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Identifying combinations of cancer markers for further study as triggers of early intervention.

机译:确定癌症标记物的组合,以作为早期干预的触发因素,以供进一步研究。

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In many long-term clinical trials or cohort studies, investigators repeatedly collect and store tissue or serum specimens and later test specimens from cancer cases and a random sample of controls for potential markers for cancer. An important question is what combination, if any, of the molecular markers should be studied in a future trial as a trigger for early intervention. To answer this question, we summarized the performance of various combinations using Receiver Operating Characteristic (ROC) curves, which plot true versus false positive rates. To construct the ROC curves, we proposed a new class of nonparametric algorithms which extends the ROC paradigm to multiple tests. We fit various combinations of markers to a training sample and evaluated the performance in a test sample using a target region based on a utility function. We applied the methodology to the following markers for prostate cancer, the last value of total prostate-specific antigen (PSA), the last ratio of total to free PSA, the last slope of total PSA, and the last slope of the ratio. In the test sample, the ROC curve for last total PSA was slightly closer to the target region than the ROC curve for a combination of four markers. In a separate validation sample, the ROC curve for last total PSA intersected the target region in 77% of bootstrap replications, indicating some promise for further study. We also discussed sample size calculations.
机译:在许多长期的临床试验或队列研究中,研究人员反复收集和存储癌症病例的组织或血清样本以及后来的测试样本以及用于癌症潜在标记物的随机对照样本。一个重要的问题是,在将来的试验中应研究哪种分子标记组合(如果有的话),以触发早期干预。为了回答这个问题,我们使用接收器工作特性(ROC)曲线总结了各种组合的性能,该曲线绘制了真假率与假阳性率。为了构建ROC曲线,我们提出了一类新的非参数算法,它将ROC范式扩展到多个测试。我们将标记的各种组合拟合到训练样本中,并基于效用函数使用目标区域评估测试样本中的性能。我们将该方法应用于以下前列腺癌标记物,总前列腺特异性抗原(PSA)的最后值,总PSA与游离PSA的最后比率,总PSA的最后斜率和比率的最后斜率。在测试样品中,最后的总PSA的ROC曲线比四个标记组合的ROC曲线稍微靠近目标区域。在一个单独的验证样本中,最后一次总PSA的ROC曲线与77%的自举复制中的目标区域相交,这为进一步研究提供了希望。我们还讨论了样本量计算。

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