AI Article Synopsis

  • Inferring gene co-expression networks is crucial in bioinformatics, particularly since many networks have modular structures that reflect biological functions.
  • Despite advances in Gaussian graphical models to estimate these networks, existing methods fail to incorporate prior networks, like protein interaction networks, into their analysis.
  • The newly proposed method, pGNI, combines gene expression data and prior protein interaction data to better capture modular structures, showing its effectiveness in simulations and real datasets through biologically meaningful results.

Article Abstract

Inferring gene co-expression networks from high-throughput gene expression data is an important task in bioinformatics. Many gene networks often exhibit modular structures. Although several Gaussian graphical model-based methods have been developed to estimate gene co-expression networks by incorporating the modular structural prior, none of them takes into account the modular structures captured by the prior networks (e.g., protein interaction networks). In this study, we propose a novel prior network-dependent gene network inference (pGNI) method to estimate gene co-expression networks by integrating gene expression data and prior protein interaction network data. The underlying modular structure is learned from both sets of data. Through simulation studies, we demonstrate the feasibility and effectiveness of our method. We also apply our method to two real datasets. The modular structures in the networks estimated by our method are biological significant.

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Source
http://dx.doi.org/10.1109/TCBB.2021.3103407DOI Listing

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