Deep Learning for Genome Design

Abstract
Rapid engineering of microorganisms (e.g., E. coli, S. cerevisiae) is currently hindered by limited integration of manufacturing constraints, goal optimization into the design process, reducing the yield and the productivity of several genome engineering workflows. This thesis proposal wants to formalize the genome design as a machine learning problem aiming at finding the Pareto surfaces (i.e., efficient and robust trade-offs) between goal optimization, manufacturing constraints and design conditions. The thesis will address the design of a computational frameworks to rational engineering of genome microorganisms. Skill: Python. The thesis will be conducted in collaboration with European Brain Research Institute Rita Levi-Montalcini - EBRI, Rome.
Keywords
Genome Engineering
Bioengineering
Biomedical Engineering
Synthetic Biology
deep learning
ERC sector(s)
PE Physical Sciences and Engineering
Name supervisor
Giuseppe Nicosia
E-mail
giuseppe.nicosia@unict.it
Name of Department/Faculty/School
Department of Biomedical and Biotechnological Sciences - Artificial Intelligence and Bioengineering Lab
Name of the host University
University of Catania (UNICT)
EUNICE partner e-mail of destination Research
eunice@unict.it
Country
Italy
Thesis level
Master
Minimal language knowledge requisite
English B1
Thesis mode
Hybrid
Length of the research internship
6 months
Financial support available (other than E+)
No