Prediction of basic drug exposure in milk using a lactation model algorithm integrated within a physiologically based pharmacokinetic model

基于生理学的药代动力学模型 母乳 母乳喂养 药代动力学 哺乳期 药品 医学 药理学 血浆浓度 化学 儿科 怀孕 生物 遗传学 生物化学
作者
Amita Pansari,Muhammad Faisal,Masoud Jamei,Khaled Abduljalil
出处
期刊:Biopharmaceutics & Drug Disposition [Wiley]
卷期号:43 (5): 201-212 被引量:6
标识
DOI:10.1002/bdd.2334
摘要

Medication use during breastfeeding can be a matter of concern due to unintended infant exposure to drugs through breast milk. The available information relating to the safety of most medications is limited and may vary. More precise information is needed regarding the safety to the newborn or infants of the medications taken by the mother during breastfeeding. Physiologically based Pharmacokinetic Model (PBPK) approaches can be utilized to predict the drug exposure in the milk of breastfeeding women and can act as a supporting tool in the risk assessment of feeding infants. This study aims to assess the predictive performance of an integrated 'log transformed phase-distribution' lactation model within a PBPK platform. The model utilizes the physicochemical properties of four basic drugs, namely tramadol, venlafaxine, fluoxetine, and paroxetine, and analyses the milk compositions to predict the milk-to-plasma (M/P) ratio. The M/P prediction model was incorporated within the Simcyp Simulator V20 to predict the milk exposure and to estimate the likely infant dose for these drugs. The PBPK models adequately predicted the maternal plasma exposure, M/P ratio, and the infant daily dose to within two-fold of the clinically observed values for all four compounds. Integration of the lactation model within PBPK models facilitates the prediction of drug exposure in breast milk. The developed model can inform the design of lactation studies and assist with the neonatal risk assessment after maternal exposure to such environmental chemicals or basic drugs which diffuse passively into the milk.

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