This paper tackles the problem of predicting the protein-protein interactions that arise in all
living systems. Inference of protein-protein interactions is of paramount importance for understanding fun-
damental biological phenomena, including cross-species protein-protein interactions, such as those causing
the 2020-21 pandemic of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). Furthermore,
it is relevant also for applications such as drug repurposing, where a known authorized drug is applied to
novel diseases. On the other hand, a large fraction of existing protein interactions are not known, and their
experimental measurement is resource consuming. To this purpose, we adopt a Graph Signal Processing
based approach modeling the protein-protein interaction (PPI) network (a.k.a. the interactome) as a graph
and some connectivity related node features as a signal on the graph. We then leverage the signal on graph
features to infer links between graph nodes, corresponding to interactions between proteins. Specifically, we
develop a Markovian model of the signal on graph that enables the representation of connectivity properties
of the nodes, and exploit it to derive an algorithm to infer the graph edges. Performance assessment
by several metrics recognized in the literature proves that the proposed approach, named GRAph signal
processing Based PPI prediction (GRABP), effectively captures underlying biologically grounded properties
of the PPI network.
Dettaglio pubblicazione
2021, IEEE ACCESS, Pages 1-12 (volume: 4)
Protein-protein Interaction prediction via graph signal processing (01a Articolo in rivista)
Colonnese Stefania, Petti Manuela, Farina Lorenzo, Scarano Gaetano, Cuomo Francesca
Gruppo di ricerca: Bioengineering and Bioinformatics
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