Network meta-analysis for clinicians
- 作者: Bogdanov A.A.1, Bogdanov A.A.1
-
隶属关系:
- Saint Petersburg Clinical Research and Practice Centre for Specialized Types of Medical Care (Oncological)
- 期: 卷 23, 编号 3 (2021)
- 页面: 418-424
- 栏目: CLINICAL ONCOLOGY
- URL: https://bakhtiniada.ru/1815-1434/article/view/88099
- DOI: https://doi.org/10.26442/18151434.2021.3.201202
- ID: 88099
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详细
Decision making in clinical practice requires consideration of the relative efficacy and safety of medical interventions. A systematic review and meta-analysis, the results of which have the highest level of confidence in evidence-based medicine, only compare the effectiveness of two interventions, provided that there is a direct comparison between them in a set of randomized controlled trials. The development of statistical methods has led to the development of the network meta-analysis method, the application of which allows comparison for more than two interventions and even if the interventions were not directly compared in randomized controlled trials, but have a common comparison intervention. As a result, network meta-analysis is increasingly being used as an evidence base for the effectiveness of medical interventions. However, there are important assumptions and conditions underlying the performance of network meta-analysis. In this work, we tried to outline the main aspects of network meta-analysis that are important for clinicians in terms of its implementation and interpretation of its results.
作者简介
Alexey Bogdanov
Saint Petersburg Clinical Research and Practice Centre for Specialized Types of Medical Care (Oncological)
编辑信件的主要联系方式.
Email: a.bogdanov@oncocentre.ru
ORCID iD: 0000-0002-7887-4635
Cand. Sci. (Phys.-Math.)
俄罗斯联邦, Saint PetersburgAndrey Bogdanov
Saint Petersburg Clinical Research and Practice Centre for Specialized Types of Medical Care (Oncological)
Email: vip.nasa@bk.ru
Res. Assist.
俄罗斯联邦, Saint Petersburg参考
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