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Performance of Biomarker-Based Subgroup Selection Rules in Adaptive Enrichment Designs

机译:基于生物标志物的亚组选择规则在自适应富集设计中的性能

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In the planning stage of a clinical trial investigating a potentially targeted therapy, there is commonly a high degree of uncertainty whether the treatment is more efficient (or efficient only) in a subgroup compared to the whole population. Recentlydeveloped adaptive designs enable to allow for an efficacy assessment both for the whole population and a subgroup and to select the target population mid-course based on interim results (see, e.g., Wang et al., Pharm Stat 6:227-244, 2007, Brannath et al., Stat Med 28:1445-1463,2009, Wang et al., Biom J 51:358-374,2009, Jenkins et al., Pharm Stat 10:347-356, 2011, Friede et al., Stat Med 31:4309-4120, 2012). Frequently, predictive biomarkers are used in these trials for identifying patients more likelyto benefit from a drug. We consider the situation that the selection of the patient population is based on a biomarker and where the diagnostics that evaluates the biomarker may be perfect, i.e., with 100 % sensitivity and specificity, or not. The performance of the applied subset selection rule is crucial for the overall characteristics of the design. In the setting of an adaptive enrichment design, we evaluate the properties of subgroup selection rules in terms of type I error rate and power by taking into account decision rules with a fixed ad hoc threshold and optimal decision rules developed for the situation of uncertain assumptions. In a simulation study, we demonstrate that designs with optimal decision rules are under certain assumptions morepowerful as compared to those with ad hoc decision rules. Throughout the results, a strong impact of sensitivity and specificity of the biomarker on both type I error rate and power is observed.
机译:在研究潜在靶向治疗的临床试验的规划阶段,与整个人群相比,在亚组中治疗是否更有效(或仅有效)通常存在高度不确定性。最近开发的自适应设计能够对整个人群和亚组进行功效评估,并根据中期结果选择中途目标人群(参见,例如,Wang等人,Pharm Stat 6:227-244,2007 ,Brannath等人,Stat Med 28:1445-1463,2009,Wang等人,Biom J 51:358-374,2009,Jenkins等人,Pharm Stat 10:347-356,2011,Friede等人。 ,Stat Med 31:4309-4120,2012)。通常,在这些试验中使用预测性生物标志物来鉴定更可能从药物中受益的患者。我们认为患者的选择是基于生物标志物的,并且评估生物标志物的诊断方法可能是完美的,即是否具有100%的敏感性和特异性。所应用的子集选择规则的性能对于设计的总体特征至关重要。在自适应浓缩设计的设置中,我们通过考虑具有固定ad hoc阈值的决策规则和针对不确定假设情况开发的最佳决策规则,根据I型错误率和功效评估子组选择规则的属性。在仿真研究中,我们证明了具有最佳决策规则的设计在某些假设下比具有临时决策规则的设计更强大。在整个结果中,观察到生物标志物的敏感性和特异性对I型错误率和功效均产生强烈影响。

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