krishnanlab/PyGenePlexus
A network based gene classification library to generate genome wide predictions about genes that are functionally similar to the input gene list.
This tool helps biologists and genetic researchers understand the broader functions of specific genes. You provide a list of genes you're interested in, and it uses existing biological networks to predict other genes likely to perform similar functions across the entire genome. This helps researchers identify new candidate genes involved in particular biological processes or diseases.
Use this if you have a set of genes and need to discover other genes with similar functions or properties on a genome-wide scale.
Not ideal if you are looking to analyze protein-protein interactions or gene expression data directly, rather than functional similarity through networks.
Stars
20
Forks
3
Language
Python
License
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Category
Last pushed
Mar 09, 2026
Commits (30d)
0
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