Evaluation of a Novel LC-MS/MS Based Analytical Method for the Risk Assessment of Nitrosamines in Pharmaceutical Products and Packaging Materials

亚硝胺 背景(考古学) 色谱法 包装和标签 化学 药品包装 生化工程 风险分析(工程) 工艺工程 工程类 业务 致癌物 有机化学 医学 古生物学 放射科 营销 生物
作者
Remziye Azra Kartop,Müge Güleli,Fatma Aleyna Faruzlu,Cem Çalışkan
出处
期刊:Journal of Pharmaceutical Sciences [Elsevier]
卷期号:113 (6): 1597-1606 被引量:7
标识
DOI:10.1016/j.xphs.2024.01.011
摘要

The detection of nitrosamine impurities, particularly small dialkyl types, which are frequently known to be potent mutagenic carcinogens, in some Sartan group active pharmaceutical ingredients (APIs) and finished drug products caused global regulatory organizations to have concerns. Accordingly, Registration Holders/Applicants, API manufacturers, and their raw material suppliers are required to check the presence of nitrosamines in their products and carry out risk assessments using the quality risk management principles specified in the ICH Q9 guide. In this context, a new LC-MS/MS method has been developed and validated for the simultaneous determination of NDMA, NDEA, NMBA, NDIPA, NEIPA, NDBA, and MeNP nitrosamine compounds in API and finished products as well as in primary packaging materials, one of the risk sources. This validated method was applied to check the nitrosamine content may occur from canister, blister, printed aluminum foil, nasal spray, and eye drop packaging materials as part of the Extractables & Leachables studies arising from interactions between the product and the primary packaging. For the determination and quality control of nitrosamines in sartan group pharmaceutical products and packaging materials, the developed LC-MS/MS analytical method offers highly reliable, fast, high accuracy, good sensitivity and simultaneous detection even at low concentrations.
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