Open Access
Incorporation of concentration data below the limit of quantification in population pharmacokinetic analyses
Author(s) -
Keizer Ron J.,
Jansen Robert S.,
Rosing Hilde,
Thijssen Bas,
Beijnen Jos H.,
Schellens Jan H. M.,
Huitema Alwin D. R.
Publication year - 2015
Publication title -
pharmacology research and perspectives
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.975
H-Index - 27
ISSN - 2052-1707
DOI - 10.1002/prp2.131
Subject(s) - censoring (clinical trials) , statistics , mean squared error , population , residual , data set , confidence interval , mathematics , computer science , econometrics , medicine , algorithm , environmental health
Abstract Handling of data below the lower limit of quantification ( LLOQ ), below the limit of quantification ( BLOQ ) in population pharmacokinetic ( PopPK ) analyses is important for reducing bias and imprecision in parameter estimation. We aimed to evaluate whether using the concentration data below the LLOQ has superior performance over several established methods. The performance of this approach (“All data”) was evaluated and compared to other methods: “Discard,” “ LLOQ /2,” and “ LIKE ” (likelihood‐based). An analytical and residual error model was constructed on the basis of in‐house analytical method validations and analyses from literature, with additional included variability to account for model misspecification. Simulation analyses were performed for various levels of BLOQ , several structural PopPK models, and additional influences. Performance was evaluated by relative root mean squared error ( RMSE ), and run success for the various BLOQ approaches. Performance was also evaluated for a real PopPK data set. For all PopPK models and levels of censoring, RMSE values were lowest using “All data.” Performance of the “ LIKE ” method was better than the “ LLOQ /2” or “Discard” method. Differences between all methods were small at the lowest level of BLOQ censoring. “ LIKE ” method resulted in low successful minimization (<50%) and covariance step success (<30%), although estimates were obtained in most runs (~90%). For the real PK data set (7.4% BLOQ ), similar parameter estimates were obtained using all methods. Incorporation of BLOQ concentrations showed superior performance in terms of bias and precision over established BLOQ methods, and shown to be feasible in a real PopPK analysis.