Covariate Model Selection Approaches for Population Pharmacokinetics: A Systematic Review of Existing Methods, From SCM to AI

ABSTRACT A growing number of covariate modeling methods have been proposed in the field of popPK modeling, but limited information exists on how they all compare. The objective of this study was to perform a systematic review of all popPK covariate modeling methods, focusing on assessing the existin...

Full description

Saved in:
Bibliographic Details
Published inCPT: pharmacometrics and systems pharmacology Vol. 14; no. 4; pp. 621 - 639
Main Authors Karlsen, Mélanie, Khier, Sonia, Fabre, David, Marchionni, David, Azé, Jérôme, Bringay, Sandra, Poncelet, Pascal, Calvier, Elisa
Format Journal Article
LanguageEnglish
Published United States John Wiley & Sons, Inc 01.04.2025
American Society for Clinical Pharmacology and Therapeutics ; International Society of Pharmacometrics
John Wiley and Sons Inc
Wiley
Subjects
Online AccessGet full text
ISSN2163-8306
2163-8306
DOI10.1002/psp4.13306

Cover

More Information
Summary:ABSTRACT A growing number of covariate modeling methods have been proposed in the field of popPK modeling, but limited information exists on how they all compare. The objective of this study was to perform a systematic review of all popPK covariate modeling methods, focusing on assessing the existing knowledge on their performances. For each method of each article included in this review, evaluation setting, performance metrics along with their associated values, and relative computational times were reported when available. Evaluation settings report was done for uncertainty assessment of communicated results. Results showed that EBEs‐based ML methods stood out as the best covariate selection methods. AALASSO, a hybrid genetic algorithm, FREM with a clinical significance criterion and SCM+ with stagewise filtering were the best covariate model selection techniques—AALASSO being the very best one. Results also showed a lack of consensus on how to benchmark simulated datasets of different scenarios when evaluating method performances, but also on which metrics to use for method evaluation. We propose to systematically report TPR (sensitivity), FPR (Type I error), FNR (Type II error), TNR (specificity), covariate parameter error bias (MPE) and precision (RMSE), clinical relevance, and model fitness by means of BIC, concentration prediction error bias (MPE), and precision (RMSE) of new proposed methods and compare them with SCM. We propose to systematically combine covariate selection techniques to SCM or FFEM to allow for comparison with SCM. We also highlight the need for an open‐source benchmark of simulated datasets on a representative set of scenarios.
Bibliography:This material is based upon work supported by the ANRT (Association nationale de la recherche et de la technologie) with a CIFRE fellowship granted to Mélanie Karlsen.
Funding
ObjectType-Article-1
ObjectType-Evidence Based Healthcare-3
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 14
ObjectType-Review-3
content type line 23
Funding: This material is based upon work supported by the ANRT (Association nationale de la recherche et de la technologie) with a CIFRE fellowship granted to Mélanie Karlsen.
ISSN:2163-8306
2163-8306
DOI:10.1002/psp4.13306