Department of Obstetrics and Gynecology, Vanderbilt University Medical Center, Suite 600, 2525 West End Avenue, Nashville, TN 37203-1738, USA; Vanderbilt Evidence-Based Practice Center, Institute for Medicine and Public Health, Vanderbilt University Medical Center, Suite 600, 2525 West End Avenue, Nashville, TN 37203-1738, USA.
Vanderbilt Evidence-Based Practice Center, Institute for Medicine and Public Health, Vanderbilt University Medical Center, Suite 600, 2525 West End Avenue, Nashville, TN 37203-1738, USA.
Vaccine. 2013 Dec 30;31 Suppl 10:K2-6. doi: 10.1016/j.vaccine.2013.06.048.
This report provides an overview of methods used to conduct systematic reviews for the US Food and Drug Administration (FDA) Mini-Sentinel project, which is designed to inform the development of safety monitoring tools for FDA-regulated products including vaccines. The objective of these reviews was to summarize the literature describing algorithms (e.g., diagnosis or procedure codes) to identify health outcomes in administrative and claims data. A particular focus was the validity of the algorithms when compared to reference standards such as diagnoses in medical records. The overarching goal was to identify algorithms that can accurately identify the health outcomes for safety surveillance. We searched the MEDLINE database via PubMed and required dual review of full text articles and of data extracted from studies. We also extracted data on each study's methods for case validation. We reviewed over 5600 abstracts/full text studies across 15 health outcomes of interest. Nearly 260 studies met our initial criteria (conducted in the US or Canada, used an administrative database, reported case-finding algorithm). Few studies (N=45), however, reported validation of case-finding algorithms (sensitivity, specificity, positive or negative predictive value). Among these, the most common approach to validation was to calculate positive predictive values, based on a review of medical records as the reference standard. Of the studies reporting validation, the ease with which a given clinical condition could be identified in administrative records varied substantially, both by the clinical condition and by other factors such as the clinical setting, which relates to the disease prevalence.
本报告概述了美国食品和药物管理局(FDA)Mini-Sentinel 项目中用于进行系统评价的方法,该项目旨在为 FDA 监管产品(包括疫苗)的安全监测工具的开发提供信息。这些综述的目的是总结描述算法(例如,诊断或程序代码)以在行政和索赔数据中识别健康结果的文献。特别关注的是与病历中的诊断等参考标准相比,算法的有效性。总体目标是确定能够准确识别安全性监测健康结果的算法。我们通过 PubMed 搜索了 MEDLINE 数据库,并要求对全文文章和从研究中提取的数据进行双重审查。我们还提取了关于每个研究方法的案例验证的数据。我们审查了 15 个感兴趣的健康结果的超过 5600 篇摘要/全文研究。近 260 项研究符合我们的初始标准(在美国或加拿大进行,使用行政数据库,报告病例发现算法)。然而,很少有研究(N=45)报告了病例发现算法的验证(敏感性、特异性、阳性或阴性预测值)。在这些研究中,验证最常见的方法是根据病历作为参考标准计算阳性预测值。在报告验证的研究中,给定临床情况在行政记录中识别的容易程度因临床情况和其他因素(例如与疾病流行程度相关的临床环境)而异。