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The AKI Prediction Score: a new prediction model for acute kidney injury after liver transplantation

Authors :
Jubi E. de Haan
Paolo Muiesan
Darius F. Mirza
Anna Paola Mitterhofer
John Isaac
M. Thamara P. R. Perera
Jan N. M. IJzermans
Ilaria Umbro
Marit Kalisvaart
Jeroen de Jonge
Andrea Schlegel
James Ferguson
Wojciech G. Polak
Surgery
Intensive Care
Source :
HPB, 21(12), 1707-1717. John Wiley & Sons Inc.
Publication Year :
2019
Publisher :
Elsevier BV, 2019.

Abstract

Background Acute kidney injury (AKI) is a frequent complication after liver transplantation. Although numerous risk factors for AKI have been identified, their cumulative impact remains unclear. Our aim was therefore to design a new model to predict post-transplant AKI. Methods Risk analysis was performed in patients undergoing liver transplantation in two centres (n = 1230). A model to predict severe AKI was calculated, based on weight of donor and recipient risk factors in a multivariable regression analysis according to the Framingham risk-scheme. Results Overall, 34% developed severe AKI, including 18% requiring postoperative renal replacement therapy (RRT). Five factors were identified as strongest predictors: donor and recipient BMI, DCD grafts, FFP requirements, and recipient warm ischemia time, leading to a range of 0–25 score points with an AUC of 0.70. Three risk classes were identified: low, intermediate and high-risk. Severe AKI was less frequently observed if recipients with an intermediate or high-risk were treated with a renal-sparing immunosuppression regimen (29 vs. 45%; p = 0.007). Conclusion The AKI Prediction Score is a new instrument to identify recipients at risk for severe post-transplant AKI. This score is readily available at end of the transplant procedure, as a tool to timely decide on the use of kidney-sparing immunosuppression and early RRT.

Details

ISSN :
1365182X
Volume :
21
Database :
OpenAIRE
Journal :
HPB
Accession number :
edsair.doi.dedup.....98b640d6aff235ac04ae9a6e1e7ad282