Relatively small changes to gene expression data dramatically affect co-expression networks inferred from that data which, in turn, can significantly alter the subsequent biological interpretation. This error propagation is an underappreciated problem that, while hinted at in the literature, has not yet been thoroughly explored. Resampling methods (e.g. bootstrap aggregation, random subspace method) are hypothesized to alleviate variability in network inference methods by minimizing outlier effects and distilling persistent associations in the data. But the efficacy of the approach assumes the generalization from statistical theory holds true in biological network inference applications.
Revised: April 6, 2020 |
Published: October 12, 2018
Citation
Colby S.M., R.S. McClure, C.C. Overall, R.S. Renslow, and J.E. McDermott. 2018.Improving network inference algorithms using resampling methods.BMC Bioinformatics 19.PNNL-SA-134995.doi:10.1186/s12859-018-2402-0