Abstract
The anthrax toxin lethal factor (LF) and matrix metalloproteinase-3 (MMP-3, stromelysin-1) are popular zinc metalloenzyme drug targets, with LF primarily responsible for anthrax-related toxicity and host death, while MMP-3 is involved in cancer- and rheumatic disease-related tissue remodeling. A number of in silico screening techniques, most notably docking and scoring, have proven useful for identifying new potential drug scaffolds targeting LF and MMP-3, as well as for optimizing lead compounds and investigating mechanisms of action. However, virtual screening outcomes can vary significantly depending on the specific docking parameters chosen, and systematic statistical significance analyses are needed to prioritize key parameters for screening small molecules against these zinc systems. In the current work, we present a series of chi-square statistical analyses of virtual screening outcomes for cocrystallized LF and MMP-3 inhibitors docked into their respective targets, evaluated by predicted enzyme-inhibitor dissociation constant and root-meansquare deviation (RMSD) between predicted and experimental bound configurations, and we present a series of preferred parameters for use with these systems in the industry-standard Surflex-Dock screening program, for use by researchers utilizing in silico techniques to discover and optimize new scaffolds.
Keywords: Anthrax, anthrax toxin lethal factor, docking and scoring, MMP-3, surflex-dock, virtual screening, zinc metalloproteinases.
Current Topics in Medicinal Chemistry
Title:Statistical Analysis, Optimization, and Prioritization of Virtual Screening Parameters for Zinc Enzymes Including the Anthrax Toxin Lethal Factor
Volume: 14 Issue: 18
Author(s): Kimberly M. Maize, Xia Zhang and Elizabeth Ambrose Amin
Affiliation:
Keywords: Anthrax, anthrax toxin lethal factor, docking and scoring, MMP-3, surflex-dock, virtual screening, zinc metalloproteinases.
Abstract: The anthrax toxin lethal factor (LF) and matrix metalloproteinase-3 (MMP-3, stromelysin-1) are popular zinc metalloenzyme drug targets, with LF primarily responsible for anthrax-related toxicity and host death, while MMP-3 is involved in cancer- and rheumatic disease-related tissue remodeling. A number of in silico screening techniques, most notably docking and scoring, have proven useful for identifying new potential drug scaffolds targeting LF and MMP-3, as well as for optimizing lead compounds and investigating mechanisms of action. However, virtual screening outcomes can vary significantly depending on the specific docking parameters chosen, and systematic statistical significance analyses are needed to prioritize key parameters for screening small molecules against these zinc systems. In the current work, we present a series of chi-square statistical analyses of virtual screening outcomes for cocrystallized LF and MMP-3 inhibitors docked into their respective targets, evaluated by predicted enzyme-inhibitor dissociation constant and root-meansquare deviation (RMSD) between predicted and experimental bound configurations, and we present a series of preferred parameters for use with these systems in the industry-standard Surflex-Dock screening program, for use by researchers utilizing in silico techniques to discover and optimize new scaffolds.
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Cite this article as:
Maize M. Kimberly, Zhang Xia and Amin Ambrose Elizabeth, Statistical Analysis, Optimization, and Prioritization of Virtual Screening Parameters for Zinc Enzymes Including the Anthrax Toxin Lethal Factor, Current Topics in Medicinal Chemistry 2014; 14 (18) . https://dx.doi.org/10.2174/1568026614666141106163011
DOI https://dx.doi.org/10.2174/1568026614666141106163011 |
Print ISSN 1568-0266 |
Publisher Name Bentham Science Publisher |
Online ISSN 1873-4294 |
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