Eight predictive powers with historical and interim data for futility and efficacy analysis

IF 0.7 Q3 STATISTICS & PROBABILITY Statistical Theory and Related Fields Pub Date : 2021-10-25 DOI:10.1080/24754269.2021.1991557
Ying-Ying Zhang, Tengzhong Rong, Man-Man Li
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引用次数: 1

Abstract

ABSTRACT When the historical data of the early phase trial and the interim data of the Phase III trial are available, we should use them to give a more accurate prediction in both futility and efficacy analysis. The predictive power is an important measure of the practical utility of a proposed trial, and it is better than the classical statistical power in giving a good indication of the probability that the trial will demonstrate a positive or statistically significant outcome. In addition to the four predictive powers with historical and interim data available in the literature and summarized in Table 1, we discover and calculate another four predictive powers also summarized in Table 1, for one-sided hypotheses. Moreover, we calculate eight predictive powers summarized in Table 2, for the reversed hypotheses. The combination of the two tables gives us a complete picture of the predictive powers with historical and interim data for futility and efficacy analysis. Furthermore, the eight predictive powers with historical and interim data are utilized to guide the futility analysis in the tamoxifen example. Finally, extensive simulations have been conducted to investigate the sensitivity analysis of priors, sample sizes, interim result and interim time on different predictive powers.
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具有历史和中期数据的八种预测能力,用于徒劳和疗效分析
摘要当早期试验的历史数据和III期试验的中期数据可用时,我们应该使用它们来在无效性和有效性分析中给出更准确的预测。预测能力是衡量拟议试验实际效用的重要指标,它比经典统计能力更好地表明试验将显示积极或统计显著结果的概率。除了文献中可用的、表1中总结的具有历史和中期数据的四种预测能力外,我们发现并计算了表1中也总结的另四种单方面假设的预测能力。此外,我们计算了表2中总结的八种预测能力,用于反向假设。这两个表的结合为我们提供了一个完整的预测能力的图片,以及徒劳和有效性分析的历史和中期数据。此外,在他莫昔芬的例子中,利用具有历史和中期数据的八种预测能力来指导无效性分析。最后,进行了广泛的模拟,以研究先验、样本量、中期结果和中期时间对不同预测能力的敏感性分析。
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来源期刊
CiteScore
0.90
自引率
20.00%
发文量
21
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