Centre of Microbial and Plant Genetics/Bioinformatics, Department of Microbial and Molecular Systems, Katholieke Universiteit Leuven, Leuven, Belgium.
Nat Rev Microbiol. 2010 Oct;8(10):717-29. doi: 10.1038/nrmicro2419. Epub 2010 Aug 31.
Network inference, which is the reconstruction of biological networks from high-throughput data, can provide valuable information about the regulation of gene expression in cells. However, it is an underdetermined problem, as the number of interactions that can be inferred exceeds the number of independent measurements. Different state-of-the-art tools for network inference use specific assumptions and simplifications to deal with underdetermination, and these influence the inferences. The outcome of network inference therefore varies between tools and can be highly complementary. Here we categorize the available tools according to the strategies that they use to deal with the problem of underdetermination. Such categorization allows an insight into why a certain tool is more appropriate for the specific research question or data set at hand.
网络推断,即从高通量数据中重建生物网络,可以提供有关细胞中基因表达调控的有价值信息。然而,这是一个欠定问题,因为可以推断的相互作用数量超过了独立测量的数量。用于网络推断的不同最先进的工具使用特定的假设和简化来处理欠定问题,这些假设和简化会影响推断。因此,网络推断的结果在工具之间有所不同,并且可以高度互补。在这里,我们根据它们用于处理欠定问题的策略对可用工具进行分类。这种分类可以深入了解为什么特定的工具更适合特定的研究问题或手头的数据。