Comparison of probabilistic Boolean network and dynamic Bayesian network approaches for inferring gene regulatory networks

被引:63
作者
Li, Peng [1 ]
Zhang, Chaoyang [1 ]
Perkins, Edward J. [2 ]
Gong, Ping [3 ]
Deng, Youping [4 ]
机构
[1] Univ So Mississippi, Sch Comp, Hattiesburg, MS 39406 USA
[2] USA, Environm Lab, Engineer Res & Dev Ctr, Vicksburg, MS 39180 USA
[3] SpecPro Inc, Vicksburg, MS 39180 USA
[4] Univ So Mississippi, Dept Biol Sci, Hattiesburg, MS 39406 USA
关键词
Bayesian Network; Boolean Function; Gene Regulatory Network; Boolean Network; Dynamic Bayesian Network;
D O I
10.1186/1471-2105-8-S7-S13
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Background: The regulation of gene expression is achieved through gene regulatory networks (GRNs) in which collections of genes interact with one another and other substances in a cell. In order to understand the underlying function of organisms, it is necessary to study the behavior of genes in a gene regulatory network context. Several computational approaches are available for modeling gene regulatory networks with different datasets. In order to optimize modeling of GRN, these approaches must be compared and evaluated in terms of accuracy and efficiency. Results: In this paper, two important computational approaches for modeling gene regulatory networks, probabilistic Boolean network methods and dynamic Bayesian network methods, are compared using a biological time-series dataset from the Drosophila Interaction Database to construct a Drosophila gene network. A subset of time points and gene samples from the whole dataset is used to evaluate the performance of these two approaches. Conclusion: The comparison indicates that both approaches had good performance in modeling the gene regulatory networks. The accuracy in terms of recall and precision can be improved if a smaller subset of genes is selected for inferring GRNs. The accuracy of both approaches is dependent upon the number of selected genes and time points of gene samples. In all tested cases, DBN identified more gene interactions and gave better recall than PBN.
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页数:8
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