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Machine-Learning-Enabled Virtual Screening for Inhibitors of Lysine-Specific Histone Demethylase 1

Jiajun Zhou, Shiying Wu, Boon Giin Lee, Tianwei Chen, Ziqi He, Yukun Lei, Bencan Tang, Jonathan D. Hirst

2021Molecules11 citationsDOIOpen Access PDF

Abstract

A machine learning approach has been applied to virtual screening for lysine specific demethylase 1 (LSD1) inhibitors. LSD1 is an important anti-cancer target. Machine learning models to predict activity were constructed using Morgan molecular fingerprints. The dataset, consisting of 931 molecules with LSD1 inhibition activity, was obtained from the ChEMBL database. An evaluation of several candidate algorithms on the main dataset revealed that the support vector regressor gave the best model, with a coefficient of determination (R2) of 0.703. Virtual screening, using this model, identified five predicted potent inhibitors from the ZINC database comprising more than 300,000 molecules. The virtual screening recovered a known inhibitor, RN1, as well as four compounds where activity against LSD1 had not previously been suggested. Thus, we performed a machine-learning-enabled virtual screening of LSD1 inhibitors using only the structural information of the molecules.

Topics & Concepts

chEMBLVirtual screeningDemethylaseSupport vector machineComputational biologyMachine learningComputer scienceDrug discoverySmall moleculeChemistryArtificial intelligenceHistoneBiologyBiochemistryGeneEpigenetics and DNA MethylationHistone Deacetylase Inhibitors ResearchBioinformatics and Genomic Networks