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一种新方法可用于识别、分类和计数药物相关事件。

A new approach to identify, classify and count drug-related events.

机构信息

Lehrstuhl für Medizinische Informatik, Friedrich-Alexander-Universität Erlangen-Nürnberg, Erlangen, Germany.

出版信息

Br J Clin Pharmacol. 2013 Sep;76 Suppl 1(Suppl 1):56-68. doi: 10.1111/bcp.12189.

Abstract

AIMS

The incidence of clinical events related to medication errors and/or adverse drug reactions reported in the literature varies by a degree that cannot solely be explained by the clinical setting, the varying scrutiny of investigators or varying definitions of drug-related events. Our hypothesis was that the individual complexity of many clinical cases may pose relevant limitations for current definitions and algorithms used to identify, classify and count adverse drug-related events.

METHODS

Based on clinical cases derived from an observational study we identified and classified common clinical problems that cannot be adequately characterized by the currently used definitions and algorithms.

RESULTS

It appears that some key models currently used to describe the relation of medication errors (MEs), adverse drug reactions (ADRs) and adverse drug events (ADEs) can easily be misinterpreted or contain logical inconsistencies that limit their accurate use to all but the simplest clinical cases. A key limitation of current models is the inability to deal with complex interactions such as one drug causing two clinically distinct side effects or multiple drugs contributing to a single clinical event. Using a large set of clinical cases we developed a revised model of the interdependence between MEs, ADEs and ADRs and extended current event definitions when multiple medications cause multiple types of problems. We propose algorithms that may help to improve the identification, classification and counting of drug-related events.

CONCLUSIONS

The new model may help to overcome some of the limitations that complex clinical cases pose to current paper- or software-based drug therapy safety.

摘要

目的

文献中报道的与用药错误和/或药物不良反应相关的临床事件发生率存在一定差异,这种差异不能仅用临床环境、研究者不同的审查程度或药物相关事件的不同定义来解释。我们的假设是,许多临床病例的个体复杂性可能对当前用于识别、分类和计数药物相关不良事件的定义和算法构成相关限制。

方法

基于从观察性研究中得出的临床病例,我们确定并分类了常见的临床问题,这些问题无法用当前使用的定义和算法充分描述。

结果

目前用于描述用药错误(MEs)、药物不良反应(ADRs)和药物不良事件(ADEs)之间关系的一些关键模型似乎很容易被误解,或者包含逻辑不一致,限制了它们在所有临床病例中,除了最简单的病例之外的准确使用。当前模型的一个主要局限性是无法处理复杂的相互作用,例如一种药物引起两种不同的临床副作用,或者多种药物导致单个临床事件。我们使用一组大型临床病例开发了一个 MEs、ADEs 和 ADRs 之间相互关系的修正模型,并扩展了当前的事件定义,以涵盖多种药物引起多种类型问题的情况。我们提出了一些算法,这些算法可能有助于提高药物相关事件的识别、分类和计数。

结论

新模型可能有助于克服复杂临床病例对当前基于纸质或软件的药物治疗安全性构成的一些限制。

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