| Literature DB >> 20046885 |
Yufei Huang1, Isabel M Tienda-Luna, Yufeng Wang.
Abstract
Statistical models for reverse engineering gene regulatory networks are surveyed in this article. To provide readers with a system-level view of the modeling issues in this research, a graphical modeling framework is proposed. This framework serves as the scaffolding on which the review of different models can be systematically assembled. Based on the framework, we review many existing models for many aspects of gene regulation; the pros and cons of each model are discussed. In addition, network inference algorithms are also surveyed under the graphical modeling framework by the categories of point solutions and probabilistic solutions and the connections and differences among the algorithms are provided. This survey has the potential to elucidate the development and future of reverse engineering GRNs and bring statistical signal processing closer to the core of this research.Entities:
Year: 2009 PMID: 20046885 PMCID: PMC2763329 DOI: 10.1109/MSP.2008.930647
Source DB: PubMed Journal: IEEE Signal Process Mag ISSN: 1053-5888 Impact factor: 12.551