INTREPPPID—an orthologue-informed quintuplet network for cross-species prediction of protein–protein interaction

Author:

Szymborski Joseph12ORCID,Emad Amin123ORCID

Affiliation:

1. Department of Electrical and Computer Engineering, McGill University , 845 Sherbrooke Street West, Montréal, QC H3A 0G4 , Canada

2. Mila, Quebec AI Institute , 6666 St-Urbain Street #200, Montréal, QC H2S 3H1 , Canada

3. The Rosalind and Morris Goodman Cancer Institute , 1160 Pine Avenue, Montréal, QC H3A 1A3 , Canada

Abstract

Abstract An overwhelming majority of protein–protein interaction (PPI) studies are conducted in a select few model organisms largely due to constraints in time and cost of the associated ‘wet lab’ experiments. In silico PPI inference methods are ideal tools to overcome these limitations, but often struggle with cross-species predictions. We present INTREPPPID, a method that incorporates orthology data using a new ‘quintuplet’ neural network, which is constructed with five parallel encoders with shared parameters. INTREPPPID incorporates both a PPI classification task and an orthologous locality task. The latter learns embeddings of orthologues that have small Euclidean distances between them and large distances between embeddings of all other proteins. INTREPPPID outperforms all other leading PPI inference methods tested on both the intraspecies and cross-species tasks using strict evaluation datasets. We show that INTREPPPID’s orthologous locality loss increases performance because of the biological relevance of the orthologue data and not due to some other specious aspect of the architecture. Finally, we introduce PPI.bio and PPI Origami, a web server interface for INTREPPPID and a software tool for creating strict evaluation datasets, respectively. Together, these two initiatives aim to make both the use and development of PPI inference tools more accessible to the community.

Funder

Natural Sciences and Engineering Research Council of Canada

Publisher

Oxford University Press (OUP)

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