New Pharmacophore Fingerprints and Weight-matrix Learning for Virtual Screening. Application to Bcr-Abl Data

Mol Inform. 2023 Jan;42(1):e2200210. doi: 10.1002/minf.202200210. Epub 2022 Nov 4.

Abstract

In this work, we propose to analyze the potential of a new type of pharmacophoric descriptors coupled to a novel feature transformation technique, called Weight-Matrix Learning (WML, based on a feed-forward neural network). The application concerns virtual screening on a tyrosine kinase named BCR-ABL. First, the compounds were described using three different families of descriptors: our new pharmacophoric descriptors, and two circular fingerprints, ECFP4 and FCFP4. Afterwards, each of these original molecular representations were transformed using either an unsupervised WML method or a supervised one. Finally, using these transformed representations, K-Means clustering algorithm was applied to automatically partition the molecules. Combining our pharmacophoric descriptors with supervised Weight-Matrix Learning (SWMLR ) leads to clearly superior results in terms of several quality measures.

Keywords: Clustering; Feed Forward Neural Network; Molecular fingerprint; Pharmacophore.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Fusion Proteins, bcr-abl / metabolism
  • Pharmacophore*

Substances

  • Fusion Proteins, bcr-abl