Title of article :
Developing a Kinase-Specific Target Selection Method Using a Structure-Based Machine Learning Approach
Author/Authors :
Afanasyeva, Arina Bioinformatics Project - National Institutes of Biomedical Innovation - Health and Nutrition, Osaka, Japan , Nagao, Chioko Bioinformatics Project - National Institutes of Biomedical Innovation - Health and Nutrition, Osaka, Japan , Mizuguch, Kenji Bioinformatics Project - National Institutes of Biomedical Innovation - Health and Nutrition, Osaka, Japan
Abstract :
Introduction: Despite recent advances in the drug discovery field, developing selective
kinase inhibitors remains a complicated issue for a number of reasons, one of which is that
there are striking structural similarities in the ATP-binding pockets of kinases.
Objective: To address this problem, we have designed a machine learning model utilizing various
structure-based and energy-based descriptors to better characterize protein–ligand interactions.
Methods: In this work, we use a dataset of 104 human kinases with available PDB
structures and experimental activity data against 1202 small-molecule compounds from the
PubChem BioAssay dataset “Navigating the Kinome”. We propose structure-based interac-
tion descriptors to build activity predicting machine learning model.
Results and Discussion: We report a ligand-oriented computational method for accurate
kinase target prioritizing. Our method shows high accuracy compared to similar structure-
based activity prediction methods, and more importantly shows the same prediction accuracy
when tested on the special set of structurally remote compounds, showing that it is unbiased
to ligand structural similarity in the training set data. We hope that our approach will be
useful for the development of novel highly selective kinase inhibitors
Farsi abstract :
فاقد چكيده فارسي
Keywords :
kinase , machine learning , activity prediction , docking , interaction descriptors
Journal title :
Advances and Applications in Bioinformatics and Chemistry: AABC