Abstract:
Movement is an important part of life. For example, in a central and fundamental
process
known as gene expression, there is a movement of biological particles
called RNA polymerases on the DNA strand to produce messenger RNA (mRNA).
Then,
ribosomes move sequentially along an mRNA molecule and decode it to
produce functional proteins.
In
intracellular transport within living organisms,
motor proteins move along microtubules to transport cargo from one location to
another.
Another prominent example is the vehicular traffic in a city, where
people or goods are transported to another place via pathways.
these
Understanding
complex transport phenomena has been a significant area of research in
mathematics, biology, and physics. It requires developing appropriate mathematical
and computational models to analyze the flow of particles in these systems. Over the
years, the Ribosome Flow Model (RFM), obtained via a mean-field approximation
of
a
its
stochastic model called the Totally Asymmetric Simple Exclusion Process
(TASEP), has provided a rigorous mathematical framework for the analysis. It is a
deterministic, continuous-time model for analyzing the flow of interacting particles,
and
dynamics are described by ordinary differential equations (ODEs).
It
is
amenable to both mathematical and numerical analysis. The results of the RFM
analysis can be used to model and engineer gene expression.
In
this
thesis,
we
rely
on
the
framework of RFM to model and analyze the
dynamical flow of particles along an ordered chain of sites encapsulating various
biologically observed features.
We
specifically focus on formulating a system of
non-linear ordinary differential equations, where the densities of each site on a lattice
serve as the state variables and understand their asymptotic behavior. Exploring
cooperative irreducible systems of ODEs with a first integral exhibiting positive
gradient, we leverage results on the global phase portrait of such systems in our
proposed models.
Additionally, contraction theory proves to be a powerful tool
for
establishing asymptotic properties, such as convergence to steady-state and
entrainment to a periodic excitation.
There
are
certain
types
of
uncertainties
present
in
the
system
leading
to
variability in the parameters modeling the dynamics. In this direction, we develop
a
framework to understand the flux of particle flow in the transport system having
different site capacities. Next, drawing inspiration from complex cellular processes
like intracellular transport where particles having extended length interact through
binding and repelling actions and can detach along the microtubule, we investigate
the impact of interactions and detachment phenomena on the output rate. Further,
motivated by experimental studies on collision-stimulated abortive termination of ribosomes, we develop a modeling framework to analyze the production rate under
various circumstances. Next, we derive a network model for large-scale translation
in
and
to
the
cell
that
attachment.
encapsulates important cellular properties like ribosome drop-off
We
explore the effects of ribosome drop-off on production rates
understand how drop-off influences the total production rate in the system.
Moving ahead, we develop a closed network system modeling simultaneous particle
movement along tracks with varying capacities in a resource-limited environment.
This facilitates the study of competition for shared resources and the development
of
network models with feedforward and feedback connections between the tracks.
Inspired by real-world systems where entry rates into a lane are influenced by nearby
pools’ occupancy, we develop a model where parallel lanes are strategically connected
to
in
multiple finite pools. This model takes into account the distribution of particles
a
local neighborhood.
In
summary, we develop mathematical models that capture intricate features of
several biological and physical systems. These frameworks yield deeper insights into
how parameters influence system dynamics, enhancing our comprehension of the
underlying processes.