Skip to content
/ hsm Public
forked from aqlaboratory/hsm

Code associated with "Biophysical prediction of protein-peptide interactions and signaling networks using machine learning."

License

Notifications You must be signed in to change notification settings

faker1c/hsm

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

27 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

hsm - Biophysical prediction of protein-peptide interactions and signaling networks using machine learning.

This repository implements the hierarchical statistical mechanical (HSM) model described in the paper Biophysical prediction of protein-peptide interactions and signaling networks using machine learning.

An associated website is available at proteinpeptide.io. The website is built to facilitate interactions with results from the model including: (1) specific domain-peptide and protein-protein predictions, (2) the resulting networks, and (3) structures colored using the inferred energy functions from the model. Code for the website is available via the parallel repo: aqlaboratory/hsm-web.

This file documents how this package might be used, the location of associated data, and other metadata.

Usage

The model was implemented in Python (>= 3.5) primarily using TensorFlow (>= 1.4) (Software Requirements). To work with this repository, either download pre-processed data (see below) or include new data. The folder contains two major directories: train/ and predict/. Each directory is accompanied by a README.md file detailing usage.

To train / re-train new models, use the train.py script in train/. To make predictions using a model, use one of two scripts, predict_domains.py and predict_proteins.py, for predicting either domain-peptide interactions or protein-protein interactions. Scripts are designed with a CLI and should be used from the command line:

python [SCRIPT] [OPTIONS]

Options for any script may be listed using the -h/--help flag.

Pre-processed / pre-trained data and models may be downloaded from figshare (doi:10.6084/m9.figshare.11520552) and should be unpacked at data/ in this directory. This directory may also be used as an example of how to structure input and output files / directories.

An alternative use case would be to train / re-train a new model in the train/ code and make new predictions using the predict/ code.

Data

As reported, domain-peptide and protein-protein interactions are available via figshare (doi:10.6084/m9.figshare.10084745). In addition, we provide pre-processed data for this repository and the website repository,

Requirements

  • Python (>= 3.5)
  • TensorFlow (1.14)
  • numpy (1.18)
  • scipy (1.4)
  • scikit-learn (0.20)
  • tqdm (4.41) (Progressbar. Not strictly necessary for functionality; needed to ensure package runs.)

Reference

Please reference the associated publication:

Cunningham, J.M., Koytiger, G., Sorger, P.K., & AlQuraishi, M. "Biophysical prediction of protein-peptide interactions and signaling networks using machine learning." Nature Methods (2020). doi:10.1038/s41592-019-0687-1. (citation.bib)

See also, a website at proteinpeptide.io for exploring the associated analyses (code: aqlaboratory/hsm-web).

Funding

This work was supported by the following sources:

Funder Grant number
NIH U54-CA225088
NIH P50-GM107618
DARPA / DOD W911NF-14-1-0397

License

This repository is released under an MIT License

About

Code associated with "Biophysical prediction of protein-peptide interactions and signaling networks using machine learning."

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 99.6%
  • TeX 0.4%