LGEM+: Automated Improvement of Metabolic Network Models and Model-Driven Experimental Design through Abduction
Preprint, 2026
We present LGEM+, a system for automated abductive improvement of GEMs, and for experimental design consisting of: a compartmentalised first-order logic framework for describing biochemical pathways (using curated GEMs as the expert knowledge source); a two-stage hypothesis abduction procedure; integra- tion with flux-balance analysis (FBA); and metabolic pathway extraction and analysis algorithms.
We demonstrate that deductive inference on logical theories created using LGEM+, using the automated theorem prover iProver, can predict growth/no- growth of S. cerevisiae strains in minimal media. LGEM+ proposed 2094 unique candidate hypotheses for model improvement. We assess the value of the gen- erated hypotheses using two criteria: (a) genome-wide single-gene essentiality prediction, and (b) constraint of flux-balance analysis (FBA) simulations. We present a model-driven experimental design strategy, and demonstrate this with a differential expression study, and using the ∆pfk2 mutant strain as a case study.
Scientific discovery
artificial intelligence
systems biology
metabolic modelling
automated theorem proving
first-order logic
Författare
Alexander Gower
Chalmers, Data- och informationsteknik, Data Science och AI
Konstantin Korovin
Chalmers, Life sciences, Systembiologi
Daniel Brunnsåker
Chalmers, Data- och informationsteknik, Data Science och AI
Erik Bjurström
Chalmers, Life sciences, Infrastrukturer
Praphapan Lasin
Chalmers, Life sciences, Infrastrukturer
Ievgeniia Tiukova
Chalmers, Life sciences, Infrastrukturer
Ross King
Chalmers, Data- och informationsteknik, Data Science och AI
Ämneskategorier (SSIF 2025)
Bioinformatik (beräkningsbiologi)
Bioinformatik och beräkningsbiologi
Datavetenskap (datalogi)