Bayesian filtering for model predictive control of stochastic gene expression in single cells

Author:

Fox Zachary RORCID,Batt GregoryORCID,Ruess JakobORCID

Abstract

Abstract This study describes a method for controlling the production of protein in individual cells using stochastic models of gene expression. By combining modern microscopy platforms with optogenetic gene expression, experimentalists are able to accurately apply light to individual cells, which can induce protein production. Here we use a finite state projection based stochastic model of gene expression, along with Bayesian state estimation to control protein copy numbers within individual cells. We compare this method to previous methods that use population based approaches. We also demonstrate the ability of this control strategy to ameliorate discrepancies between the predictions of a deterministic model and stochastic switching system.

Funder

National Nuclear Security Administration of U.S. Department of Energy

COSY-BIO

MEMIP

Publisher

IOP Publishing

Subject

Cell Biology,Molecular Biology,Structural Biology,Biophysics

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