Consequences of sequential sampling for meta-analysis

被引:0
作者
Lorenzo Braschi
Juan Botella
Manuel Suero
机构
[1] Villanueva de la Cañada,Universidad Alfonso X El Sabio
[2] Universidad Autónoma de Madrid,Facultad de Ciencias de la Salud, Departamento de Enfermería
[3] Universidad Alfonso X El Sabio,undefined
来源
Behavior Research Methods | 2014年 / 46卷
关键词
Sequential sampling; Sequential analysis; CLAST rule; Meta-analysis;
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学科分类号
摘要
Sequential stopping rules allow hypotheses to be tested using smaller sample sizes than are possible under conventional methods, while controlling the Type I and II error rates. However, the consequences of using such procedures when combining studies in a meta-analysis have rarely been discussed. For a primary study to be included in a meta-analysis, it must provide an estimate of the effect size, and it must be possible to calculate the variance of this estimate, which is used for weighting the study. It is therefore crucial to know whether the use of sequential stopping rules introduces any bias in the estimate of the effect size and/or modifies the variance of the estimate. In the present research, both aspects were studied for the CLAST rule, as applied to testing the difference between two means from paired samples, in a variety of scenarios of sample size and population effect size. The results show that although the bias is small, but still larger than that for the fixed-sample rule, the variance of the estimate is much higher with the CLAST sequential stopping rule. The implications of these results for the incorporation of such studies into meta-analyses are discussed. It is recommended to incorporate such studies into meta-analyses by taking only the information conveyed in the initial sample. The authors of primary studies employing sequential rules should report that information when publishing their results.
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页码:1167 / 1183
页数:16
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  • [1] Bassler D(2010)Stopping randomized trials early for benefit and estimation of treatment effects: Systematic review and meta-regression analysis JAMA 303 1180-1187
  • [2] Briel M(2010)Psychometric inferences from meta-analysis of reliability and internal consistency coefficients Psychological Methods 15 386-397
  • [3] Montori VM(2006)Optimization of sample size in controlled experiments: The CLAST rule Behavior Research Methods 38 65-76
  • [4] Lane M(2006)The design of simulation studies in medical statistics Statistics in Medicine 25 4279-4292
  • [5] Glasziou P(1992)A power primer Psychological Bulletin 112 155-159
  • [6] Zhou Q(1992)Statistical power analysis Current Directions in Psychological Science 1 98-101
  • [7] Ramsay T(1982)On the origins of the.05 level of statistical significance American Psychologist 37 553-558
  • [8] Botella J(2000)Trim and fill: A simple funnel-plot-based method of testing and adjusting for publication bias in meta-analysis Biometrics 56 455-463
  • [9] Suero M(1997)Bias in meta-analysis detected by a simple graphical test British Medical Journal 315 629-634
  • [10] Gambara H(2010)Improved stopping rules for the design of efficient small-sample experiments in biomedical and biobehavioral research Behavior Research Methods 42 3-22