A knowledge representation meta-model for rule-based modelling of signalling networks
Adrien Basso-Blandin (LIP, ENS Lyon), Walter Fontana (Harvard Medical, School), Russ Harmer (CNRS & LIP, ENS Lyon)

TL;DR
This paper presents a graph-based meta-model designed to facilitate the integration and curation of fragmented biological knowledge for rule-based modelling of cellular signalling networks, enabling automated translation into executable models.
Contribution
It introduces a flexible, multi-granularity meta-model that simplifies knowledge aggregation and supports automated model generation from diverse data sources.
Findings
Meta-model generalizes existing approaches like Kappa and BNGL.
Enables handling of varying levels of detail in biological data.
Supports automated translation into executable signalling network models.
Abstract
The study of cellular signalling pathways and their deregulation in disease states, such as cancer, is a large and extremely complex task. Indeed, these systems involve many parts and processes but are studied piecewise and their literatures and data are consequently fragmented, distributed and sometimes--at least apparently--inconsistent. This makes it extremely difficult to build significant explanatory models with the result that effects in these systems that are brought about by many interacting factors are poorly understood. The rule-based approach to modelling has shown some promise for the representation of the highly combinatorial systems typically found in signalling where many of the proteins are composed of multiple binding domains, capable of simultaneous interactions, and/or peptide motifs controlled by post-translational modifications. However, the rule-based approach…
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