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Title

Machine Learning Scoring Functions for Drug Discovery from Experimental and Computer-Generated Protein–Ligand Structures: Towards Per-Target Scoring Functions.

Authors

Pellicani, Francesco; Dal Ben, Diego; Perali, Andrea; Pilati, Sebastiano

Abstract

In recent years, machine learning has been proposed as a promising strategy to build accurate scoring functions for computational docking finalized to numerically empowered drug discovery. However, the latest studies have suggested that over-optimistic results had been reported due to the correlations present in the experimental databases used for training and testing. Here, we investigate the performance of an artificial neural network in binding affinity predictions, comparing results obtained using both experimental protein–ligand structures as well as larger sets of computer-generated structures created using commercial software. Interestingly, similar performances are obtained on both databases. We find a noticeable performance suppression when moving from random horizontal tests to vertical tests performed on target proteins not included in the training data. The possibility to train the network on relatively easily created computer-generated databases leads us to explore per-target scoring functions, trained and tested ad-hoc on complexes including only one target protein. Encouraging results are obtained, depending on the type of protein being addressed.

Subjects

DRUG discovery; MACHINE learning; MOLECULAR docking; PLYOMETRICS

Publication

Molecules, 2023, Vol 28, Issue 4, p1661

ISSN

1420-3049

Publication type

Academic Journal

DOI

10.3390/molecules28041661

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