ARNI: Abductive inference of complex regulatory network structures
Date
2013ISSN
0302-9743Source
11th International Conference on Computational Methods in Systems Biology, CMSB 2013Volume
8130 LNBIPages
235-237Google Scholar check
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Physical network inference methods use a template of molecular interaction to infer biological networks from high throughput datasets. Current inference methods have limited applicability, relying on cause-effect pairs or systematically perturbed datasets and fail to capture complex network structures. Here we present a novel framework, ARNI, based on abductive inference, that addresses these limitations. © Springer-Verlag 2013.
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