Integrating computation, experiment, and machine learning in the design of peptide-based supramolecular materials and systems

Ramakrishnan, Maithreyi and van Teijlingen, Alexander and Tuttle, Tell and Ulijn, R. V. (2023) Integrating computation, experiment, and machine learning in the design of peptide-based supramolecular materials and systems. Angewandte Chemie International Edition, 62 (18). e202218067. ISSN 1433-7851 (https://doi.org/10.1002/anie.202218067)

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Abstract

Interest in peptide-based supramolecular materials has grown extensively since the 1980s and the application of computational methods has paralleled this. These methods contribute to the understanding of experimental observations based on interactions and inform the design of new supramolecular systems. They are also used to virtually screenand navigate these very large design spaces. Increasingly, the use of artificial intelligence is employed to screen far more candidates than traditional methods. Based on a brief history of computational and experimentally integrated investigations of peptide structures, we explore recent impactful examples of computationally driven investigation into peptide self-assembly, focusing on recent advances in methodology development. It is clear that the integration between experiment and computation to understand and design new systems is becoming near seamless in this growing field.