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Tools for creating and working with network models of metabolism.

Project description

Welcome to Metworkpy

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Metworkpy is a Python library containing tools for working with and analyzing metabolic networks. This functionality includes:

  • Generating network representations of Genome Scale Metabolic Networks (GSMMs)
  • Integrating gene expression data with GSMMs
  • Evaluating where the metabolism is most perturbed using divergence metrics

Issues and Pull Requests

If you experience any problems while using Metworkpy (including the documentation), please create a GitHub issue in this repository. When creating an issue, a minimal reproducible example of the issue will make getting you help much easier. You can also create issues for any enhancements you would like to see in Metworkpy.
Contributions are welcome! Feel free to open a pull request. Currently, the contribution guidelines are still being worked out, but for enhanced functionality, please include an explanation of the functionality, any needed citations, and test cases (tests are run using pytest during continuous integration).

Licensing

This project makes use of the following external libraries:

The mutual information implementation where partially inspired by those found in the feature_selection module of scikit-learn, and the tests for those methods were adapted from those in scikit-learn, which is licensed under the BSD-3-Clause

References:

IMAT References:

  1. Shlomi T, et al. Network-based prediction of human tissue-specific metabolism, Nat. Biotechnol., 2008, vol. 26 (pg. 1003-1010)

Kulback-Leibler Divergence:

  1. Q. Wang, S. R. Kulkarni and S. Verdu, "Divergence Estimation for Multidimensional Densities Via k-Nearest-Neighbor Distances," in IEEE Transactions on Information Theory, vol. 55, no. 5, pp. 2392-2405, May 2009, doi: 10.1109/TIT.2009.2016060.

Mutual Information:

  1. Kraskov, A., Stögbauer, H., & Grassberger, P. (2004). Estimating mutual information. Physical Review E, 69(6), 066138.
  2. Ross, B. C. (2014). Mutual Information between Discrete and Continuous Data Sets. PLoS ONE, 9(2), e87357

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