Harmonisation of read-across methodology for drug substance extractables and leachables (E&Ls)

生物利用度 外推法 药品 药理学 化学 毒理 计算机科学 医学 数学 统计 生物
作者
Melisa Masuda-Herrera,Hannah T. Rosen,Anders Burild,Thomas H. Broschard,Tyler Bell,Jessica Graham,Troy Griffin,Jedd Hillegass,Penny Leavitt,Brian P. Huta,Patricia Parris,Uma Bruen,Maureen Cruz,Joel P. Bercu
出处
期刊:Regulatory Toxicology and Pharmacology [Elsevier BV]
卷期号:145: 105494-105494 被引量:6
标识
DOI:10.1016/j.yrtph.2023.105494
摘要

Health-based exposure limits (HBELs) are derived for leachables from polymeric components that interact with the drug substance which exceed a safety concern threshold (SCT). However, given the nature of leachables, there is not always chemical-specific toxicology data. Read-across methodology specific to extractables and leachables (E&Ls) was developed based on survey data collected from 11 pharmaceutical companies and methodology used in other industries. One additional challenge for E&L read-across is most toxicology data is from the oral route of administration, whereas the parenteral route is very common for the leachable HBEL derivation. A conservative framework was developed to estimate oral bioavailability and the corresponding oral to parenteral extrapolation factor using physical chemical data. When this conservative framework was tested against 73 compounds with oral bioavailability data, it was found that the predicted bioavailability based on physico-chemical properties was conservatively greater than or equal to the experimental bioavailability 79% of the time. In conclusion, an E&L read-across methodology has been developed to provide a consistent, health protective framework for deriving HBELs when toxicology data is limited.
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