An empirical Bayes approach to inferring large-scale gene association networks
Ludwig-Maximilians-Universität München
Abstract
We introduce a novel framework for small-sample inference of graphical models from gene expression data. Specifically, we focus on the so-called graphical Gaussian models (GGMs) that are now frequently used to describe gene association networks and to detect conditionally dependent genes. Our new approach is based on (1) improved (regularized) small-sample point estimates of partial correlation, (2) an exact test of edge inclusion with adaptive estimation of the degree of freedom and (3) a heuristic network search based on false discovery rate multiple testing. Steps (2) and (3) correspond to an empirical Bayes estimate of the network topology.
Using computer simulations, we investigate the sensitivity (power) and specificity (true negative rate) of the proposed framework to estimate GGMs from microarray data. This shows that it is possible to recover the true network topology with high accuracy even for small-sample datasets. Subsequently, we analyze gene expression data from a breast cancer tumor study and illustrate our approach by inferring a corresponding large-scale gene association network for 3883 genes.
Citation impact
- FWCI
- 10.12
- Percentile
- 100%
- References
- 63
Authors
2Topics & keywords
- Graphical model
- Bayes' theorem
- Data mining
- Inference
- Computer science
- Bayesian network
- Sample size determination
- Network topology
- Reduced inequalities