High-dimensional Bayesian network inference from systems genetics data using genetic node ordering
pmid: 31921278
pmc: PMC6933017
High-dimensional Bayesian network inference from systems genetics data using genetic node ordering
AbstractStudying the impact of genetic variation on gene regulatory networks is essential to understand the biological mechanisms by which genetic variation causes variation in phenotypes. Bayesian networks provide an elegant statistical approach for multi-trait genetic mapping and modelling causal trait relationships. However, inferring Bayesian gene networks from high-dimensional genetics and genomics data is challenging, because the number of possible networks scales super-exponentially with the number of nodes, and the computational cost of conventional Bayesian network inference methods quickly becomes prohibitive. We propose an alternative method to infer high-quality Bayesian gene networks that easily scales to thousands of genes. Our method first reconstructs a node ordering by conducting pairwise causal inference tests between genes, which then allows to infer a Bayesian network via a series of independent variable selection problems, one for each gene. We demonstrate using simulated and real systems genetics data that this results in a Bayesian network with equal, and sometimes better, likelihood than the conventional methods, while having a significantly higher over-lap with groundtruth networks and being orders of magnitude faster. Moreover our method allows for a unified false discovery rate control across genes and individual edges, and thus a rigorous and easily interpretable way for tuning the sparsity level of the inferred network. Bayesian network inference using pairwise node ordering is a highly efficient approach for reconstructing gene regulatory networks when prior information for the inclusion of edges exists or can be inferred from the available data.
- Massachusetts General Hospital United States
- University of Bergen Norway
- Ghent University Belgium
- Roslin Institute United Kingdom
- Rowland Institute at Harvard United States
EXPRESSION, SELECTION, 570, INTEGRATIVE GENOMICS APPROACH, ARCHITECTURE, Technology and Engineering, systems genetics, COMPLEX TRAITS, quantitative trait loci analysis, QH426-470, 004, network inference, Bayesian network, expression, MAP, gene expression, Genetics, RECONSTRUCTION, expression quantitative trait loci analysis
EXPRESSION, SELECTION, 570, INTEGRATIVE GENOMICS APPROACH, ARCHITECTURE, Technology and Engineering, systems genetics, COMPLEX TRAITS, quantitative trait loci analysis, QH426-470, 004, network inference, Bayesian network, expression, MAP, gene expression, Genetics, RECONSTRUCTION, expression quantitative trait loci analysis
4 Research products, page 1 of 1
- IsRelatedTo
- IsRelatedTo
- IsRelatedTo
- IsRelatedTo
citations This is an alternative to the "Influence" indicator, which also reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically).21 popularity This indicator reflects the "current" impact/attention (the "hype") of an article in the research community at large, based on the underlying citation network.Top 10% influence This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically).Average impulse This indicator reflects the initial momentum of an article directly after its publication, based on the underlying citation network.Average
