Monte Carlo samplers for efficient network inference

Author:

Kilic ZelihaORCID,Schweiger Max,Moyer Camille,Pressé SteveORCID

Abstract

Accessing information on an underlying network driving a biological process often involves interrupting the process and collecting snapshot data. When snapshot data are stochastic, the data’s structure necessitates a probabilistic description to infer underlying reaction networks. As an example, we may imagine wanting to learn gene state networks from the type of data collected in single molecule RNA fluorescence in situ hybridization (RNA-FISH). In the networks we consider, nodes represent network states, and edges represent biochemical reaction rates linking states. Simultaneously estimating the number of nodes and constituent parameters from snapshot data remains a challenging task in part on account of data uncertainty and timescale separations between kinetic parameters mediating the network. While parametric Bayesian methods learn parameters given a network structure (with known node numbers) with rigorously propagated measurement uncertainty, learning the number of nodes and parameters with potentially large timescale separations remain open questions. Here, we propose a Bayesian nonparametric framework and describe a hybrid Bayesian Markov Chain Monte Carlo (MCMC) sampler directly addressing these challenges. In particular, in our hybrid method, Hamiltonian Monte Carlo (HMC) leverages local posterior geometries in inference to explore the parameter space; Adaptive Metropolis Hastings (AMH) learns correlations between plausible parameter sets to efficiently propose probable models; and Parallel Tempering takes into account multiple models simultaneously with tempered information content to augment sampling efficiency. We apply our method to synthetic data mimicking single molecule RNA-FISH, a popular snapshot method in probing transcriptional networks to illustrate the identified challenges inherent to learning dynamical models from these snapshots and how our method addresses them.

Funder

National Institute of General Medical Sciences

Publisher

Public Library of Science (PLoS)

Subject

Computational Theory and Mathematics,Cellular and Molecular Neuroscience,Genetics,Molecular Biology,Ecology,Modeling and Simulation,Ecology, Evolution, Behavior and Systematics

Reference80 articles.

1. Allosteric control of Ubp6 and the proteasome via a bidirectional switch;KYS Hung;Nature communications,2022

2. Non-cooperative mechanism for bounded and ultrasensitive chromatin remodeling;A Fletcher;Journal of Theoretical Biology,2022

3. Distribution shapes govern the discovery of predictive models for gene regulation;B Munsky;Proceedings of the National Academy of Sciences,2018

4. Metabolic reaction network-based recursive metabolite annotation for untargeted metabolomics;X Shen;Nature communications,2019

5. Pan-cancer analysis of the metabolic reaction network;F Gatto;Metabolic engineering,2020

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