Automated Deep Abstractions for Stochastic Chemical Reaction Networks
Tatjana Petrov, Denis Repin

TL;DR
This paper introduces an automated deep learning approach to create efficient and accurate abstractions of stochastic chemical reaction networks, reducing computational costs while preserving key statistical features.
Contribution
It proposes an automated method to learn optimal neural network architectures for CRN abstractions, eliminating manual trial-and-error tuning.
Findings
Automated architecture search improves abstraction quality.
Method reduces computational costs significantly.
Effective on CRNs with multi-modal phenotypes.
Abstract
Predicting stochastic cellular dynamics as emerging from the mechanistic models of molecular interactions is a long-standing challenge in systems biology: low-level chemical reaction network (CRN) models give raise to a highly-dimensional continuous-time Markov chain (CTMC) which is computationally demanding and often prohibitive to analyse in practice. A recently proposed abstraction method uses deep learning to replace this CTMC with a discrete-time continuous-space process, by training a mixture density deep neural network with traces sampled at regular time intervals (which can obtained either by simulating a given CRN or as time-series data from experiment). The major advantage of such abstraction is that it produces a computational model that is dramatically cheaper to execute, while preserving the statistical features of the training data. In general, the abstraction accuracy…
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Taxonomy
TopicsGene Regulatory Network Analysis · Bioinformatics and Genomic Networks · Protein Structure and Dynamics
