Fibrillar protein aggregates are characteristic of neurodegenerative
diseases but represent difficult targets for ligand design, because
limited structural information about the binding sites is available.
Ligand-based virtual screening has been used to develop a computational
method for the selection of new ligands for Aβ(1–42)
fibrils, and five new ligands have been experimentally confirmed as
nanomolar affinity binders. A database of ligands for Aβ(1–42)
fibrils was assembled from the literature and used to train models
for the prediction of dissociation constants based on chemical structure.
The virtual screening pipeline consists of three steps: a molecular
property filter based on charge, molecular weight, and logP; a machine learning model based on simple chemical descriptors;
and machine learning models that use field points as a 3D description
of shape and surface properties in the Forge software. The three-step
pipeline was used to virtually screen 698 million compounds from the
ZINC15 database. From the top 100 compounds with the highest predicted
affinities, 46 compounds were experimentally investigated by using
a thioflavin T fluorescence displacement assay. Five new Aβ(1–42)
ligands with dissociation constants in the range 20–600 nM
and novel structures were identified, demonstrating the power of this
ligand-based approach for discovering new structurally unique, high-affinity
amyloid ligands. The experimental hit rate using this virtual screening
approach was 10.9%.