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根据2019年《Beers标准》、第2版《STOPP标准》和中国标准对入住心脏重症监护病房的老年患者潜在不适当用药情况进行评估。

Evaluation of potentially inappropriate medications in older patients admitted to the cardiac intensive care unit according to the 2019 Beers criteria, STOPP criteria version 2 and Chinese criteria.

作者信息

Bai Ying, Wang Jianqi, Li Guangyao, Zhou Zhen, Zhang Chao

机构信息

Department of Pharmacy, Beijing Tongren Hospital, Capital Medical University, Beijing, China.

Department of Cardiovascular Center, Beijing Tongren Hospital, Capital Medical University, Beijing, China.

出版信息

J Clin Pharm Ther. 2022 Dec;47(12):1994-2007. doi: 10.1111/jcpt.13736. Epub 2022 Jul 27.

Abstract

WHAT IS KNOWN AND OBJECTIVES

Potential inappropriate medications (PIMs) can increase the risk of medication-induced harm. However, there are no studies regarding PIMs in older and critically ill patients with cardiovascular diseases in China. Therefore, studies evaluating PIMs in these patients can help in the implementation of more effective interventions to reduce the risk of drug use. Our objective was to analyse the prevalence of PIMs in elderly patients admitted to the cardiac intensive care unit (CICU) comparing the 2019 Beers criteria (Beers criteria), Screening Tool of Older People's Potentially Inappropriate Prescriptions (STOPP) criteria version 2 (STOPP criteria) and criteria of potentially inappropriate medications for older adults in China (Chinese criteria); and analyse the factors influencing the PIMs.

METHODS

This cross-sectional and retrospective study was performed with elderly patients (≥65 years) admitted to the CICU of the Beijing Tongren Hospital in China from January 2019 to June 2020. The PIMs were identified based on the Chinese, STOPP and Beers criteria at admission and discharge. The three criteria were compared using the Kappa statistic. Multiple regression analysis was used to investigate the influencing factors associated with PIMs.

RESULTS AND DISCUSSION

A total of 369 patients who met the inclusion/exclusion criteria were included in this study. According to the three criteria used to evaluate the PIMs, the prevalence was 78.3% and 72.6% at admission and discharge, respectively. The prevalence rate of PIMs determined by the Chinese criteria was 62.1% at admission versus 56.6% at discharge (p = 0.134); the Beers criteria was 53.9% at admission versus 46.9% at discharge (p = 0.056); by the STOPP criteria was 20.6% at admission versus 13.8% at discharge (p = 0.015). Moreover, 28.9% (STOPP criteria), 56.8% (Beers criteria) and 73.4% (Chinese criteria) of patients taking PIMs on admission still had the same problem at discharge. The most common PIMs screened by the Beers, STOPP and Chinese criteria were diuretics, benzodiazepines and clopidogrel, respectively. Besides, the three criteria showed poor agreement. Finally, the stronger predictor of PIMs was the increased number of medications (p < 0.05).

WHAT IS NEW AND CONCLUSION

The prevalence of PIMs in elderly patients admitted to the CICU was high. The Chinese, STOPP and Beers criteria are effective screening tools to detect PIMs, but the consistency between them was poor. The increased number of medications was a significant predictor of PIMs.

摘要

已知信息与研究目的

潜在不适当用药(PIMs)会增加药物所致伤害的风险。然而,中国尚无关于老年心血管疾病重症患者PIMs的研究。因此,评估这些患者的PIMs有助于实施更有效的干预措施以降低用药风险。我们的目的是分析入住心脏重症监护病房(CICU)的老年患者中PIMs的患病率,比较2019年版《Beers标准》(Beers标准)、《老年人潜在不适当处方筛查工具》(STOPP)第2版标准(STOPP标准)和中国老年人潜在不适当用药标准(中国标准);并分析影响PIMs的因素。

方法

本横断面回顾性研究纳入了2019年1月至2020年6月在中国北京同仁医院CICU住院的老年患者(≥65岁)。根据中国标准、STOPP标准和Beers标准在入院时和出院时确定PIMs。使用Kappa统计量比较这三个标准。采用多元回归分析研究与PIMs相关的影响因素。

结果与讨论

本研究共纳入369例符合纳入/排除标准的患者。根据用于评估PIMs的三个标准,入院时和出院时的患病率分别为78.3%和72.6%。中国标准确定的PIMs患病率入院时为62.1%,出院时为56.6%(p = 0.134);Beers标准入院时为53.9%,出院时为46.9%(p = 0.056);STOPP标准入院时为20.6%,出院时为13.8%(p = 0.015)。此外,入院时服用PIMs的患者中,28.9%(STOPP标准)、56.8%(Beers标准)和73.4%(中国标准)出院时仍存在同样问题。Beers标准、STOPP标准和中国标准筛查出的最常见PIMs分别为利尿剂、苯二氮䓬类药物和氯吡格雷。此外,这三个标准的一致性较差。最后,PIMs的更强预测因素是用药数量增加(p < 0.05)。

新发现与结论

入住CICU的老年患者中PIMs的患病率较高。中国标准、STOPP标准和Beers标准是检测PIMs的有效筛查工具,但它们之间的一致性较差。用药数量增加是PIMs的重要预测因素。

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