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LOICA: Integrating Models with Data for Genetic Network Design Automation.

Gonzalo VidalCarlos Vidal-CéspedesTimothy J Rudge
Published in: ACS synthetic biology (2022)
Genetic design automation tools are necessary to expand the scale and complexity of possible synthetic genetic networks. These tools are enabled by abstraction of a hierarchy of standardized components and devices. Abstracted elements must be parametrized from data derived from relevant experiments, and these experiments must be related to the part composition of the abstract components. Here we present Logical Operators for Integrated Cell Algorithms (LOICA), a Python package for designing, modeling, and characterizing genetic networks based on a simple object-oriented design abstraction. LOICA uses classes to represent different biological and experimental components, which generate models through their interactions. These models can be parametrized by direct connection to data contained in Flapjack so that abstracted components of designs can characterize themselves. Models can be simulated using continuous or stochastic methods and the data published and managed using Flapjack. LOICA also outputs SBOL3 descriptions and generates graph representations of genetic network designs.
Keyphrases
  • genome wide
  • electronic health record
  • big data
  • copy number
  • machine learning
  • working memory
  • systematic review
  • gene expression
  • deep learning
  • convolutional neural network