A Simulation Based Evaluation of Sample Size Methods for Biomarker Studies

K. Cunanan, M. Polley
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引用次数: 1

Abstract

Cancer researchers are often interested in identifying biomarkers that are indicative of poor outcomes (prognostic biomarkers) or response to specific therapies (predictive biomarkers). In designing a biomarker study, the first statistical issue encountered is the sample size requirement for adequate detection of a biomarker effect. In biomarker studies, the desired effect size is typically larger than those targeted in therapeutic trials and the biomarker prevalence is rarely near the optimal 50% . In this article, we review sample size formulas that are routinely used in designing therapeutic trials. We then conduct simulation studies to evaluate the performances of these methods when applied to biomarker studies. In particular, we examine the impact that deviations from certain statistical assumptions (i.e., biomarker positive prevalence and effect size) have on statistical power and type I error. Our simulation results indicate that when the true biomarker prevalence is close to 50% , all methods perform well in terms of power regardless of the magnitude of the targeted biomarker effect. However, when the biomarker positive prevalence rate deviates from 50% , the empirical power based on some existing methods may be substantially different from the nominal power, and this discrepancy becomes more profound for large biomarker effects. The type I error is maintained close to the 5% nominal level in all scenarios we investigate, although there is a slight inflation as the targeted effect size increases. Based on these results, we delineate the range of parameters within which the use of some sample size methods may be sufficiently robust.
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基于模拟的生物标志物研究样本量方法评估
癌症研究人员通常感兴趣的是识别指示不良结果的生物标志物(预后生物标志物)或对特定疗法的反应(预测生物标记物)。在设计生物标志物研究时,遇到的第一个统计问题是充分检测生物标志物效应的样本量要求。在生物标志物研究中,所需的效应大小通常大于治疗试验中的目标效应大小,并且生物标志物的流行率很少接近最佳50%。在这篇文章中,我们回顾了在设计治疗试验中经常使用的样本量公式。然后,我们进行模拟研究,以评估这些方法在应用于生物标志物研究时的性能。特别是,我们研究了偏离某些统计假设(即生物标志物阳性流行率和影响大小)对统计能力和i型误差的影响。我们的模拟结果表明,当真正的生物标志物流行率接近50%时,无论目标生物标志物效应的大小,所有方法在功率方面都表现良好。然而,当生物标志物阳性流行率偏离50%时,基于一些现有方法的经验功率可能与标称功率显著不同,并且对于大的生物标志物效应,这种差异变得更加深刻。在我们调查的所有场景中,I型误差都保持在接近5%的标称水平,尽管随着目标效应大小的增加,会出现轻微的通货膨胀。基于这些结果,我们描绘了一些样本量方法的使用可能足够稳健的参数范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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