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Statistical Methods for Analyzing Tissue Microarray Data

机译:分析组织芯片数据的统计方法

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摘要

Tissue microarrays (TMAs) are a new high-throughput tool for the study of protein expression patterns in tissues and are increasingly used to evaluate the diagnostic and prognostic importance of biomarkers. TMA data are rather challenging to analyze. Covariates are highly skewed, non-normal, and may be highly correlated. We present statistical methods for relating TMA data to censored time-to-event data. We review methods for evaluating the predictive power of Cox regression models and show how to test whether biomarker data contain predictive information above and beyond standard pathology covariates. We use nonparametric bootstrap methods to validate model fitting indices such as the concordance index. We also present data mining methods for characterizing high risk patients with simple biomarker rules. Since researchers in the TMA community routinely dichotomize biomarker expression values, survival trees are a natural choice. We also use bump hunting (patient rule induction method), which we adapt to the use with survival data. The proposed methods are applied to a kidney cancer tissue microarray data set.
机译:组织微阵列(TMA)是用于研究组织中蛋白质表达模式的新型高通量工具,并且越来越多地用于评估生物标志物的诊断和预后重要性。 TMA数据很难分析。协变量高度偏斜,非正态,并且可能高度相关。我们提出了将TMA数据与审查的事件时间数据相关的统计方法。我们审查了评估Cox回归模型的预测能力的方法,并展示了如何测试生物标记数据是否包含超出标准病理协变量的预测信息。我们使用非参数引导方法来验证模型拟合指数,例如一致性指数。我们还介绍了利用简单的生物标记规则来表征高危患者的数据挖掘方法。由于TMA社区中的研究人员通常将生物标志物的表达值二等分,因此生存树是自然的选择。我们还使用凹凸不平搜索(患者规则归纳法),我们将其与生存数据结合使用。所提出的方法被应用于肾癌组织微阵列数据集。

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