Pre-selected class-level testing of longitudinal biomarkers reduces required multiple testing corrections to yield novel insights in longitudinal small sample human studies.

Andrea S Foulkes, Livio Azzoni, Luis J Montaner
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Abstract

Objectives: Exploratory studies that aim to evaluate novel therapeutic strategies in human cohorts often involve the collection of hundreds of variables measured over time on a small sample of individuals. Stringent error control for testing hypotheses in this setting renders it difficult to identify statistically signification associations. The objective of this study is to demonstrate how leveraging prior information about the biological relationships among variables can increase power for novel discovery.

Methods: We apply the class level association score statistic for longitudinal data (CLASS-LD) as an analysis strategy that complements single variable tests. An example is presented that aims to evaluate the relationships among 14 T-cell and monocyte activation variables measured with CD4 T-cell count over three time points after antiretroviral therapy (n=62).

Results: CLASS-LD using three classes with emphasis on T-cell activation with either classical vs. intermediate/inflammatory monocyte subsets detected associations in two of three classes, while single variable testing detected only one out of the 14 variables considered.

Conclusions: Application of a class-level testing strategy provides an alternative to single immune variables by defining hypotheses based on a collection of variables that share a known underlying biological relationship. Broader use of class-level analysis is expected to increase the available information that can be derived from limited sample clinical studies.

纵向生物标志物的预选类水平测试减少了在纵向小样本人类研究中产生新见解所需的多次测试更正。
目的:旨在评估人类群体新治疗策略的探索性研究通常涉及收集数百个变量,这些变量随时间在一小部分个体样本上测量。在这种情况下,严格的误差控制测试假设使得很难识别统计意义关联。本研究的目的是证明如何利用关于变量之间生物关系的先验信息可以增加新发现的能力。方法:我们采用纵向数据的类水平关联评分统计(class - ld)作为单变量检验的补充分析策略。本文提出了一个例子,旨在评估抗逆转录病毒治疗后三个时间点上用CD4 t细胞计数测量的14个t细胞和单核细胞活化变量之间的关系(n=62)。结果:CLASS-LD使用三个类别,强调t细胞激活,无论是经典的还是中间/炎症的单核细胞亚群,在三个类别中检测到两个关联,而单变量测试只检测到14个变量中的一个。结论:类水平测试策略的应用提供了一种替代单一免疫变量的方法,该方法基于共享已知潜在生物学关系的变量集合定义假设。类水平分析的广泛使用有望增加可从有限样本临床研究中获得的可用信息。
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