School of Computer Science and Engineering, The University of New South Wales, Sydney, NSW, 2052, Australia.
BMC Genomics. 2009 Dec 3;10 Suppl 3(Suppl 3):S17. doi: 10.1186/1471-2164-10-S3-S17.
The reconstruction of gene regulatory networks from high-throughput "omics" data has become a major goal in the modelling of living systems. Numerous approaches have been proposed, most of which attempt only "one-shot" reconstruction of the whole network with no intervention from the user, or offer only simple correlation analysis to infer gene dependencies.
We have developed MINER (Microarray Interactive Network Exploration and Representation), an application that combines multivariate non-linear tree learning of individual gene regulatory dependencies, visualisation of these dependencies as both trees and networks, and representation of known biological relationships based on common Gene Ontology annotations. MINER allows biologists to explore the dependencies influencing the expression of individual genes in a gene expression data set in the form of decision, model or regression trees, using their domain knowledge to guide the exploration and formulate hypotheses. Multiple trees can then be summarised in the form of a gene network diagram. MINER is being adopted by several of our collaborators and has already led to the discovery of a new significant regulatory relationship with subsequent experimental validation.
Unlike most gene regulatory network inference methods, MINER allows the user to start from genes of interest and build the network gene-by-gene, incorporating domain expertise in the process. This approach has been used successfully with RNA microarray data but is applicable to other quantitative data produced by high-throughput technologies such as proteomics and "next generation" DNA sequencing.
从高通量“组学”数据中重建基因调控网络已成为对生命系统进行建模的主要目标。已经提出了许多方法,其中大多数方法都试图不经过用户干预就对整个网络进行“一次性”重建,或者只提供简单的相关分析来推断基因之间的相关性。
我们开发了 MINER(微阵列交互式网络探索和表示),这是一种应用程序,它将单个基因调控相关性的多元非线性树学习、将这些相关性表示为树和网络的可视化以及基于常见基因本体论注释的已知生物学关系的表示相结合。MINER 允许生物学家以决策、模型或回归树的形式探索影响基因表达数据集单个基因表达的相关性,利用他们的领域知识来指导探索和形成假设。然后可以将多个树以基因网络图的形式进行总结。MINER 已经被我们的几位合作者采用,并且已经发现了一个新的具有重要调控关系的基因,随后进行了实验验证。
与大多数基因调控网络推断方法不同,MINER 允许用户从感兴趣的基因开始,逐个构建网络,在这个过程中结合领域专业知识。这种方法已成功应用于 RNA 微阵列数据,但也适用于其他高通量技术(如蛋白质组学和“下一代”DNA 测序)产生的定量数据。