TL;DR
This paper introduces a scalable method for estimating cellular constraint reactions from high-dimensional biological data, enabling analysis of large metabolic models across various organisms.
Contribution
It presents the first scalable algorithm for inferring constraint reactions in large metabolic networks from data, overcoming previous size limitations.
Findings
Successfully recovered constraint reactions in large-scale models
Performed extensive experiments across multiple organisms
Demonstrated robustness to missing measurements
Abstract
Optimization-based models have been used to predict cellular behavior for over 25 years. The constraints in these models are derived from genome annotations, measured macro-molecular composition of cells, and by measuring the cell's growth rate and metabolism in different conditions. The cellular goal (the optimization problem that the cell is trying to solve) can be challenging to derive experimentally for many organisms, including human or mammalian cells, which have complex metabolic capabilities and are not well understood. Existing approaches to learning goals from data include (a) estimating a linear objective function, or (b) estimating linear constraints that model complex biochemical reactions and constrain the cell's operation. The latter approach is important because often the known/observed biochemical reactions are not enough to explain observations, and hence there is a…
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