
doi: 10.2307/2531870
pmid: 3390511
This paper considers the problem of monitoring slowly accruing data from a nonsequentially designed experiment. We describe the use of the B-value, which is a transformed Z-value, for the calculation of conditional power. In data monitoring, interim Z-values do not allow simple projections to the end of the study. Moreover, because of their popular association with P-values, Z-values are often misinterpreted. If observed trends are viewed as the realization of a Brownian motion process, the B-value and its decomposition allow simple extrapolations to the end of the study under a variety of hypotheses. Applications are presented to one- and two-sample Z-tests, the two-sample Wilcoxon rank sum test, and the log-rank test.
Clinical Trials as Topic, Biometry, Myocardial Infarction, Propranolol, Research Design, Probability
Clinical Trials as Topic, Biometry, Myocardial Infarction, Propranolol, Research Design, Probability
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