论文标题
使用交叉验证的风险分数法为两个试验端点开发预测签名方法
Developing a predictive signature for two trial endpoints using the cross-validated risk scores method
论文作者
论文摘要
已经提出了现有的交叉验证风险评分(CVRS)设计,用于使用高维数据(例如遗传数据)在高效率患者组(敏感组)中开发和测试治疗的疗效。该设计基于计算每个患者的风险评分,并使用非参数聚类程序将其分为簇。在某些情况下,希望考虑两个结果之间的权衡,例如功效和毒性,或成本和有效性。有了这种动机,我们将CVRS设计(CVRS2)扩展到考虑两个结果。该设计采用分为簇的双变量风险评分。我们使用模拟数据评估CVRS2的属性,并说明其在随机精神病学试验中的应用。我们表明,CVRS2能够可靠地识别模拟数据中的敏感组(新治疗方法为两个结果提供好处的组)。我们将CVRS2设计应用于一项心理学临床试验,该试验具有犯罪者状况和药物使用状态作为两个结果,并收集了大量基线协变量。 CVRS2设计对这两种结果都产生了显着的治疗效果,而CVRS方法仅在预先过滤协变量后才确定对罪犯状态的显着效果。
The existing cross-validated risk scores (CVRS) design has been proposed for developing and testing the efficacy of a treatment in a high-efficacy patient group (the sensitive group) using high-dimensional data (such as genetic data). The design is based on computing a risk score for each patient and dividing them into clusters using a non-parametric clustering procedure. In some settings it is desirable to consider the trade-off between two outcomes, such as efficacy and toxicity, or cost and effectiveness. With this motivation, we extend the CVRS design (CVRS2) to consider two outcomes. The design employs bivariate risk scores that are divided into clusters. We assess the properties of the CVRS2 using simulated data and illustrate its application on a randomised psychiatry trial. We show that CVRS2 is able to reliably identify the sensitive group (the group for which the new treatment provides benefit on both outcomes) in the simulated data. We apply the CVRS2 design to a psychology clinical trial that had offender status and substance use status as two outcomes and collected a large number of baseline covariates. The CVRS2 design yields a significant treatment effect for both outcomes, while the CVRS approach identified a significant effect for the offender status only after pre-filtering the covariates.