Sara Capponi, Fernando Alvarez, et al.
Macromolecules
Abstract: We present a novel technique to predict binding affinity trends between two molecules from atomistic molecular dynamics simulations. The technique uses a neural network algorithm applied to a series of images encoding the distance between two molecules in time. We demonstrate that our algorithm is capable of separating with high accuracy non-hydrophobic mutations with low binding affinity from those with high binding affinity. Moreover, we show high accuracy in prediction using a small subset of the simulation, therefore requiring a much shorter simulation time. We apply our algorithm to the binding between several variants of the SARS-CoV-2 spike protein and the human receptor ACE2. Graphic abstract: [Figure not available: see fulltext.]
Sara Capponi, Fernando Alvarez, et al.
Macromolecules
Yuanyuan Chen, Marcos Sotomayor, et al.
Journal of Biological Chemistry
Ming Te Yeh, Sara Capponi, et al.
Viruses
Shangying Wang, Simone Bianco
APS March Meeting 2022