2024
DOI: 10.1021/acs.jctc.4c01387
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AlphaMut: A Deep Reinforcement Learning Model to Suggest Helix-Disrupting Mutations

Prathith Bhargav,
Arnab Mukherjee

Abstract: Helices are important secondary structural motifs within proteins and are pivotal in numerous physiological processes. While amino acids (AA) such as alanine and leucine are known to promote helix formation, proline and glycine disfavor it. Helical structure formation, however, also depends on its environment, and hence, prior prediction of a mutational effect on a helical structure is difficult. Here, we employ a reinforcement learning algorithm to develop a predictive model for helixdisrupting mutations. We … Show more

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