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利用药物警戒数据库识别不合格药品:检测能力与关键前提条件

Using VigiBase to Identify Substandard Medicines: Detection Capacity and Key Prerequisites.

作者信息

Juhlin Kristina, Karimi Ghazaleh, Andér Maria, Camilli Sara, Dheda Mukesh, Har Tan Siew, Isahak Rokiah, Lee Su-Jung, Vaughan Sarah, Caduff Pia, Norén G Niklas

机构信息

Uppsala Monitoring Centre, Box 1051, 75140, Uppsala, Sweden,

出版信息

Drug Saf. 2015 Apr;38(4):373-82. doi: 10.1007/s40264-015-0271-2.

Abstract

BACKGROUND

Substandard medicines, whether the result of intentional manipulation or lack of compliance with good manufacturing practice (GMP) or good distribution practice (GDP), pose a significant potential threat to patient safety. Spontaneous adverse drug reaction reporting systems can contribute to identification of quality problems that cause unwanted and/or harmful effects, and to identification of clusters of lack of efficacy. In 2011, the Uppsala Monitoring Centre (UMC) constructed a novel algorithm to identify reporting patterns suggestive of substandard medicines in spontaneous reporting, and applied it to VigiBase(®), the World Health Organization's global individual case safety report database. The algorithm identified some historical clusters related to substandard products, which were later able to be confirmed in the literature or by contact with national centres (NCs). As relevant and detailed information is often lacking in the VigiBase reports but might be available at the reporting NC, further evaluation of the algorithm was undertaken with involvement from NCs.

OBJECTIVE

To evaluate the effectiveness of an algorithm that identifies clusters of potentially substandard medicines, when these are assessed directly at the NC concerned.

METHODS

The algorithm identifies countries and time periods with disproportionately high reporting of product inadequacy. NCs with at least 20 clusters were eligible to participate in the study, and six NCs-those in the Republic of Korea, Malaysia, Singapore, South Africa, the UK and the USA-were selected, taking into account the geographical spread and prevalence of recent clusters. The clusters were systematically assessed at the NCs, following a standardized protocol, and then compiled centrally at the UMC. The clusters were classified as 'confirmed', 'potential' or 'unlikely' substandard products; or as 'confirmed not substandard' when confirmed by an investigation; or as 'indecisive' when the information available did not allow a sound assessment even at the NC.

RESULTS

The assessment of a total of 147 clusters resulted in 8 confirmed, 12 potential and 51 unlikely substandard products, and a further 19 clusters were confirmed as not substandard. Reflecting the difficulty of evaluating suspected substandard products retrospectively when additional information from the primary reporter, as well as samples, are no longer available, 57 clusters were classified as indecisive.

CONCLUSION

While application of the algorithm to VigiBase allowed identification of some substandard medicines, some key prerequisites have been identified that need to be fulfilled at the national level for the algorithm to be useful in practice. Such key factors are fast handling and transfer of incoming reports into VigiBase, detailed information on the product and its distribution channels, the possibility of contacting primary reporters for further information, availability of samples of suspected products and laboratory capacity to analyse suspected products.

摘要

背景

不合格药品,无论是故意操纵的结果,还是未遵守药品生产质量管理规范(GMP)或药品分销质量管理规范(GDP),都对患者安全构成重大潜在威胁。自发药品不良反应报告系统有助于识别导致不良和/或有害影响的质量问题,以及识别疗效不佳的聚集情况。2011年,乌普萨拉监测中心(UMC)构建了一种新算法,用于识别自发报告中提示不合格药品的报告模式,并将其应用于世界卫生组织的全球个体病例安全报告数据库VigiBase®。该算法识别出了一些与不合格产品相关的历史聚集情况,这些情况后来在文献中或通过与国家中心(NCs)联系得到了证实。由于VigiBase报告中往往缺乏相关详细信息,但报告的国家中心可能有这些信息,因此在国家中心的参与下对该算法进行了进一步评估。

目的

评估一种算法在直接由相关国家中心评估时识别潜在不合格药品聚集情况的有效性。

方法

该算法识别产品缺陷报告比例过高的国家和时间段。至少有20个聚集情况的国家中心有资格参与该研究,考虑到地理分布和近期聚集情况的普遍性,选择了6个国家中心,分别来自韩国、马来西亚、新加坡、南非、英国和美国。按照标准化方案在国家中心对聚集情况进行系统评估,然后在UMC集中汇总。这些聚集情况被分类为“确认”、“潜在”或“不太可能”的不合格产品;经调查确认为“确认非不合格”;或当现有信息即使在国家中心也无法进行可靠评估时分类为“不确定”。

结果

对总共147个聚集情况的评估结果为,8个产品确认为不合格,12个产品可能不合格,51个产品不太可能不合格,另有19个聚集情况被确认为非不合格。由于当来自原始报告者的额外信息以及样本不再可用时,回顾性评估疑似不合格产品存在困难,57个聚集情况被分类为不确定。

结论

虽然将该算法应用于VigiBase能够识别一些不合格药品,但已确定在国家层面需要满足一些关键前提条件,该算法才能在实践中发挥作用。这些关键因素包括迅速处理并将收到的报告录入VigiBase、关于产品及其分销渠道的详细信息、与原始报告者联系以获取更多信息的可能性、疑似产品样本的可得性以及分析疑似产品的实验室能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/819a/4544545/a3482cacc8db/40264_2015_271_Fig1_HTML.jpg

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