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Introduction of a new critical p value correction method for statistical significance analysis of metabonomics data

机译:介绍了一种用于代谢组学数据统计显着性分析的新的临界p值校正方法

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摘要

Nuclear magnetic resonance (NMR) spectroscopy-based metabonomics is of growing importance for discovery of human disease biomarkers. Identification and validation of disease biomarkers using statistical significance analysis (SSA) is critical for translation to clinical practice. SSA is performed by assessing a null hypothesis test using a derivative of the Student’s t test, e.g., a Welch’s t test. Choosing how to correct the significance level for rejecting null hypotheses in the case of multiple testing to maintain a constant family-wise type I error rate is a common problem in such tests. The multiple testing problem arises because the likelihood of falsely rejecting the null hypothesis, i.e., a false positive, grows as the number of tests applied to the same data set increases. Several methods have been introduced to address this problem. Bonferroni correction (BC) assumes all variables are independent and therefore sacrifices sensitivity for detecting true positives in partially dependent data sets. False discovery rate (FDR) methods are more sensitive than BC but uniformly ascribe highest stringency to lowest p value variables. Here, we introduce standard deviation step down (SDSD), which is more sensitive and appropriate than BC for partially dependent data sets. Sensitivity and type I error rate of SDSD can be adjusted based on the degree of variable dependency. SDSD generates fundamentally different profiles of critical p values compared with FDR methods potentially leading to reduced type II error rates. SDSD is increasingly sensitive for more concentrated metabolites. SDSD is demonstrated using NMR-based metabonomics data collected on three different breast cancer cell line extracts.
机译:基于核磁共振(NMR)光谱的代谢组学对于人类疾病生物标记物的发现越来越重要。使用统计显着性分析(SSA)识别和验证疾病生物标志物对于转化为临床实践至关重要。通过使用学生t检验的派生形式(例如,韦尔奇t检验)评估无效假设检验来执行SSA。在多重测试的情况下,如何选择纠正校正否定假设的显着性水平以保持恒定的家庭式I型错误率是此类测试中的常见问题。出现多重测试问题的原因是,随着应用于相同数据集的测试次数的增加,错误拒绝无效假设(即误报)的可能性也会增加。已经引入了几种方法来解决这个问题。 Bonferroni校正(BC)假设所有变量都是独立的,因此牺牲了检测部分相关数据集中真实阳性的灵敏度。错误发现率(FDR)方法比BC更敏感,但将最高严格性统一归因于最低p值变量。在这里,我们介绍了标准偏差递减(SDSD),它对于部分相关数据集比BC更灵敏和更合适。 SDSD的灵敏度和I类错误率可以根据变量的依赖程度进行调整。与FDR方法相比,SDSD生成的临界p值具有根本不同的配置文件,有可能导致II型错误率降低。 SDSD对更集中的代谢物越来越敏感。使用从三种不同的乳腺癌细胞系提取物中收集的基于NMR的代谢组学数据证明了SDSD。

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