| Literature DB >> 26440435 |
Yupeng Li1, Stephanie A Pearl2, Scott A Jackson3.
Abstract
Even though vast amounts of genome-wide gene expression data have become available in plants, it remains a challenge to effectively mine this information for the discovery of genes and gene networks, for instance those that control agronomically important traits. These networks reflect potential interactions among genes and, therefore, can lead to a systematic understanding of the molecular mechanisms underlying targeted biological processes. We discuss methods to analyze gene networks using gene expression data, specifically focusing on four common statistical approaches used to reconstruct networks: correlation, feature selection in supervised learning, probabilistic graphical model, and meta-prediction. In addition, we discuss the effective use of these methods for acquiring an in-depth understanding of biological systems in plants.Mesh:
Year: 2015 PMID: 26440435 DOI: 10.1016/j.tplants.2015.06.013
Source DB: PubMed Journal: Trends Plant Sci ISSN: 1360-1385 Impact factor: 18.313