External evaluation of published population pharmacokinetic models of polymyxin B

可预测性 贝叶斯概率 加药 预测建模 人口 医学 均方预测误差 先验概率 贝叶斯定理 计算机科学 机器学习 统计 人工智能 数学 内科学 环境卫生
作者
Yaqian Li,Kaifeng Chen,Junjie Ding,Hongyi Tan,Nan Yang,Yaqi Lin,Cuifang Wu,Yueliang Xie,Guoping Yang,Jingjing Liu,Qi Pei
出处
期刊:European Journal of Clinical Pharmacology [Springer Science+Business Media]
卷期号:77 (12): 1909-1917 被引量:14
标识
DOI:10.1007/s00228-021-03193-y
摘要

Several population pharmacokinetics (popPK) models for polymyxin B have been constructed to optimize therapeutic regimens. However, their predictive performance remains unclear when extrapolated to different clinical centers. Therefore, this study aimed to evaluate the predictive ability of polymyxin B popPK models.A literature search was conducted, and the predictive performance was determined for each selected model using an independent dataset of 20 patients (92 concentrations) from the Third Xiangya Hospital. Prediction- and simulation-based diagnostics were used to evaluate model predictability. The influence of prior information was assessed using Bayesian forecasting.Eight published studies were evaluated. In prediction-based diagnostics, the prediction error within ± 30% was over 50% in two models. In simulation-based diagnostics, the prediction- and variability-corrected visual predictive check (pvcVPC) showed satisfactory predictivity in three models, while the normalized prediction distribution error (NPDE) tests indicated model misspecification in all models. Bayesian forecasting demonstrated a substantially improvement in the model predictability even with one prior observation.Not all published models were satisfactory in prediction- and simulation-based diagnostics; however, Bayesian forecasting improved the predictability considerably with priors, which can be applied to guide polymyxin B dosing recommendations and adjustments for clinicians.
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