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Meta图:一种用于一眼评估异质性的新型Stata图形。

Metaplot: a novel stata graph for assessing heterogeneity at a glance.

作者信息

Poorolajal J, Mahmoodi M, Majdzadeh R, Fotouhi A

机构信息

Dept. of Epidemiology and Biostatistics, School of Public Health, Hamedan University of Medical Sciences, Iran.

出版信息

Iran J Public Health. 2010;39(2):102-4. Epub 2010 Jun 30.

Abstract

BACKGROUND

Heterogeneity is usually a major concern in meta-analysis. Although there are some statistical approaches for assessing variability across studies, here we present a new approach to heterogeneity using "MetaPlot" that investigate the influence of a single study on the overall heterogeneity.

METHODS

MetaPlot is a two-way (x, y) graph, which can be considered as a complementary graphical approach for testing heterogeneity. This method shows graphically as well as numerically the results of an influence analysis, in which Higgins' I(2) statistic with 95% (Confidence interval) CI are computed omitting one study in each turn and then are plotted against reciprocal of standard error (1/SE) or "precision". In this graph, "1/SE" lies on x axis and "I(2) results" lies on y axe.

RESULTS

Having a first glance at MetaPlot, one can predict to what extent omission of a single study may influence the overall heterogeneity. The precision on x-axis enables us to distinguish the size of each trial. The graph describes I(2) statistic with 95% CI graphically as well as numerically in one view for prompt comparison. It is possible to implement MetaPlot for meta-analysis of different types of outcome data and summary measures.

CONCLUSION

This method presents a simple graphical approach to identify an outlier and its effect on overall heterogeneity at a glance. We wish to suggest MetaPlot to Stata experts to prepare its module for the software.

摘要

背景

异质性通常是荟萃分析中的一个主要问题。尽管有一些统计方法可用于评估不同研究之间的变异性,但在此我们提出一种使用“MetaPlot”的异质性新方法,该方法可研究单个研究对总体异质性的影响。

方法

MetaPlot是一种二维(x,y)图,可被视为检验异质性的一种补充性图形方法。该方法以图形和数值方式展示影响分析的结果,在影响分析中,每次剔除一项研究来计算希金斯I²统计量及其95%置信区间(CI),然后将其与标准误的倒数(1/SE)或“精度”进行绘制。在该图中,“1/SE”位于x轴,“I²结果”位于y轴。

结果

初看MetaPlot,人们就能预测剔除单个研究可能在多大程度上影响总体异质性。x轴上的精度使我们能够区分每个试验的规模。该图以图形和数值方式在一个视图中描述了带有95%CI的I²统计量,便于快速比较。对于不同类型的结局数据和汇总测量进行荟萃分析时都可以使用MetaPlot。

结论

该方法提供了一种简单的图形方法,可一眼识别出异常值及其对总体异质性的影响。我们希望向Stata专家推荐MetaPlot,以便为该软件编写其模块。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d60f/3481754/7a8e1a0a46af/ijph-39-102f1.jpg

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