Whistler Toni, Taylor Renee, Craddock R Cameron, Broderick Gordon, Klimas Nancy, Unger Elizabeth R
Centers for Disease Control and Prevention, Viral Exanthems and Herpesvirus Branch, Atlanta, GA 30333, USA.
Pharmacogenomics. 2006 Apr;7(3):395-405. doi: 10.2217/14622416.7.3.395.
Quantitative trait analysis (QTA) can be used to test whether the expression of a particular gene significantly correlates with some ordinal variable. To limit the number of false discoveries in the gene list, a multivariate permutation test can also be performed. The purpose of this study is to identify peripheral blood gene expression correlates of fatigue using quantitative trait analysis on gene expression data from 20,000 genes and fatigue traits measured using the multidimensional fatigue inventory (MFI). A total of 839 genes were statistically associated with fatigue measures. These mapped to biological pathways such as oxidative phosphorylation, gluconeogenesis, lipid metabolism, and several signal transduction pathways. However, more than 50% are not functionally annotated or associated with identified pathways. There is some overlap with genes implicated in other studies using differential gene expression. However, QTA allows detection of alterations that may not reach statistical significance in class comparison analyses, but which could contribute to disease pathophysiology. This study supports the use of phenotypic measures of chronic fatigue syndrome (CFS) and QTA as important for additional studies of this complex illness. Gene expression correlates of other phenotypic measures in the CFS Computational Challenge (C3) data set could be useful. Future studies of CFS should include as many precise measures of disease phenotype as is practical.
数量性状分析(QTA)可用于检验特定基因的表达是否与某个有序变量显著相关。为了限制基因列表中的错误发现数量,也可以进行多变量置换检验。本研究的目的是通过对来自20000个基因的基因表达数据和使用多维疲劳量表(MFI)测量的疲劳性状进行数量性状分析,来确定疲劳的外周血基因表达相关性。共有839个基因与疲劳测量在统计学上相关。这些基因映射到生物途径,如氧化磷酸化、糖异生、脂质代谢以及一些信号转导途径。然而,超过50%的基因没有功能注释或与已确定的途径相关。与其他使用差异基因表达的研究中涉及的基因存在一些重叠。然而,QTA能够检测到在类别比较分析中可能未达到统计学显著性,但可能对疾病病理生理学有贡献的改变。本研究支持使用慢性疲劳综合征(CFS)的表型测量和QTA,这对于对这种复杂疾病的进一步研究很重要。CFS计算挑战(C3)数据集中其他表型测量的基因表达相关性可能会有所帮助。未来对CFS的研究应尽可能纳入更多精确的疾病表型测量。