AI Article Synopsis

  • The study aims to improve how biological pathways are inferred by integrating genetic and protein interaction data, addressing limitations in existing models like activity pathway networks (APN).
  • Researchers created a new method using probabilistic graphical models, specifically Bayesian networks, to better reconstruct detailed pathway structures from these interactions, successfully identifying known cellular pathways.
  • The new method outperforms APN by accurately resolving ambiguities in pathway connections and utilizing a simplified scoring function based solely on genetic interactions, demonstrating enhanced performance through effective algorithms.

Article Abstract

Background: Molecular interaction data at proteomic and genetic levels provide physical and functional insights into a molecular biosystem and are helpful for the construction of pathway structures complementarily. Despite advances in inferring biological pathways using genetic interaction data, there still exists weakness in developed models, such as, activity pathway networks (APN), when integrating the data from proteomic and genetic levels. It is necessary to develop new methods to infer pathway structure by both of interaction data.

Results: We utilized probabilistic graphical model to develop a new method that integrates genetic interaction and protein interaction data and infers exquisitely detailed pathway structure. We modeled the pathway network as Bayesian network and applied this model to infer pathways for the coherent subsets of the global genetic interaction profiles, and the available data set of endoplasmic reticulum genes. The protein interaction data were derived from the BioGRID database. Our method can accurately reconstruct known cellular pathway structures, including SWR complex, ER-Associated Degradation (ERAD) pathway, N-Glycan biosynthesis pathway, Elongator complex, Retromer complex, and Urmylation pathway. By comparing N-Glycan biosynthesis pathway and Urmylation pathway identified from our approach with that from APN, we found that our method is able to overcome its weakness (certain edges are inexplicable). According to underlying protein interaction network, we defined a simple scoring function that only adopts genetic interaction information to avoid the balance difficulty in the APN. Using the effective stochastic simulation algorithm, the performance of our proposed method is significantly high.

Conclusion: We developed a new method based on Bayesian network to infer detailed pathway structures from interaction data at proteomic and genetic levels. The results indicate that the developed method performs better in predicting signaling pathways than previously described models.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5615243PMC
http://dx.doi.org/10.1186/s12918-017-0454-9DOI Listing

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