We present a set of tools that, combined, provide the ability to store, visualize and leverage multiomics data to predict the outcome of bioengineering efforts.
We show how to use:
- ICE to store strain information
- OMG to generate a mock dataset of omics data
- EDD to store experiment data and metadata
- ART to leverage these data to suggest new experiments that improve isoprenol production.
By combining these tools with Jupyter notebooks we show how to pinpoint genetic modifications that improve production of isoprenol, a potential biofuel, in a simulated data set. We expect the same procedures to be applicable in the case of real experimental data.
Provided notebooks run on two different Jupyter lab kernels, for which we provide a set of requirements in the kernel_requirements
directory.
Code from this repository is available under the BSD-3-Clause-LBNL license.