Prediction of Survival After Partial Hepatectomy Using a Physiologically Based Pharmacokinetic Model of Indocyanine Green Liver Function Tests

ORCID
0000-0002-4503-5675
Zugehörigkeit
Institute for Theoretical Biology, Institute of Biology, Humboldt University
Köller, Adrian;
ORCID
0000-0002-4588-4925
Zugehörigkeit
Institute for Theoretical Biology, Institute of Biology, Humboldt University
Grzegorzewski, Jan;
GND
1044672463
ORCID
0000-0002-9722-9391
Zugehörigkeit
Experimental Transplantation Surgery, Department of General, Visceral and Vascular Surgery, Jena University Hospital
Tautenhahn, Hans-Michael;
ORCID
0000-0003-1725-179X
Zugehörigkeit
Institute for Theoretical Biology, Institute of Biology, Humboldt University
König, Matthias

The evaluation of hepatic function and functional capacity of the liver are essential tasks in hepatology as well as in hepatobiliary surgery. Indocyanine green (ICG) is a widely applied test compound that is used in clinical routine to evaluate hepatic function. Important questions for the functional evaluation with ICG in the context of hepatectomy are how liver disease such as cirrhosis alters ICG elimination, and if postoperative survival can be predicted from preoperative ICG measurements. Within this work a physiologically based pharmacokinetic (PBPK) model of ICG was developed and applied to the prediction of the effects of a liver resection under various degrees of cirrhosis. For the parametrization of the computational model and validation of model predictions a database of ICG pharmacokinetic data was established. The model was applied (i) to study the effect of liver cirrhosis and liver resection on ICG pharmacokinetics; and (ii) to evaluate the model-based prediction of postoperative ICG-R15 (retention ratio 15 min after administration) as a measure for postoperative outcome. Key results are the accurate prediction of changes in ICG pharmacokinetics caused by liver cirrhosis and postoperative changes of ICG-elimination after liver resection, as validated with a wide range of data sets. Based on the PBPK model, individual survival after liver resection could be classified, demonstrating its potential value as a clinical tool.

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Rechteinhaber: Copyright © 2021 Köller, Grzegorzewski, Tautenhahn and König.

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