AstraZeneca PLC, 35 Gatehouse Drive, Waltham, MA, 02451, USA,
Drug Saf. 2013 Oct;36 Suppl 1:S181-93. doi: 10.1007/s40264-013-0111-1.
A systematic risk identification system has the potential to test marketed drugs for important Health Outcomes of Interest or HOI. For each HOI, multiple definitions are used in the literature, and some of them are validated for certain databases. However, little is known about the effect of different definitions on the ability of methods to estimate their association with medical products.
Alternative definitions of HOI were studied for their effect on the performance of analytical methods in observational outcome studies.
A set of alternative definitions for three HOI were defined based on literature review and clinical diagnosis guidelines: acute kidney injury, acute liver injury and acute myocardial infarction. The definitions varied by the choice of diagnostic codes and the inclusion of procedure codes and lab values. They were then used to empirically study an array of analytical methods with various analytical choices in four observational healthcare databases. The methods were executed against predefined drug-HOI pairs to generate an effect estimate and standard error for each pair. These test cases included positive controls (active ingredients with evidence to suspect a positive association with the outcome) and negative controls (active ingredients with no evidence to expect an effect on the outcome). Three different performance metrics where used: (i) Area Under the Receiver Operator Characteristics (ROC) curve (AUC) as a measure of a method's ability to distinguish between positive and negative test cases, (ii) Measure of bias by estimation of distribution of observed effect estimates for the negative test pairs where the true effect can be assumed to be one (no relative risk), and (iii) Minimal Detectable Relative Risk (MDRR) as a measure of whether there is sufficient power to generate effect estimates.
In the three outcomes studied, different definitions of outcomes show comparable ability to differentiate true from false control cases (AUC) and a similar bias estimation. However, broader definitions generating larger outcome cohorts allowed more drugs to be studied with sufficient statistical power.
Broader definitions are preferred since they allow studying drugs with lower prevalence than the more precise or narrow definitions while showing comparable performance characteristics in differentiation of signal vs. no signal as well as effect size estimation.
系统风险识别系统有可能针对重要的医疗结果指标(Health Outcomes of Interest,HOI)对已上市药物进行测试。对于每个 HOI,文献中使用了多种定义,其中一些已针对某些数据库进行了验证。但是,对于不同的定义对方法估计其与医疗产品关联的能力的影响,我们知之甚少。
研究 HOI 的替代定义对观察性结局研究中分析方法性能的影响。
基于文献回顾和临床诊断指南,为三个 HOI 定义了一组替代定义:急性肾损伤、急性肝损伤和急性心肌梗死。这些定义因诊断代码的选择以及程序代码和实验室值的纳入而有所不同。然后,它们被用于在四个观察性医疗保健数据库中针对各种分析选择的一系列分析方法进行实证研究。这些方法针对预定义的药物-HOI 对进行执行,以生成每一对的效应估计值和标准误差。这些测试案例包括阳性对照(有证据表明与结局呈正相关的活性成分)和阴性对照(没有证据表明对结局有影响的活性成分)。使用了三种不同的性能指标:(i)接收器操作特征(Receiver Operator Characteristics,ROC)曲线下面积(Area Under the Receiver Operator Characteristics,AUC),作为衡量方法区分阳性和阴性测试案例能力的指标;(ii)对假定真实效应为 1(无相对风险)的阴性测试对的效应估计分布进行估计,以衡量偏差;(iii)最小可检测相对风险(Minimal Detectable Relative Risk,MDRR),作为衡量是否有足够的功效生成效应估计值的指标。
在所研究的三个结局中,不同的结局定义在区分真阳性和假阴性对照病例(AUC)方面表现出相似的能力,且偏差估计也相似。然而,生成更大结局队列的更广泛的定义允许对更多药物进行研究,从而具有足够的统计功效。
更广泛的定义更受青睐,因为它们允许研究患病率低于更精确或更狭窄的定义的药物,同时在信号与无信号的区分以及效应大小估计方面表现出相似的性能特征。