU - Vitale, Alessandro
AU - Verna, Elizabeth C.
AU - Halazun, Karim J.
AU - Tevar, Amit D.
AU - Humar, Abhinav
AU - Chapman, William C.
AU - Vachharajani, Neeta
AU - Aucejo, Federico
AU - Lerut, Jan
AU - Ciccarelli, Olga
AU - Nguyen, Mindie H.
AU - Melcher, Marc L.
AU - Viveiros, Andre
AU - Schaefer, Benedikt
AU - Hoppe-Lotichius, Maria
AU - Mittler, Jens
AU - Nydam, Trevor L.
AU - Markmann, James F.
AU - Rossi, Massimo
AU - Mobley, Constance
AU - Ghobrial, Mark
AU - Langnas, Alan N.
AU - Carney, Carol A.
AU - Berumen, Jennifer
AU - Schnickel, Gabriel T.
AU - Sudan, Debra L.
AU - Hong, Johnny C.
AU - Rana, Abbas
AU - Jones, Christopher M.
AU - Fishbein, Thomas M.
AU - Busuttil, Ronald W.
AU - Barbas, Andrew S.
AU - Agopian, Vatche G.
N1 - Funding Information:
Goran B. Klintmalm consults for Immucor. Mindie H. Nguyen consults for Exact Science, advises for Exelixis, and received grants from Exact Science, HelloHealth, CurveBio, and Glycotest. Parissa Tabrizian consults for Bayer, Boston Scientific, and Aztrazeneca. Maarouf Hoteit advises for HepQuant, LLC. Matthew H. Levine consults for Eurofins B. Elizabeth C. Verna received grants from Salix. William C. Chapman is an employee of Mid-America Transplant. Mark Ghobrial consults for and has stock in TransMedics. The remaining authors have no conflicts to report.
Publisher Copyright:
© 2023 John Wiley and Sons Ltd. All rights reserved.
PY - 2023/7
Y1 - 2023/7
N2 - HCC recurrence following liver transplantation (LT) is highly morbid and occurs despite strict patient selection criteria. Individualized prediction of post-LT HCC recurrence risk remains an important need. Clinico-radiologic and pathologic data of 4981 patients with HCC undergoing LT from the US Multicenter HCC Transplant Consortium (UMHTC) were analyzed to develop a REcurrent Liver cAncer Prediction ScorE (RELAPSE). Multivariable Fine and Gray competing risk analysis and machine learning algorithms (Random Survival Forest and Classification and Regression Tree models) identified variables to model HCC recurrence. RELAPSE was externally validated in 1160 HCC LT recipients from the European Hepatocellular Cancer Liver Transplant study group. Of 4981 UMHTC patients with HCC undergoing LT, 71.9% were within Milan criteria, 16.1% were initially beyond Milan criteria with 9.4% downstaged before LT, and 12.0% had incidental HCC on explant pathology. Overall and recurrence-free survival at 1, 3, and 5 years was 89.7%, 78.6%, and 69.8% and 86.8%, 74.9%, and 66.7%, respectively, with a 5-year incidence of HCC recurrence of 12.5% (median 16 months) and non-HCC mortality of 20.8%. A multivariable model identified maximum alpha-fetoprotein (HR = 1.35 per-log SD, 95% CI,1.22-1.50, p < 0.001), neutrophil-lymphocyte ratio (HR = 1.16 per-log SD, 95% CI,1.04-1.28, p < 0.006), pathologic maximum tumor diameter (HR = 1.53 per-log SD, 95% CI, 1.35-1.73, p < 0.001), microvascular (HR = 2.37, 95%-CI, 1.87-2.99, p < 0.001) and macrovascular (HR = 3.38, 95% CI, 2.41-4.75, p < 0.001) invasion, and tumor differentiation (moderate HR = 1.75, 95% CI, 1.29-2.37, p < 0.001; poor HR = 2.62, 95% CI, 1.54-3.32, p < 0.001) as independent variables predicting post-LT HCC recurrence (C-statistic = 0.78). Machine learning algorithms incorporating additional covariates improved prediction of recurrence (Random Survival Forest C-statistic = 0.81). Despite significant differences in European Hepatocellular Cancer Liver Transplant recipient radiologic, treatment, and pathologic characteristics, external validation of RELAPSE demonstrated consistent 2-and 5-year recurrence risk discrimination (AUCs 0.77 and 0.75, respectively). We developed and externally validated a RELAPSE score that accurately discriminates post-LT HCC recurrence risk and may allow for individualized post-LT surveillance, immunosuppression modification, and selection of high-risk patients for adjuvant therapies.
AB - HCC recurrence following liver transplantation (LT) is highly morbid and occurs despite strict patient selection criteria. Individualized prediction of post-LT HCC recurrence risk remains an important need. Clinico-radiologic and pathologic data of 4981 patients with HCC undergoing LT from the US Multicenter HCC Transplant Consortium (UMHTC) were analyzed to develop a REcurrent Liver cAncer Prediction ScorE (RELAPSE). Multivariable Fine and Gray competing risk analysis and machine learning algorithms (Random Survival Forest and Classification and Regression Tree models) identified variables to model HCC recurrence. RELAPSE was externally validated in 1160 HCC LT recipients from the European Hepatocellular Cancer Liver Transplant study group. Of 4981 UMHTC patients with HCC undergoing LT, 71.9% were within Milan criteria, 16.1% were initially beyond Milan criteria with 9.4% downstaged before LT, and 12.0% had incidental HCC on explant pathology. Overall and recurrence-free survival at 1, 3, and 5 years was 89.7%, 78.6%, and 69.8% and 86.8%, 74.9%, and 66.7%, respectively, with a 5-year incidence of HCC recurrence of 12.5% (median 16 months) and non-HCC mortality of 20.8%. A multivariable model identified maximum alpha-fetoprotein (HR = 1.35 per-log SD, 95% CI,1.22-1.50, p < 0.001), neutrophil-lymphocyte ratio (HR = 1.16 per-log SD, 95% CI,1.04-1.28, p < 0.006), pathologic maximum tumor diameter (HR = 1.53 per-log SD, 95% CI, 1.35-1.73, p < 0.001), microvascular (HR = 2.37, 95%-CI, 1.87-2.99, p < 0.001) and macrovascular (HR = 3.38, 95% CI, 2.41-4.75, p < 0.001) invasion, and tumor differentiation (moderate HR = 1.75, 95% CI, 1.29-2.37, p < 0.001; poor HR = 2.62, 95% CI, 1.54-3.32, p < 0.001) as independent variables predicting post-LT HCC recurrence (C-statistic = 0.78). Machine learning algorithms incorporating additional covariates improved prediction of recurrence (Random Survival Forest C-statistic = 0.81). Despite significant differences in European Hepatocellular Cancer Liver Transplant recipient radiologic, treatment, and pathologic characteristics, external validation of RELAPSE demonstrated consistent 2-and 5-year recurrence risk discrimination (AUCs 0.77 and 0.75, respectively). We developed and externally validated a RELAPSE score that accurately discriminates post-LT HCC recurrence risk and may allow for individualized post-LT surveillance, immunosuppression modification, and selection of high-risk patients for adjuvant therapies.
KW - Humans
KW - Carcinoma, Hepatocellular
KW - Liver Neoplasms
KW - Liver Transplantation/adverse effects
KW - Risk Factors
KW - Neoplasm Recurrence, Local/pathology
KW - Retrospective Studies
KW - Recurrence
UR - http://www.scopus.com/inward/record.url?scp=85160310874&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85160310874&partnerID=8YFLogxK
U2 - 10.1097/LVT.0000000000000145
DO - 10.1097/LVT.0000000000000145
M3 - Article
C2 - 37029083
AN - SCOPUS:85160310874
SN - 1527-6465
VL - 29
SP - 683
EP - 697
JO - Liver Transplantation
JF - Liver Transplantation
IS - 7
ER -