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Matrix-Based Activity Pattern Classification as a Novel Method for the Characterization of Enzyme Inhibitors Derived from High-Throughput Screening

Authors :
Auld, Douglas S.
Jimenez, Marta
Yue, Kimberley
Busby, Scott
Chen, Yu-Chi
Bowes, Scott
Wendel, Greg
Smith, Thomas
Zhang, Ji-Hu
Source :
SLAS Discovery: Advancing Life Sciences R&D; December 2016, Vol. 21 Issue: 10 p1075-1089, 15p
Publication Year :
2016

Abstract

One of the central questions in the characterization of enzyme inhibitors is determining the mode of inhibition (MOI). Classically, this is done with a number of low-throughput methods in which inhibition models are fitted to the data. The ability to rapidly characterize the MOI for inhibitors arising from high-throughput screening in which hundreds to thousands of primary inhibitors may need to be characterized would greatly help in lead selection efforts. Here we describe a novel method for determining the MOI of a compound without the need for curve fitting of the enzyme inhibition data. We provide experimental data to demonstrate the utility of this new high-throughput MOI classification method based on nonparametric analysis of the activity derived from a small matrix of substrate and inhibitor concentrations (e.g., from a 4S× 4Imatrix). Lists of inhibitors from four different enzyme assays are studied, and the results are compared with the previously described IC50-shift method for MOI classification. The MOI results from this method are in good agreement with the known MOI and compare favorably with those from the IC50-shift method. In addition, we discuss some advantages and limitations of the method and provide recommendations for utilization of this MOI classification method.

Details

Language :
English
ISSN :
24725552 and 24725560
Volume :
21
Issue :
10
Database :
Supplemental Index
Journal :
SLAS Discovery: Advancing Life Sciences R&D
Publication Type :
Periodical
Accession number :
ejs59321919
Full Text :
https://doi.org/10.1177/1087057116667255