scholarly journals SourceSet: A graphical model approach to identify primary genes in perturbed biological pathways

2019 ◽  
Vol 15 (10) ◽  
pp. e1007357 ◽  
Author(s):  
Elisa Salviato ◽  
Vera Djordjilović ◽  
Monica Chiogna ◽  
Chiara Romualdi
Author(s):  
Daniele Alpago ◽  
Mattia Zorzi ◽  
Augusto Ferrante

Author(s):  
Chris S. Magnano ◽  
Ameet Soni ◽  
Sriraam Natarajan ◽  
Gautam Kunapuli

2020 ◽  
Vol 34 (10) ◽  
pp. 13851-13852
Author(s):  
Junkyu Lee

This paper presents a systematic way of decomposing a limited memory influence diagram (LIMID) to a tree of single-stage decision problems, or submodels and solving it by message passing. The relevance in LIMIDs is formalized by the notion of the partial evaluation of the maximum expected utility, and the graph separation criteria for identifying submodels follow. The submodel decomposition provides a graphical model approach for updating the beliefs and propagating the conditional expected utilities for solving LIMIDs with the worst-case complexity bounded by the maximum treewidth of the individual submodels.


2017 ◽  
Vol 2017 ◽  
pp. 1-10 ◽  
Author(s):  
SungHwan Kim ◽  
Jae-Hwan Jhong ◽  
JungJun Lee ◽  
Ja-Yong Koo ◽  
ByungYong Lee ◽  
...  

Up to date, many biological pathways related to cancer have been extensively applied thanks to outputs of burgeoning biomedical research. This leads to a new technical challenge of exploring and validating biological pathways that can characterize transcriptomic mechanisms across different disease subtypes. In pursuit of accommodating multiple studies, the joint Gaussian graphical model was previously proposed to incorporate nonzero edge effects. However, this model is inevitably dependent on post hoc analysis in order to confirm biological significance. To circumvent this drawback, we attempt not only to combine transcriptomic data but also to embed pathway information, well-ascertained biological evidence as such, into the model. To this end, we propose a novel statistical framework for fitting joint Gaussian graphical model simultaneously with informative pathways consistently expressed across multiple studies. In theory, structured nodes can be prespecified with multiple genes. The optimization rule employs the structured input-output lasso model, in order to estimate a sparse precision matrix constructed by simultaneous effects of multiple studies and structured nodes. With an application to breast cancer data sets, we found that the proposed model is superior in efficiently capturing structures of biological evidence (e.g., pathways). An R software package nsiGGM is publicly available at author’s webpage.


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