Literature DB >> 17460563

Laboratory test variability and model for end-stage liver disease score calculation: effect on liver allocation and proposal for adjustment.

Matteo Ravaioli1, Michele Masetti, Lorenza Ridolfi, Maurizio Capelli, Gian Luca Grazi, Nicola Venturoli, Fabrizio Di Benedetto, Francesco Bianco Bianchi, Giulia Cavrini, Stefano Faenza, Bruno Begliomini, Antonio Daniele Pinna, Giorgio Enrico Gerunda, Giorgio Ballardini.   

Abstract

BACKGROUND: The use of the Model for End-Stage Liver Disease (MELD) score to prioritize patients on liver waiting lists must take the bias of different laboratories into account.
METHODS: We evaluated the outcome of 418 patients listed during 1 year whose MELD score was computed by two laboratories (lab 1 and lab 2). The two labs had different normality ranges for bilirubin (maximal normal value [Vmax]: 1.1 for lab 1 and 1.2 for lab 2) and creatinine (Vmax: 1.2 for lab 1 and 1.4 for lab 2). The outcome during the waiting time was evaluated by considering the liver transplantations and the dropouts, which included deaths on the list, tumor progression, and patients who were too sick.
RESULTS: Although the clinical features of patients were similar between the two laboratories, 36 (13.1%) out of 275 were dropped from the list in lab 1, compared to 5 (3.5%) out of 143 in lab 2 (P<0.01). The differences were mainly due to the deaths on the list (8% lab 1 vs. 2.1% lab 2, P<0.05). The competing risk analysis confirmed the different risk of dropout between the two labs independently of the MELD score, blood group, and preoperative diagnosis. The bias on MELD calculation was considered and bilirubin and creatinine values were "normalized" to Vmax of lab 1 (corrected value=measured value x Vmax lab 1/Vmax lab 2). By comparing receiver operating characteristic curves, the ability of MELD to predict the 6-month dropouts significantly increased from an area under the curve of 0.703 to 0.716 after "normalization" (P<0.05).
CONCLUSIONS: Normalization of MELD is a correct and good compromise to avoid systematic bias due to different laboratory methods.

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Year:  2007        PMID: 17460563     DOI: 10.1097/01.tp.0000259251.92398.2a

Source DB:  PubMed          Journal:  Transplantation        ISSN: 0041-1337            Impact factor:   4.939


  4 in total

Review 1.  Kidney Failure and Liver Allocation: Current Practices and Potential Improvements.

Authors:  Varun Saxena; Jennifer C Lai
Journal:  Adv Chronic Kidney Dis       Date:  2015-09       Impact factor: 3.620

Review 2.  Model for End-stage Liver Disease.

Authors:  Ashwani K Singal; Patrick S Kamath
Journal:  J Clin Exp Hepatol       Date:  2012-12-01

3.  Beyond "Median Waiting Time": Development and Validation of a Competing Risk Model to Predict Outcomes on the Kidney Transplant Waiting List.

Authors:  Allyson Hart; Nicholas Salkowski; Jon J Snyder; Ajay K Israni; Bertram L Kasiske
Journal:  Transplantation       Date:  2016-07       Impact factor: 4.939

4.  Revision of MELD to include serum albumin improves prediction of mortality on the liver transplant waiting list.

Authors:  Robert P Myers; Abdel Aziz M Shaheen; Peter Faris; Alexander I Aspinall; Kelly W Burak
Journal:  PLoS One       Date:  2013-01-18       Impact factor: 3.240

  4 in total

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