Handling interoccasion variability in model-based dose individualization using therapeutic drug monitoring data

被引:42
|
作者
Abrantes, Joao A. [1 ]
Jonsson, Siv [1 ]
Karlsson, Mats O. [1 ]
Nielsen, Elisabet I. [1 ]
机构
[1] Uppsala Univ, Dept Pharmaceut Biosci, Box 591, S-75124 Uppsala, Sweden
关键词
NONMEM; pharmacokinetics; population analysis; therapeutic drug monitoring; FACTOR-VIII; PHARMACOKINETICS; CHEMOTHERAPY; SIMULATION; TOOL; AGE;
D O I
10.1111/bcp.13901
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
Aims This study aims to assess approaches to handle interoccasion variability (IOV) in a model-based therapeutic drug monitoring (TDM) context, using a population pharmacokinetic model of coagulation factor VIII as example. Methods We assessed 5 model-based TDM approaches: empirical Bayes estimates (EBEs) from a model including IOV, with individualized doses calculated based on individual parameters either (i) including or (ii) excluding variability related to IOV; and EBEs from a model excluding IOV by (iii) setting IOV to zero, (iv) summing variances of interindividual variability (IIV) and IOV into a single IIV term, or (v) re-estimating the model without IOV. The impact of varying IOV magnitudes (0-50%) and number of occasions/observations was explored. The approaches were compared with conventional weight-based dosing. Predictive performance was assessed with the prediction error percentiles. Results When IOV was lower than IIV, the accuracy was good for all approaches (50(th) percentile of the prediction error [P50] <7.4%), but the precision varied substantially between IOV magnitudes (P97.5 61-528%). Approach (ii) was the most precise forecasting method across a wide range of scenarios, particularly in case of sparse sampling or high magnitudes of IOV. Weight-based dosing led to less precise predictions than the model-based TDM approaches in most scenarios. Conclusions Based on the studied scenarios and theoretical expectations, the best approach to handle IOV in model-based dose individualization is to include IOV in the generation of the EBEs but exclude the portion of unexplained variability related to IOV in the individual parameters used to calculate the future dose.
引用
收藏
页码:1326 / 1336
页数:11
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