Li Wentian, Wang Mingyi, Irigoyen Patricia, Gregersen Peter K
The Robert S Boas Center for Genomics and Human Genetics, Feinstein Institute for Medical Research, North Shore LIJ Health System 350 Community Drive, Manhasset, NY, USA.
Bioinformatics. 2006 Jun 15;22(12):1503-7. doi: 10.1093/bioinformatics/btl100. Epub 2006 Mar 21.
Genetic association analysis is based on statistical correlations which do not assign any cause-to-effect arrows between the two correlated variables. Normally, such assignment of cause and effect label is not necessary in genetic analysis since genes are always the cause and phenotypes are always the effect. However, among intermediate phenotypes and biomarkers, assigning cause and effect becomes meaningful, and causal inference can be useful.
We show that causal inference is possible by an example in a study of rheumatoid arthritis. With the help of genotypic information, the shared epitope, the causal relationship between two biomarkers related to the disease, anti-cyclic citrullinated peptide (anti-CCP) and rheumatoid factor (RF) has been established. We emphasize the fact that third variable must be a genotype to be able to resolve potential ambiguities in causal inference. Two non-trivial conclusions have been reached by the causal inference: (1) anti-CCP is a cause of RF and (2) it is unlikely that a third confounding factor contributes to both anti-CCP and RF.
基因关联分析基于统计相关性,在两个相关变量之间不指定任何因果箭头。通常,在基因分析中不需要这种因果标签的指定,因为基因总是原因,而表型总是结果。然而,在中间表型和生物标志物中,指定因果关系变得有意义,因果推断可能会有用。
我们通过类风湿性关节炎研究中的一个例子表明因果推断是可能的。借助基因型信息,共享表位,即与该疾病相关的两种生物标志物抗环瓜氨酸肽(anti-CCP)和类风湿因子(RF)之间的因果关系已经确立。我们强调这样一个事实,即第三个变量必须是基因型才能解决因果推断中潜在的模糊性。因果推断得出了两个重要结论:(1)抗环瓜氨酸肽是类风湿因子的一个原因;(2)不太可能有第三个混杂因素同时导致抗环瓜氨酸肽和类风湿因子。