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埃塞俄比亚成年哮喘患者吸入药物治疗的不依从性:一项系统评价与荟萃分析。

Non-adherence to inhaled medications among adult asthmatic patients in Ethiopia: a systematic review and meta-analysis.

作者信息

Aberhe Woldu, Hailay Abrha, Zereabruk Kidane, Mebrahtom Guesh, Haile Teklehaimanot

机构信息

Department of Adult Health Nursing, School of Nursing, Aksum University, Aksum, Ethiopia.

Department of Maternity and Neonatal Nursing, School of Nursing, Aksum University, Aksum, Ethiopia.

出版信息

Asthma Res Pract. 2020 Oct 14;6:12. doi: 10.1186/s40733-020-00065-7. eCollection 2020.

Abstract

BACKGROUND

Medication non-adherence is one of a common problem in asthma management and it is the main factor for uncontrolled asthma. It can result in poor asthma control, which leads to decreased quality of life, increase hospital admission, increased health care utilization, lost productivity, and mortality. To date, there have been no studies and protocols that estimated the pooled national prevalence of non-adherence to inhaled anti-asthmatic medications in Ethiopia. Therefore, the primary purpose of this systematic review and meta-analysis is to determine the pooled national prevalence of non-adherence to inhaled medications among asthmatic patients in Ethiopia.

METHODS

Different database searching engines including PubMed, Scopus, Google Scholar, Africa journal online, World Health Organization afro library, and Cochrane review were systematically searched by using keywords such as "prevalence, non-adherence to inhaled medications, inhaled corticosteroids, and asthmatic patients" and their combinations. Six published observational studies that report the prevalence of non-adherence to inhaled medications were finally selected. The Preferred Reporting Items for Systematic Review and Meta-Analysis guideline was followed. Heterogeneity across the included studies was evaluated by the inconsistency index (I). The random-effect model was fitted to estimate the pooled prevalence of non-adherence to inhale anti-asthmatic medications. All statistical analysis was done using R version 3.5.3 and R Studio version 1.2.5033 software for windows.

RESULTS

The pooled national prevalence of non-adherence to inhaled medications among asthmatic patients was 29.95% (95% CI, 19.1, 40.8%). The result of this meta-analysis using the random-effects model revealed that there is high heterogeneity across the included studies. The result of subgroup analysis indicates that one out of three in the Oromia region and one out of five in the Amhara region asthmatic patients was non-adherent to their inhaled anti-asthmatic medications.

CONCLUSION

the prevalence of non-adherence to inhaled anti-asthmatic medications was high. Thus, our finding suggests that one out of four asthmatic patients were non-adherent to inhaled medications. The ministry of health, health policymakers, clinicians, and other health care providers should pay attention to strengthening the adherence levels to inhaled anti-asthmatic medications, and country-based interventions should be developed to reduce the burden of non-adherence to inhaled anti-asthmatic medications.

摘要

背景

药物治疗依从性差是哮喘管理中常见的问题之一,也是哮喘控制不佳的主要因素。它会导致哮喘控制不佳,进而导致生活质量下降、住院次数增加、医疗保健利用率提高、生产力损失和死亡率上升。迄今为止,埃塞俄比亚尚未有研究和方案估计吸入性抗哮喘药物治疗依从性差的全国汇总患病率。因此,本系统评价和荟萃分析的主要目的是确定埃塞俄比亚哮喘患者中吸入药物治疗依从性差的全国汇总患病率。

方法

使用“患病率、吸入药物治疗依从性差、吸入性糖皮质激素和哮喘患者”等关键词及其组合,对包括PubMed、Scopus、谷歌学术、非洲期刊在线、世界卫生组织非洲图书馆和考克兰系统评价在内的不同数据库搜索引擎进行系统检索。最终筛选出六项报告吸入药物治疗依从性差患病率的已发表观察性研究。遵循系统评价和荟萃分析的首选报告项目指南。通过不一致指数(I)评估纳入研究之间的异质性。采用随机效应模型估计吸入性抗哮喘药物治疗依从性差的汇总患病率。所有统计分析均使用适用于Windows的R版本3.5.3和R Studio版本1.2.5033软件进行。

结果

哮喘患者中吸入药物治疗依从性差的全国汇总患病率为29.95%(95%CI,19.1,40.8%)。使用随机效应模型进行的这项荟萃分析结果显示,纳入研究之间存在高度异质性。亚组分析结果表明,奥罗米亚地区三分之一的哮喘患者和阿姆哈拉地区五分之一的哮喘患者不依从其吸入性抗哮喘药物治疗。

结论

吸入性抗哮喘药物治疗依从性差的患病率较高。因此,我们的研究结果表明,四分之一的哮喘患者不依从吸入药物治疗。卫生部、卫生政策制定者、临床医生和其他医疗保健提供者应重视提高吸入性抗哮喘药物的依从性水平,并应制定基于国家的干预措施以减轻吸入性抗哮喘药物治疗依从性差的负担。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cef6/7556918/76f1c571ca42/40733_2020_65_Fig1_HTML.jpg

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