On-the-fly Prediction of Protein Hydration Densities and Free Energies using Deep Learning
The calculation of thermodynamic properties of biochemical systems typically requires the use of resource-intensive molecular simulation methods. One example thereof is the thermodynamic profiling of hydration sites, i.e. high-probability locations for water molecules on the protein surface, which p...
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Zusammenfassung: | The calculation of thermodynamic properties of biochemical systems typically
requires the use of resource-intensive molecular simulation methods. One
example thereof is the thermodynamic profiling of hydration sites, i.e.
high-probability locations for water molecules on the protein surface, which
play an essential role in protein-ligand associations and must therefore be
incorporated in the prediction of binding poses and affinities. To replace
time-consuming simulations in hydration site predictions, we developed two
different types of deep neural-network models aiming to predict hydration site
data. In the first approach, meshed 3D images are generated representing the
interactions between certain molecular probes placed on regular 3D grids,
encompassing the binding pocket, with the static protein. These molecular
interaction fields are mapped to the corresponding 3D image of hydration
occupancy using a neural network based on an U-Net architecture. In a second
approach, hydration occupancy and thermodynamics were predicted point-wise
using a neural network based on fully-connected layers. In addition to direct
protein interaction fields, the environment of each grid point was represented
using moments of a spherical harmonics expansion of the interaction properties
of nearby grid points. Application to structure-activity relationship analysis
and protein-ligand pose scoring demonstrates the utility of the predicted
hydration information. |
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DOI: | 10.48550/arxiv.2001.02201 |