Sun Wei, Hudson Nicholas J, Reverter Antonio, Waardenberg Ashley J, Tellam Ross L, Vuocolo Tony, Byrne Keren, Dalrymple Brian P
Animal Science and Technology College, Yangzhou University, Yangzhou 225009, China.
BMC Res Notes. 2012 Nov 13;5:632. doi: 10.1186/1756-0500-5-632.
We have recently described a method for the construction of an informative gene expression correlation landscape for a single tissue, longissimus muscle (LM) of cattle, using a small number (less than a hundred) of diverse samples. Does this approach facilitate interspecies comparison of networks?
Using gene expression datasets from LM samples from a single postnatal time point for high and low muscling sheep, and from a developmental time course (prenatal to postnatal) for normal sheep and sheep exhibiting the Callipyge muscling phenotype gene expression correlations were calculated across subsets of the data comparable to the bovine analysis. An "Always Correlated" gene expression landscape was constructed by integrating the correlations from the subsets of data and was compared to the equivalent landscape for bovine LM muscle. Whilst at the high level apparently equivalent modules were identified in the two species, at the detailed level overlap between genes in the equivalent modules was limited and generally not significant. Indeed, only 395 genes and 18 edges were in common between the two landscapes.
Since it is unlikely that the equivalent muscles of two closely related species are as different as this analysis suggests, within tissue gene expression correlations appear to be very sensitive to the samples chosen for their construction, compounded by the different platforms used. Thus users need to be very cautious in interpretation of the differences. In future experiments, attention will be required to ensure equivalent experimental designs and use cross-species gene expression platform to enable the identification of true differences between different species.
我们最近描述了一种方法,可利用少量(少于一百个)不同样本构建牛的单一组织——背最长肌(LM)的信息丰富的基因表达关联图谱。这种方法是否有助于网络的种间比较?
使用来自高肌肉量和低肌肉量绵羊出生后单一时间点的LM样本的基因表达数据集,以及来自正常绵羊和表现出臀肌肥大肌肉表型的绵羊从产前到产后的发育时间进程的基因表达数据集,计算与牛分析中可比的数据子集之间的基因表达相关性。通过整合数据子集的相关性构建了一个“始终相关”的基因表达图谱,并将其与牛LM肌肉的等效图谱进行比较。虽然在总体水平上在两个物种中鉴定出了明显等效的模块,但在详细水平上,等效模块中的基因重叠有限且通常不显著。实际上,两个图谱之间只有395个基因和18条边是共有的。
由于两个密切相关物种的等效肌肉不太可能像该分析所显示的那样不同,组织内的基因表达相关性似乎对用于构建它们的样本非常敏感,再加上所使用的不同平台,因此用户在解释差异时需要非常谨慎。在未来的实验中,需要注意确保等效的实验设计并使用跨物种基因表达平台,以识别不同物种之间的真正差异。