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使用二分网络算法从代谢中预测功能关联。

Predicting functional associations from metabolism using bi-partite network algorithms.

作者信息

Veeramani Balaji, Bader Joel S

机构信息

Department of Biomedical Engineering, Johns Hopkins University, Baltimore, MD21218, USA.

出版信息

BMC Syst Biol. 2010 Jul 14;4:95. doi: 10.1186/1752-0509-4-95.

Abstract

BACKGROUND

Metabolic reconstructions contain detailed information about metabolic enzymes and their reactants and products. These networks can be used to infer functional associations between metabolic enzymes. Many methods are based on the number of metabolites shared by two enzymes, or the shortest path between two enzymes. Metabolite sharing can miss associations between non-consecutive enzymes in a serial pathway, and shortest-path algorithms are sensitive to high-degree metabolites such as water and ATP that create connections between enzymes with little functional similarity.

RESULTS

We present new, fast methods to infer functional associations in metabolic networks. A local method, the degree-corrected Poisson score, is based only on the metabolites shared by two enzymes, but uses the known metabolite degree distribution. A global method, based on graph diffusion kernels, predicts associations between enzymes that do not share metabolites. Both methods are robust to high-degree metabolites. They out-perform previous methods in predicting shared Gene Ontology (GO) annotations and in predicting experimentally observed synthetic lethal genetic interactions. Including cellular compartment information improves GO annotation predictions but degrades synthetic lethal interaction prediction. These new methods perform nearly as well as computationally demanding methods based on flux balance analysis.

CONCLUSIONS

We present fast, accurate methods to predict functional associations from metabolic networks. Biological significance is demonstrated by identifying enzymes whose strong metabolic correlations are missed by conventional annotations in GO, most often enzymes involved in transport vs. synthesis of the same metabolite or other enzyme pairs that share a metabolite but are separated by conventional pathway boundaries. More generally, the methods described here may be valuable for analyzing other types of networks with long-tailed degree distributions and high-degree hubs.

摘要

背景

代谢重建包含有关代谢酶及其反应物和产物的详细信息。这些网络可用于推断代谢酶之间的功能关联。许多方法基于两种酶共享的代谢物数量,或两种酶之间的最短路径。代谢物共享可能会遗漏串联途径中不连续酶之间的关联,并且最短路径算法对诸如水和ATP等高度代谢物敏感,这些代谢物会在功能相似性很小的酶之间建立连接。

结果

我们提出了新的快速方法来推断代谢网络中的功能关联。一种局部方法,即度校正泊松分数,仅基于两种酶共享的代谢物,但使用已知的代谢物度分布。一种基于图扩散核的全局方法预测不共享代谢物的酶之间的关联。两种方法对高度代谢物都具有鲁棒性。在预测共享的基因本体(GO)注释和预测实验观察到的合成致死遗传相互作用方面,它们优于以前的方法。纳入细胞区室信息可改善GO注释预测,但会降低合成致死相互作用预测。这些新方法的性能几乎与基于通量平衡分析的计算要求较高的方法一样好。

结论

我们提出了快速、准确的方法来从代谢网络预测功能关联。通过识别在GO中传统注释遗漏其强代谢相关性的酶,证明了生物学意义,这些酶最常涉及同一代谢物的运输与合成或共享代谢物但被传统途径边界分隔的其他酶对。更一般地说,这里描述的方法对于分析具有长尾度分布和高度中心节点的其他类型网络可能是有价值的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/df59/2919484/9bb8ca3a91f2/1752-0509-4-95-1.jpg

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