Learning metabolic dynamics from irregular observations by Bidirectional Time-Series State Transfer Network
Shaohua Xu, Ting Xu, Yuping Yang, Xin Chen

TL;DR
This paper introduces a new neural network model that can accurately model microbial metabolic dynamics even when data is irregular or incomplete.
Contribution
The novel Bidirectional Time-Series State Transfer Network (BTSTN) enables modeling of metabolic dynamics directly from irregular observations without preprocessing.
Findings
BTSTN accurately reconstructs dynamic behaviors and predicts future trajectories from irregular data.
The model shows enhanced robustness against missing measurements and noise compared to existing methods.
BTSTN performs well on both ideal dynamic systems and real-world fermentation processes.
Abstract
Modeling microbial metabolic dynamics is important for the rational optimization of both biosynthetic systems and industrial processes to facilitate green and efficient biomanufacturing. Classical approaches utilize explicit equation systems to represent metabolic networks, enabling the quantification of pathway fluxes to identify metabolic bottlenecks. However, these white-box models, despite their diverse applications, have limitations in simulating metabolic dynamics and are intrinsically inaccurate for industrial strains that lack information on network structures and kinetic parameters. On the other hand, black-box models do not rely on prior mechanistic knowledge of strains but are built upon observed time-series trajectories of biosynthetic systems in action. In practice, these observations are typically irregular, with discontinuously observed time points across multiple…
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Taxonomy
TopicsMicrobial Metabolic Engineering and Bioproduction · Gene Regulatory Network Analysis · Metabolomics and Mass Spectrometry Studies
