Detecting the skewness of data from the five-number summary and its application in meta-analysis

偏斜 四分位数 样本量测定 标准差 统计 荟萃分析 样品(材料) I类和II类错误 计算机科学 功率分析 数学 计量经济学 置信区间 算法 医学 化学 色谱法 内科学 密码学
作者
Jiandong Shi,Dehui Luo,Xiang Wan,Yue Liu,Jiming Liu,Zhaoxiang Bian,Tiejun Tong
出处
期刊:Statistical Methods in Medical Research [SAGE]
卷期号:32 (7): 1338-1360 被引量:221
标识
DOI:10.1177/09622802231172043
摘要

For clinical studies with continuous outcomes, when the data are potentially skewed, researchers may choose to report the whole or part of the five-number summary (the sample median, the first and third quartiles, and the minimum and maximum values) rather than the sample mean and standard deviation. In the recent literature, it is often suggested to transform the five-number summary back to the sample mean and standard deviation, which can be subsequently used in a meta-analysis. However, if a study contains skewed data, this transformation and hence the conclusions from the meta-analysis are unreliable. Therefore, we introduce a novel method for detecting the skewness of data using only the five-number summary and the sample size, and meanwhile, propose a new flow chart to handle the skewed studies in a different manner. We further show by simulations that our skewness tests are able to control the type I error rates and provide good statistical power, followed by a simulated meta-analysis and a real data example that illustrate the usefulness of our new method in meta-analysis and evidence-based medicine.
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