Investigating protein–protein interactions is crucial for understanding cellular biological processes because proteins often function within molecular complexes rather than in isolation. While experimental and computational methods have provided valuable insights into these interactions, they often overlook a critical factor: the crowded cellular environment. This environment significantly impacts protein behavior, including structural stability, diffusion, and ultimately the nature of binding. In this review, we discuss theoretical and computational approaches that allow the modeling of biological systems to guide and complement experiments and can thus significantly advance the investigation, and possibly the predictions, of protein–protein interactions in the crowded environment of cell cytoplasm. We explore topics such as statistical mechanics for lattice simulations, hydrodynamic interactions, diffusion processes in high-viscosity environments, and several methods based on molecular dynamics simulations. By synergistically leveraging methods from biophysics and computational biology, we review the state of the art of computational methods to study the impact of molecular crowding on protein–protein interactions and discuss its potential revolutionizing effects on the characterization of the human interactome.

Computational Approaches to Predict Protein–Protein Interactions in Crowded Cellular Environments / Grassmann, Greta; Miotto, Mattia; Desantis, Fausta; Di Rienzo, Lorenzo; Tartaglia, Gian Gaetano; Pastore, Annalisa; Ruocco, Giancarlo; Monti, Michele; Milanetti, Edoardo. - In: CHEMICAL REVIEWS. - ISSN 0009-2665. - 124:7(2024), pp. 3932-3977. [10.1021/acs.chemrev.3c00550]

Computational Approaches to Predict Protein–Protein Interactions in Crowded Cellular Environments

Grassmann, Greta;Miotto, Mattia;Desantis, Fausta;Di Rienzo, Lorenzo;Tartaglia, Gian Gaetano;Pastore, Annalisa;Ruocco, Giancarlo;Milanetti, Edoardo
2024

Abstract

Investigating protein–protein interactions is crucial for understanding cellular biological processes because proteins often function within molecular complexes rather than in isolation. While experimental and computational methods have provided valuable insights into these interactions, they often overlook a critical factor: the crowded cellular environment. This environment significantly impacts protein behavior, including structural stability, diffusion, and ultimately the nature of binding. In this review, we discuss theoretical and computational approaches that allow the modeling of biological systems to guide and complement experiments and can thus significantly advance the investigation, and possibly the predictions, of protein–protein interactions in the crowded environment of cell cytoplasm. We explore topics such as statistical mechanics for lattice simulations, hydrodynamic interactions, diffusion processes in high-viscosity environments, and several methods based on molecular dynamics simulations. By synergistically leveraging methods from biophysics and computational biology, we review the state of the art of computational methods to study the impact of molecular crowding on protein–protein interactions and discuss its potential revolutionizing effects on the characterization of the human interactome.
2024
crowding; protein interactions; computational tools
01 Pubblicazione su rivista::01g Articolo di rassegna (Review)
Computational Approaches to Predict Protein–Protein Interactions in Crowded Cellular Environments / Grassmann, Greta; Miotto, Mattia; Desantis, Fausta; Di Rienzo, Lorenzo; Tartaglia, Gian Gaetano; Pastore, Annalisa; Ruocco, Giancarlo; Monti, Michele; Milanetti, Edoardo. - In: CHEMICAL REVIEWS. - ISSN 0009-2665. - 124:7(2024), pp. 3932-3977. [10.1021/acs.chemrev.3c00550]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1713072
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