Estimating the sample mean and standard deviation from the sample size, median, range and/or interquartile range

标准差 样本量测定 估计员 统计 四分位数 航程(航空) 样品(材料) 四分位间距 标准误差 绝对偏差 样本均值和样本协方差 计算机科学 均方误差 学生化范围 数学 置信区间 计量经济学 色谱法 复合材料 化学 材料科学
作者
Xiang Wan,Wenqian Wang,Jiming Liu,Tiejun Tong
出处
期刊:BMC Medical Research Methodology [Springer Nature]
卷期号:14 (1) 被引量:5509
标识
DOI:10.1186/1471-2288-14-135
摘要

In systematic reviews and meta-analysis, researchers often pool the results of the sample mean and standard deviation from a set of similar clinical trials. A number of the trials, however, reported the study using the median, the minimum and maximum values, and/or the first and third quartiles. Hence, in order to combine results, one may have to estimate the sample mean and standard deviation for such trials.In this paper, we propose to improve the existing literature in several directions. First, we show that the sample standard deviation estimation in Hozo et al.'s method (BMC Med Res Methodol 5:13, 2005) has some serious limitations and is always less satisfactory in practice. Inspired by this, we propose a new estimation method by incorporating the sample size. Second, we systematically study the sample mean and standard deviation estimation problem under several other interesting settings where the interquartile range is also available for the trials.We demonstrate the performance of the proposed methods through simulation studies for the three frequently encountered scenarios, respectively. For the first two scenarios, our method greatly improves existing methods and provides a nearly unbiased estimate of the true sample standard deviation for normal data and a slightly biased estimate for skewed data. For the third scenario, our method still performs very well for both normal data and skewed data. Furthermore, we compare the estimators of the sample mean and standard deviation under all three scenarios and present some suggestions on which scenario is preferred in real-world applications.In this paper, we discuss different approximation methods in the estimation of the sample mean and standard deviation and propose some new estimation methods to improve the existing literature. We conclude our work with a summary table (an Excel spread sheet including all formulas) that serves as a comprehensive guidance for performing meta-analysis in different situations.
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