Data di Pubblicazione:
2023
Abstract:
The ability to identify and characterize not only the protein-protein interactions but also their internal modular organization
through network analysis is fundamental for understanding the mechanisms of biological processes at the molecular level. Indeed, the
detection of the network communities can enhance our understanding of the molecular basis of disease pathology, and promote drug
discovery and disease treatment in personalized medicine. This work gives an overview of recent computational methods for the
detection of protein complexes and functional modules in protein-protein interaction networks, also providing a focus on some of its
applications. We propose a systematic reformulation of frequently adopted taxonomies for these methods, also proposing new
categories to keep up with the most recent research. We review the literature of the last five years (2017-2021) and provide links to
existing data and software resources. Finally, we survey recent works exploiting module identification and analysis, in the context of a
variety of disease processes for biomarker identification and therapeutic target detection. Our review provides the interested reader
with an up-to-date and self-contained view of the existing research, with links to state-of-the-art literature and resources, as well as
hints on open issues and future research directions in complex detection and its applications.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Graphs and networks; Clustering; Community detection; Protein-protein interaction; Personalized medicine
Elenco autori:
Parashuraman, Seetharaman; Piccirillo, Marina; Manipur, Ichcha; Maddalena, Lucia; Giordano, Maurizio
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