A Pediatric Covariate Function for CYP3A-Mediated Midazolam Clearance Can Scale Clearance of Selected CYP3A Substrates in Children

Recently a framework was presented to assess whether pediatric covariate models for clearance can be extrapolated between drugs sharing elimination pathways, based on extraction ratio, protein binding, and other drug properties. Here we evaluate when a pediatric covariate function for midazolam clea...

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Veröffentlicht in:The AAPS journal 2019-06, Vol.21 (5), p.81-81, Article 81
Hauptverfasser: Brussee, Janneke M., Krekels, Elke H. J., Calvier, Elisa A. M., Palić, Semra, Rostami-Hodjegan, Amin, Danhof, Meindert, Barrett, Jeffrey S., de Wildt, Saskia N., Knibbe, Catherijne A. J.
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Sprache:eng
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Zusammenfassung:Recently a framework was presented to assess whether pediatric covariate models for clearance can be extrapolated between drugs sharing elimination pathways, based on extraction ratio, protein binding, and other drug properties. Here we evaluate when a pediatric covariate function for midazolam clearance can be used to scale clearance of other CYP3A substrates. A population PK model including a covariate function for clearance was developed for midazolam in children aged 1–17 years. Commonly used CYP3A substrates were selected and using the framework, it was assessed whether the midazolam covariate function accurately scales their clearance. For eight substrates, reported pediatric clearance values were compared numerically and graphically with clearance values scaled using the midazolam covariate function. For sildenafil, clearance values obtained with population PK modeling based on pediatric concentration-time data were compared with those scaled with the midazolam covariate function. According to the framework, a midazolam covariate function will lead to systemically accurate clearance scaling (absolute prediction error (PE)
ISSN:1550-7416
1550-7416
DOI:10.1208/s12248-019-0351-9