Computational Methods for Modeling Multistep Reactions and Parameter Inference in Transcriptional Processes
Date
2020
Authors
Shetty, Keerthi Srinivas.
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
A major task in Systems Biology is to conduct accurate mechanistic
simulations of multistep reactions. The simulation of a biological process
from experimental data requires detailed knowledge of its model structure
and kinetic parameters. Despite advances in experimental techniques,
estimating unknown parameter values from observed data remains a
bottleneck for obtaining accurate simulation results. Therefore, the goal is to
focus on development of computationally efficient parameter inference
methods for characterizing transcriptional bursting process, for inferring
unknown kinetic parameters, given single-cell time-series data.
Many biochemical events involve multistep reactions. One of the most
important biological processes in gene expression, which involve multistep
reactions, is the transcriptional process. Models for multistep reactions
necessarily need multiple states, and it is a challenge to compute model
parameters that best agree with experimental data. To address this issue,
first, a novel model reduction strategy is devised, representing several
number of promoter OFF states by a single state, accompanied by specifying
a time delay for burst frequency. This model approximates complex
promoter switching behavior with Erlang-distributed ON/OFF times. To
explore combined effects of parameter inference and simulation, using this
model reduction, two inference methods are developed namely, Delay-Bursty
MCEM and Clumped-MCEM. These methods are applied to time-series data
of endogenous mouse glutaminase promoter to validate model assumptions
and infer the values of kinetic parameters. Simulation results are summarized
below:
1. Models with multiple OFF states produce behaviour that is most
consistent with experimental data and the bursting kinetics are
promoter specific.
2. Delay-Bursty MCEM and Clumped-MCEM inference are more efficient
for time-series data. The comparison with the state-of-the-art Bursty
iMCEM2 method shows that Delay-Bursty MCEM and
Clumped-MCEM produce similar numerical accuracy. However, these
methods are better in terms of efficiency. Delay-Bursty MCEM reduces
computational cost by 37:44% as compared to Bursty MCEM2.
Clumped-MCEM reduces computational cost by 57:58% when
compared with Bursty MCEM2 and 32:19% when compared with
Delay-Bursty MCEM.
Description
Keywords
Department of Computer Science & Engineering, Model reduction, Parameter Inference, Mass action kinetics, Multistep promoter model, Single-cell time-series data