SENSE_PPI: Sequence-based EvolutioNary ScalE Protein-Protein Interaction prediction
Project description
SENSE-PPI
SENSE-PPI is a Deep Learning model for predicting physical protein-protein interactions based on amino acid sequences. It is based on embeddings generated by ESM2 and uses Siamese RNN architecture to perform a binary classification.
Installation
SENSE-PPI requires Python 3.10 or higher. To install the package, run:
pip install senseppi
N.B.: if you intend to use the create_dataset
command to generate new datasets from STRING,
do not forget to additionally install the MMseqs2 software (instructions can be found at: https://github.com/soedinglab/MMseqs2).
The mmseqs
command should be available in your PATH.
Usage
There are 5 commands available in the package:
train
: trains SENSE-PPI on a given datasettest
: computes test metrics (AUROC, AUPRC, F1, MCC, Presicion, Recall, Accuracy) on a given datasetpredict
: predicts interactions for a given datasetpredict_string
: predicts interactions for a given dataset using STRING database: the interactions are taken from the STRING database (based on seed proteins). Predictions are compared with the STRING database. Optionally, the graphs can be constructed.create_dataset
: creates a dataset from the STRING database based on the taxonomic ID of the organism.
The original SENSE-PPI repository contains two pretrained models: senseppi.ckpt
and dscript.ckpt
pretrained on SENSE-PPI and DSCRIPT human datasets respectively.
N.B.: Both pretrained models were made to work with proteins in range 50-800 amino acids.
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