Difference between revisions of "Team:Paris Bettencourt/AMP Evolver"

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<p>AMP Evolver is the function where the input seed sequence will be modified for multiple times to search for a better sequence that may serve as AMP. The framework is built based on the idea of genetic algorithm, which is commonly used in the computer science for global optimization problems [14].</p>
 
<p>AMP Evolver is the function where the input seed sequence will be modified for multiple times to search for a better sequence that may serve as AMP. The framework is built based on the idea of genetic algorithm, which is commonly used in the computer science for global optimization problems [14].</p>

Revision as of 01:48, 8 December 2018

AMP Evolver

in silico design-build-test cycle



AMP Evolver is the function where the input seed sequence will be modified for multiple times to search for a better sequence that may serve as AMP. The framework is built based on the idea of genetic algorithm, which is commonly used in the computer science for global optimization problems [14].

In the AMP Evolver, the input sequence, or so-called “parent”, will be modified by a predefined mutation generator. The simplest mutation generator is random mutagenesis, in which case we mimic the directed evolution in Evolver. However, the mutation generator could actually even more complicated, as a semi-rational design, in which case, we are actually doing a synthetic biology design-build-test cycle in silico.

In our study, we also tested another semi-rational design of the mutation generator. The generator is designed based on previous literature of the observation on charge distribution in natural AMPs [15]. It seems there is a clustering effect of charged amino acids that may be relevant to the efficacy. Therefore we developed an automated mutation generator, to change the charges in random but close enough positions of the original positive charged amino acids.

After, the modified AMPs, will be selected. In our case, we simply select for AMP that makes the bacteria have a lower survival level. This process will iterate for a few generations to finally optimize the AMP.

User is capable to define the generation of iteration, mutation rate per generation, and survivor number after each selection. Besides, any user who are interested in exploring new AMP engineering or design principles, could replace the mutation generator function by a customized function.

The open-source nature makes the AMP Designer also a good platform or environment, to test researcher’s idea of AMP engineering in a simulation.

By compare different mutation generators to the random mutagenesis, we could understand the mechanism of AMP better and also find good strategies to modify peptides that is even not necessarily well-described by Forest model.

Reference

    https://en.wikipedia.org/wiki/Genetic_algorithm Epand, Raquel F., et al. "Probing the “charge cluster mechanism” in amphipathic helical cationic antimicrobial peptides." Biochemistry 49.19 (2010): 4076-4084.
Centre for Research and Interdisciplinarity (CRI)
Faculty of Medicine Cochin Port-Royal, South wing, 2nd floor
Paris Descartes University
24, rue du Faubourg Saint Jacques
75014 Paris, France
paris-bettencourt-2018@cri-paris.org