A Hybrid Algorithm Combining Population Pharmacokinetic and Machine Learning for Isavuconazole Exposure Prediction

被引:10
|
作者
Destere, Alexandre [1 ,2 ,3 ]
Marquet, Pierre [1 ,4 ]
Labriffe, Marc [1 ,4 ]
Drici, Milou-Daniel [2 ,3 ]
Woillard, Jean-Baptiste [1 ,4 ]
机构
[1] Univ Limoges, Pharmacol & Transplantat, INSERM U1248, 2 Rue Pr Descottes, F-87000 Limoges, France
[2] Cote Azur Univ Med Ctr, Dept Pharmacol, Nice, France
[3] Cote Azur Univ Med Ctr, Pharmacovigilance Ctr, Nice, France
[4] CHU Limoges, Dept Pharmacol Toxicol & Pharmacovigilance, Limoges, France
关键词
fungal infections; isavuconazole; machine learning; population pharmacokinetics; PHARMACODYNAMICS; ASPERGILLUS; TRIAZOLE; PHASE-3; SECURE;
D O I
10.1007/s11095-023-03507-y
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
ObjectivesMaximum a posteriori Bayesian estimation (MAP-BE) based on a limited sampling strategy and a population pharmacokinetic (POPPK) model is used to estimate individual pharmacokinetic parameters. Recently, we proposed a methodology that combined population pharmacokinetic and machine learning (ML) to decrease the bias and imprecision in individual iohexol clearance prediction. The aim of this study was to confirm the previous results by developing a hybrid algorithm combining POPPK, MAP-BE and ML that accurately predicts isavuconazole clearance.MethodsA total of 1727 isavuconazole rich PK profiles were simulated using a POPPK model from the literature, and MAP-BE was used to estimate the clearance based on: (i) the full PK profiles (refCL); and (ii) C24h only (C24h-CL). Xgboost was trained to correct the error between refCL and C24h-CL in the training dataset (75%). C24h-CL as well as ML-corrected C24h-CL were evaluated in a testing dataset (25%) and then in a set of PK profiles simulated using another published POPPK model.ResultsA strong decrease in mean predictive error (MPE%), imprecision (RMSE%) and the number of profiles outside +/- 20% MPE% (n-out20%) was observed with the hybrid algorithm (decreased in MPE% by 95.8% and 85.6%; RMSE% by 69.5% and 69.0%; n-out20% by 97.4% and 100% in the training and testing sets, respectively. In the external validation set, the hybrid algorithm decreased MPE% by 96%, RMSE% by 68% and n-out20% by 100%.ConclusionThe hybrid model proposed significantly improved isavuconazole AUC estimation over MAP-BE based on the sole C24h and may improve dose adjustment.
引用
收藏
页码:951 / 959
页数:9
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