Protein–protein interactions (PPIs) are central to cellular functions. Experimental methods for predicting PPIs are well developed but are time and resource expensive and suffer from high false-positive error rates at scale. Computational prediction of PPIs is highly desirable for a mechanistic understanding of cellular processes and offers the potential to identify highly selective drug targets. In this chapter, details of developing a deep learning approach to predicting which residues in a protein are involved in forming a PPI—a task known as PPI site prediction—are outlined. The key decisions to be made in defining a supervised machine learning project in this domain are here highlighted. Alternative training regimes for deep learning models to address shortcomings in existing approaches and provide starting points for further research are discussed. This chapter is written to serve as a companion to developing deep learning approaches to protein–protein interaction site prediction, and an introduction to developing geometric deep learning projects operating on protein structure graphs.

Deep Learning for Protein–Protein Interaction Site Prediction / Jamasb, A. R.; Day, B.; Cangea, C.; Lio, P.; Blundell, T. L.. - (2021), pp. 263-288. - METHODS IN MOLECULAR BIOLOGY. [10.1007/978-1-0716-1641-3_16].

Deep Learning for Protein–Protein Interaction Site Prediction

Lio P.;
2021

Abstract

Protein–protein interactions (PPIs) are central to cellular functions. Experimental methods for predicting PPIs are well developed but are time and resource expensive and suffer from high false-positive error rates at scale. Computational prediction of PPIs is highly desirable for a mechanistic understanding of cellular processes and offers the potential to identify highly selective drug targets. In this chapter, details of developing a deep learning approach to predicting which residues in a protein are involved in forming a PPI—a task known as PPI site prediction—are outlined. The key decisions to be made in defining a supervised machine learning project in this domain are here highlighted. Alternative training regimes for deep learning models to address shortcomings in existing approaches and provide starting points for further research are discussed. This chapter is written to serve as a companion to developing deep learning approaches to protein–protein interaction site prediction, and an introduction to developing geometric deep learning projects operating on protein structure graphs.
2021
Methods in Molecular Biology
9781071616406
9781071616413
Deep learning; Geometric deep learning; Graph; Machine learning; Protein; Protein–protein interaction; Structural biology; Structure
02 Pubblicazione su volume::02a Capitolo o Articolo
Deep Learning for Protein–Protein Interaction Site Prediction / Jamasb, A. R.; Day, B.; Cangea, C.; Lio, P.; Blundell, T. L.. - (2021), pp. 263-288. - METHODS IN MOLECULAR BIOLOGY. [10.1007/978-1-0716-1641-3_16].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1728551
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