在电子病历中挖掘候选药物不良相互作用

L. Asker, Henrik Boström, Isak Karlsson, P. Papapetrou, Jing Zhao
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引用次数: 6

摘要

电子病历为检测药物不良事件提供了宝贵的信息来源。在本文中,我们探索了两种不同但互补的方法来从电子病历中提取有用的信息,目的是确定候选药物或药物组合,以进一步研究可疑的药物不良事件。我们提出了一种结合顺序模式挖掘和歧化分析的过滤-细化方法。所提出的方法有望识别可能相互作用的药物组,怀疑引起某些药物不良事件。我们使用斯德哥尔摩电子病历语料库的一个子集对提出的方法进行实证调查。本研究中使用的数据包括2008- 2010年期间至少有一种心脏相关诊断的一组患者的所有诊断和药物。该研究表明,该方法确实能够检测出心血管疾病患者比对照组患者更频繁出现的药物组合,为发现通过相互作用引起不良药物效应的候选药物提供了机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining candidates for adverse drug interactions in electronic patient records
Electronic patient records provide a valuable source of information for detecting adverse drug events. In this paper, we explore two different but complementary approaches to extracting useful information from electronic patient records with the goal of identifying candidate drugs, or combinations of drugs, to be further investigated for suspected adverse drug events. We propose a novel filter-and-refine approach that combines sequential pattern mining and disproportionality analysis. The proposed method is expected to identify groups of possibly interacting drugs suspected for causing certain adverse drug events. We perform an empirical investigation of the proposed method using a subset of the Stockholm electronic patient record corpus. The data used in this study consists of all diagnoses and medications for a group of patients diagnoses with at least one heart related diagnosis during the period 2008--2010. The study shows that the method indeed is able to detect combinations of drugs that occur more frequently for patients with cardiovascular diseases than for patients in a control group, providing opportunities for finding candidate drugs that cause adverse drug effects through interaction.
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