Predicting physiologically relevant SH3 domain mediated protein-protein interactions in yeast

Shobhit Jain and Gary Bader

Motivation

Many intracellular signaling processes are mediated by interactions involving peptide recognition modules such as SH3 domains. These domains bind to small, linear protein sequence motifs which can be identified using high-throughput experimental screens such as phage display. Binding motif patterns can then be used to computationally predict protein interactions mediated by these domains. While many protein-protein interaction prediction methods exist, most do not work with peptide recognition module mediated interactions or do not consider many of the known constraints governing physiologically relevant interactions between two proteins.

Results

A novel method for predicting physiologically relevant SH3 domain-peptide mediated protein-protein interactions in S. cerevisae using phage display data is presented. Like some previous similar methods, this method uses position weight matrix models of protein linear motif preference for individual SH3 domains to scan the proteome for potential hits and then filters these hits using a range of evidence sources related to sequence-based and cellular constraints on protein interactions. The novelty of this approach is the large number of evidence sources used and the method of combination of sequence based and protein pair based evidence sources. By combining different peptide and protein features using multiple Bayesian models we are able to predict high confidence interactions with an overall accuracy accuracy of 0.97.

Downloads

Latest Release

Source: DoMo-Pred.zip

Predictions

SH3_PPI_Predictions.zip

Text file format:

Domain

Peptide

Start

Stop

Sequence

Peptide Score

Peptide Count

Protein Score

Protein Count

Score

P11710

P53861

313

318

RTTSH

0.96

4

0.01

5

0.16

P11710

P34216

236

240

RTTPL

0.53

4

0.98

5

0.98

...

...

...

...

...

...

...

...

...

...

Note: Domain is the Uniprot id of SH3 domain containing protein. Peptide is the Uniprot id of peptide containing protein. Start and Stop are peptide start and stop positions. Sequence is the predicted peptide sequence. Peptide Score/Protein Score is the score of peptide/protein classifier. Peptide Count/Protein Count is the number of peptide/protein features used for predictions. Score is the score of combined classifier.

Supplementary material

PRM_PPI_supplementary.pdf

Datasets

Training and test datasets used in manuscript. Datasets.zip

Software/DoMo-Pred (last edited 2015-12-07 06:13:08 by ShobhitJain)

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