The power of meta-analysis: a challenge for evidence-based medicine

被引:0
作者
Paola Berchialla
Daniele Chiffi
Giovanni Valente
Ari Voutilainen
机构
[1] Universitá di Torino,
[2] Politecnico di Milano,undefined
[3] University of Eastern Finland,undefined
来源
European Journal for Philosophy of Science | 2021年 / 11卷
关键词
Meta-analysis; Heterogeneity; Power; Evidence-based medicine;
D O I
暂无
中图分类号
学科分类号
摘要
This paper discusses the outstanding problem of replicability of empirical data in the context of recent work on meta-analysis, especially within the field of evidence-based medicine. Specifically, it deals with the methodological issue of how to determine the degrees of heterogeneity between different collected studies. After critically reviewing the standard measures used to quantify meta-analytical heterogeneity, we argue that they should be revised in such a way to take into account the statistical power of the individual studies. We thus propose some new measures of heterogeneity. Subsequently, we apply them to re-assess concrete case-studies from clinical research, thereby showing explicitly how the relevant values of heterogeneity diverge from those obtained with the original measures.
引用
收藏
相关论文
共 49 条
  • [1] Bohlin I(2012)Formalizing syntheses of medical knowledge: The rise of meta-analysis and systematic reviews Perspectives on Science 20 273-309
  • [2] Cochrane WG(1954)The combination of estimates from different experiments Biometrics 10 101-29
  • [3] Crins ND(2014)Interleukin-2 receptor antagonists for pediatric liver transplant recipients: a systematic review and meta-analysis of controlled studies Pediatric Transplantation 18 839-850
  • [4] Rover C(2018)Meta-Research Evidence for evaluating therapies Philosophy of Science 85 767-780
  • [5] Goralczyk AD(1986)Meta-analysis in clinical trials Controlled Clinical Trials 7 177-188
  • [6] Friede T(2003)Pediatric liver transplantation with daclizumab induction therapy Transplantation 2003 2040-2043
  • [7] Fuller J(2002)Quantifying heterogeneity in a meta-analysis Statistics in Medicine 21 1539-1558
  • [8] DerSimonian R(2003)Measuring inconsistency in meta-analyses BMJ 327 557-60
  • [9] Laird N(2007)Uncertainty In heterogeneity estimates in meta-analyses BMJ 2007 914-6
  • [10] Heffron TG(2008)Why most discovered true associations are inflated Epidemiology 19 640-648