| Literature DB >> 26362267 |
Dmitriy Gorenshteyn1, Elena Zaslavsky2, Miguel Fribourg2, Christopher Y Park3, Aaron K Wong4, Alicja Tadych1, Boris M Hartmann2, Randy A Albrecht5, Adolfo García-Sastre6, Steven H Kleinstein7, Olga G Troyanskaya8, Stuart C Sealfon9.
Abstract
Many functionally important interactions between genes and proteins involved in immunological diseases and processes are unknown. The exponential growth in public high-throughput data offers an opportunity to expand this knowledge. To unlock human-immunology-relevant insight contained in the global biomedical research effort, including all public high-throughput datasets, we performed immunological-pathway-focused Bayesian integration of a comprehensive, heterogeneous compendium comprising 38,088 genome-scale experiments. The distillation of this knowledge into immunological networks of functional relationships between molecular entities (ImmuNet), and tools to mine this resource, are accessible to the public at http://immunet.princeton.edu. The predictive capacity of ImmuNet, established by rigorous statistical validation, is easily accessed by experimentalists to generate data-driven hypotheses. We demonstrate the power of this approach through the identification of unique host-virus interaction responses, and we show how ImmuNet complements genetic studies by predicting disease-associated genes. ImmuNet should be widely beneficial for investigating the mechanisms of the human immune system and immunological diseases.Entities:
Mesh:
Year: 2015 PMID: 26362267 PMCID: PMC4753773 DOI: 10.1016/j.immuni.2015.08.014
Source DB: PubMed Journal: Immunity ISSN: 1074-7613 Impact factor: 31.745