Finding proper collective variables for complex systems and processes is one of the most challenging tasks in simulations, which limits the interpretation of experimental and simulated data and the application of enhanced sampling techniques. Here, we propose a machine learning approach able to distill few, physically relevant variables by associating instantaneous configurations of the system to their corresponding inherent structures as defined in liquids theory. We apply this approach to the challenging case of structural transitions in nanoclusters, managing to characterize and explore the structural complexity of an experimentally relevant system constituted by 147 gold atoms. Our inherent-structure variables are shown to be e!ective at computing complex free-energy landscapes, transition rates, and at describing non-equilibrium melting and freezing processes. In addition, we illustrate the generality of this machine learning strategy by deploying it to understand conformational rearrangements of the bradykinin peptide, indicating its applicability to a vast range of systems, including liquids, glasses, and proteins.

Inherent structural descriptors via machine learning / Telari, Emanuele; Tinti, Antonio; Settem, Manoj; Guardiani, Carlo; Kunche, Lakshmi Kumar; Rees, Morgan; Hoddinott, Henry; Dearg, Malcolm; Von Issendorff, Bernd; Held, Georg; Slater, Thomas; Palmer, Richard E; Maragliano, Luca; Ferrando, Riccardo; Giacomello, Alberto. - In: REPORTS ON PROGRESS IN PHYSICS. - ISSN 0034-4885. - 88:6(2025), pp. 1-15. [10.1088/1361-6633/add95b]

Inherent structural descriptors via machine learning

Telari, Emanuele;Tinti, Antonio
;
Settem, Manoj;Guardiani, Carlo;Kunche, Lakshmi Kumar;Slater, Thomas;Maragliano, Luca;Ferrando, Riccardo;Giacomello, Alberto
2025

Abstract

Finding proper collective variables for complex systems and processes is one of the most challenging tasks in simulations, which limits the interpretation of experimental and simulated data and the application of enhanced sampling techniques. Here, we propose a machine learning approach able to distill few, physically relevant variables by associating instantaneous configurations of the system to their corresponding inherent structures as defined in liquids theory. We apply this approach to the challenging case of structural transitions in nanoclusters, managing to characterize and explore the structural complexity of an experimentally relevant system constituted by 147 gold atoms. Our inherent-structure variables are shown to be e!ective at computing complex free-energy landscapes, transition rates, and at describing non-equilibrium melting and freezing processes. In addition, we illustrate the generality of this machine learning strategy by deploying it to understand conformational rearrangements of the bradykinin peptide, indicating its applicability to a vast range of systems, including liquids, glasses, and proteins.
2025
collective variables; molecular simulations; inherent structures; nanoclusters; proteins
01 Pubblicazione su rivista::01a Articolo in rivista
Inherent structural descriptors via machine learning / Telari, Emanuele; Tinti, Antonio; Settem, Manoj; Guardiani, Carlo; Kunche, Lakshmi Kumar; Rees, Morgan; Hoddinott, Henry; Dearg, Malcolm; Von Issendorff, Bernd; Held, Georg; Slater, Thomas; Palmer, Richard E; Maragliano, Luca; Ferrando, Riccardo; Giacomello, Alberto. - In: REPORTS ON PROGRESS IN PHYSICS. - ISSN 0034-4885. - 88:6(2025), pp. 1-15. [10.1088/1361-6633/add95b]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1738639
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