Resumen:
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[ES] EL TFG se enmarca en la aplicación de metodologías de ingeniería de sistemas y automática a la biología sintética. En concreto, se abordará el diseño de mecanismos de regulación genética (control realimentado) de rutas ...[+]
[ES] EL TFG se enmarca en la aplicación de metodologías de ingeniería de sistemas y automática a la biología sintética. En concreto, se abordará el diseño de mecanismos de regulación genética (control realimentado) de rutas metabólicas para el reparto óptimo de carga metabólica. El objetivo del sistema de control es mitigar el efecto de las perturbaciones de flujo causadas por cambios de requerimientos celulares o por rutas metabólicas que drenan metabolitos de interés.
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[EN] The goal of this work is to derive design principles for the implementation of robust
incoherent feedforward (IFF) synthetic genetic circuits.
These class of circuits are ubiquitous in biological gene regulation ...[+]
[EN] The goal of this work is to derive design principles for the implementation of robust
incoherent feedforward (IFF) synthetic genetic circuits.
These class of circuits are ubiquitous in biological gene regulation networks (GRN). They
allow the organisms to present adaptive behavior, or adaptation for short. This behavior is
generally related to the so-called homeostasis capability in living organisms. Thus, adaptation
consists of the circuit capability to respond to an input stimulus and return to its original
value even when the input change persists. Notice this aception of adaptation is different
from the one appearing in other branches of engineering. The biological adaptive IFF GRN
is to some extent an analogous to a positive flank detector in electronics.
In synthetic biology, feedforward genetic circuits can be used as pulse generator and
response accelerator. Furthermore it is theoretically demonstrated that fold-change detection
can be generated by this topology, so we can obtain a response that is proportional to the
fold-change in the stimulus relative to the background.
Tough the general principles behind the behavior of feedforward gene regulation circuits
are already well-known, their actual implementation to achieve the desired performance is
still challenging. Studies in the literature either implement a network and analyse the performance
a posteriori, or deal with very simplified non realistic computational models.
In this thesis a realistic biochemical first principles model is first defined. Then, the
model is reduced using both time-scale separation, and existence of invariant moieties. A
multi-objective optimization approach is used to obtain the Pareto-optimal solutions in the
circuit parameters space that make the circuit to achieve robust adaptation. Monte-Carlo
sampling is also used to asses on the degradation of circuit performance outside the Pareto
front.
Using all this information, design principles are tried to infer in order to be able to offer
new tools for the systematic design of genetic synthetic incoherent feedforward circuits with
pre-established adaptive response.
Next, these sets of optimal model parameters values are compared against the biologically
achievable values to check the feasibility of implementation, and tuning rules using
biological tuning knobs are proposed. Finally, in order to show the applicability of this
work, a biological prototyping has been done.
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