Abstract

Background & AimsAcute-on-chronic liver failure (ACLF) is usually associated with a precipitating event and results in the failure of other organ systems and high short-term mortality. Current prediction models fail to adequately estimate prognosis and need for liver transplantation (LT) in ACLF. This study develops and validates a dynamic prediction model for patients with ACLF that uses both longitudinal and survival data.MethodsAdult patients on the UNOS waitlist for LT between 11.01.2016-31.12.2019 were included. Repeated model for end-stage liver disease-sodium (MELD-Na) measurements were jointly modelled with Cox survival analysis to develop the ACLF joint model (ACLF-JM). Model validation was carried out using separate testing data with area under curve (AUC) and prediction errors. An online ACLF-JM tool was created for clinical application.ResultsIn total, 30,533 patients were included. ACLF grade 1 to 3 was present in 16.4%, 10.4% and 6.2% of patients, respectively. The ACLF-JM predicted survival significantly (p <0.001) better than the MELD-Na score, both at baseline and during follow-up. For 28- and 90-day predictions, ACLF-JM AUCs ranged between 0.840-0.871 and 0.833-875, respectively. Compared to MELD-Na, AUCs and prediction errors were improved by 23.1%-62.0% and 5%-37.6% respectively. Also, the ACLF-JM could have prioritized patients with relatively low MELD-Na scores but with a 4-fold higher rate of waiting list mortality.ConclusionsThe ACLF-JM dynamically predicts outcome based on current and past disease severity. Prediction performance is excellent over time, even in patients with ACLF-3. Therefore, the ACLF-JM could be used as a clinical tool in the evaluation of prognosis and treatment in patients with ACLF.Lay summaryAcute-on-chronic liver failure (ACLF) progresses rapidly and often leads to death. Liver transplantation is used as a treatment and the sickest patients are treated first. In this study, we develop a model that predicts survival in ACLF and we show that the newly developed model performs better than the currently used model for ranking patients on the liver transplant waiting list.

Highlights

  • Liver transplantation (LT) is a lifesaving treatment for patients with acute-on-chronic-liver failure (ACLF)

  • Sundaram et al showed that Acute-on-chronic liver failure (ACLF) death and waiting list removal rate were highest in ACLF-3 patients with model for end-stage liver disease-sodium (MELD-Na)

  • We investigated the performance of ACLF joint model (ACLF-joint model (JM)) for 28- and 90-day survival prediction in the United Network for Organ Sharing (UNOS) registry and compared its performance to the MELD-Na score

Read more

Summary

Introduction

Liver transplantation (LT) is a lifesaving treatment for patients with acute-on-chronic-liver failure (ACLF). ACLF results in the failure of one or more organs and is associated with high short-term mortality.[1,2,3] The current model that prioritizes patients for LT, the model for end-stage liver disease-sodium (MELD-Na) score,[4,5] underestimates disease severity in ACLF.[6,7] This is because MELD-Na does not consider temporal development of single or multiorgan failure(s) (involving the 6 major organs/systems – i.e. liver, kidney, brain, coagulation, circulation, and respiration).

Objectives
Methods
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call