估计员
样本量测定
计算器
标准差
经验法则
四分位数
统计
计算机科学
样本均值和样本协方差
数据转换
数学
转化(遗传学)
置信区间
样品(材料)
标准误差
数据挖掘
算法
生物化学
化学
色谱法
基因
操作系统
数据仓库
作者
Jiandong Shi,Dehui Luo,Hong Weng,Xian‐Tao Zeng,Lu Lin,Haitao Chu,Tiejun Tong
摘要
When reporting the results of clinical studies, some researchers may choose the five‐number summary (including the sample median, the first and third quartiles, and the minimum and maximum values) rather than the sample mean and standard deviation (SD), particularly for skewed data. For these studies, when included in a meta‐analysis, it is often desired to convert the five‐number summary back to the sample mean and SD. For this purpose, several methods have been proposed in the recent literature and they are increasingly used nowadays. In this article, we propose to further advance the literature by developing a smoothly weighted estimator for the sample SD that fully utilizes the sample size information. For ease of implementation, we also derive an approximation formula for the optimal weight, as well as a shortcut formula for the sample SD. Numerical results show that our new estimator provides a more accurate estimate for normal data and also performs favorably for non‐normal data. Together with the optimal sample mean estimator in Luo et al., our new methods have dramatically improved the existing methods for data transformation, and they are capable to serve as “rules of thumb” in meta‐analysis for studies reported with the five‐number summary. Finally for practical use, an Excel spreadsheet and an online calculator are also provided for implementing our optimal estimators.
科研通智能强力驱动
Strongly Powered by AbleSci AI