结合自发报告系统数据,以协助纵向医疗保健数据的因果推理

J. Reps, U. Aickelin
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引用次数: 2

摘要

由于数据收集的被动方式,使用纵向观测数据库推断因果关系具有挑战性。在纵向观测数据中发现的大多数关联通常是非因果的,并且由于混淆而发生。本文的重点是研究从其他数据库纳入信息,以补充纵向观测数据库分析。我们调查处方药副作用的检测,因为这是因果关系的一个例子。在以前的工作中,提出了一个仅使用纵向数据检测副作用的框架。在本文中,我们将从挖掘自发报告系统数据库中获得的关联度量与先前提出的分析相结合,该分析为英国全科医学纵向数据库的因果分析提取领域专业知识特征。结果表明,在纵向观察数据分析的基础上,在框架中加入额外的药物安全来源,可以显著提高处方药物副作用检测的性能。当考虑其他数据时,正确分类副作用的受试者工作特征曲线下面积(AUC)为0.967,而不考虑其他数据时,AUC为0.923。然而,本文的结果可能会受到评价的偏倚,未来的工作应通过开发无偏参考集来克服这一问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incorporating Spontaneous Reporting System Data to Aid Causal Inference in Longitudinal Healthcare Data
Inferring causality using longitudinal observational databases is challenging due to the passive way the data are collected. The majority of associations found within longitudinal observational data are often non-causal and occur due to confounding. The focus of this paper is to investigate incorporating information from additional databases to complement the longitudinal observational database analysis. We investigate the detection of prescription drug side effects as this is an example of a causal relationship. In previous work a framework was proposed for detecting side effects only using longitudinal data. In this paper we combine a measure of association derived from mining a spontaneous reporting system database to previously proposed analysis that extracts domain expertise features for causal analysis of a UK general practice longitudinal database. The results show that there is a significant improvement to the performance of detecting prescription drug side effects when the longitudinal observation data analysis is complemented by incorporating additional drug safety sources into the framework. The area under the receiver operating characteristic curve (AUC) for correctly classifying a side effect when other data were considered was 0.967, whereas without it the AUC was 0.923 However, the results of this paper may be biased by the evaluation and future work should overcome this by developing an unbiased reference set.
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