Multiple inferences using confidence intervals

被引:54
|
作者
Ludbrook, J
机构
[1] 563 Canning Street, Carlton North
关键词
Bonferroni; effect size; family-wise type 1 error rate; Holm; means; multiple inferences; odds ratio; relative risk; Ryan; step-wise procedures;
D O I
10.1046/j.1440-1681.2000.03223.x
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
1. In a recent review article, the problem of making false-positive inferences as a result of making multiple comparisons between groups of experimental units or between experimental outcomes was addressed. 2. It was concluded that the most universally applicable solution was to use the Ryan-Holm step-down Bonferroni procedure to control the family-wise (experiment-wise) type 1 error rate. This procedure consists of adjusting the P values resulting from hypothesis testing. It allows for correlation among hypotheses and has been validated by Monte Carlo simulation. It is a simple procedure and can be performed by hand. 3. However, some investigators prefer to estimate effect sizes and make inferences by way of confidence intervals rather than, or in addition to, testing hypotheses by way of P values and it is the policy of some editors of biomedical journals to insist on this. It is not generally recognized that confidence intervals, like P values, must he adjusted if multiple inferences are made from confidence intervals in a single experiment. 4. In the present review, it is shown how confidence intervals can be adjusted for multiplicity by an extension of the Ryan-Holm step-down Bonferroni procedure. This can be done for differences between group means in the case of continuous variables and for odds ratios or relative risks in the case of categorical variables set out as 2 x 2 tables.
引用
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页码:212 / 215
页数:4
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