Computational and Systems BiologyCSIRO Livestock Industries, 306 Carmody Road St, Lucia, Brisbane, QLD 4067, Australia.
BMC Genomics. 2012 Jul 31;13:356. doi: 10.1186/1471-2164-13-356.
High throughput gene expression technologies are a popular choice for researchers seeking molecular or systems-level explanations of biological phenomena. Nevertheless, there has been a groundswell of opinion that these approaches have not lived up to the hype because the interpretation of the data has lagged behind its generation. In our view a major problem has been an over-reliance on isolated lists of differentially expressed (DE) genes which - by simply comparing genes to themselves - have the pitfall of taking molecular information out of context. Numerous scientists have emphasised the need for better context. This can be achieved through holistic measurements of differential connectivity in addition to, or in replacement, of DE. However, many scientists continue to use isolated lists of DE genes as the major source of input data for common readily available analytical tools. Focussing this opinion article on our own research in skeletal muscle, we outline our resolutions to these problems - particularly a universally powerful way of quantifying differential connectivity. With a well designed experiment, it is now possible to use gene expression to identify causal mutations and the other major effector molecules with whom they cooperate, irrespective of whether they themselves are DE. We explain why, for various reasons, no other currently available experimental techniques or quantitative analyses are capable of reaching these conclusions.
高通量基因表达技术是研究人员寻求分子或系统水平生物学现象解释的热门选择。然而,有一种观点认为,这些方法并没有达到预期,因为数据的解释落后于其产生。在我们看来,一个主要问题是过度依赖于差异表达(DE)基因的孤立列表,这些列表通过简单地将基因相互比较,存在将分子信息脱离上下文的陷阱。许多科学家强调了需要更好的上下文。这可以通过除了 DE 之外,还通过整体测量差异连通性来实现,或者替代 DE。然而,许多科学家仍然将孤立的 DE 基因列表用作常见可用分析工具的主要输入数据来源。本文聚焦于我们在骨骼肌研究中的自身研究,概述了解决这些问题的方法,特别是一种通用的量化差异连通性的方法。通过精心设计的实验,现在可以使用基因表达来识别因果突变及其与之合作的其他主要效应分子,而不论它们本身是否是 DE。我们解释了为什么出于各种原因,目前没有其他可用的实验技术或定量分析能够得出这些结论。