Abstract
To solve recurring problems in drug discovery, matched molecular pair (MMP) analysis is used
to understand relationships between chemical structure and function. For the MMP analysis of
large datasets (>10,000 compounds), available tools lack flexible search and visualization
functionality and require computational expertise. Here we present Matcher, an open-source
application for MMP analysis, with novel search algorithms and fully automated querying-to-visualization that requires no programming expertise. Matcher enables unprecedented control
over the search and clustering of MMP transformations based on both variable fragment and
constant environment structure, which is critical for disentangling relevant and irrelevant data to
a given problem. Users can exert such control through a built-in chemical sketcher, and with a
few mouse clicks can navigate between resulting MMP transformations, statistics, property
distribution graphs and structures with raw experimental data, for confident and accelerated
decision making. Matcher can be used with any collection of structure/property data; here we
demonstrate usage with a public ChEMBL dataset of about 20,000 small molecules with
CYP3A4 and/or hERG inhibition data. Users can reproduce all examples demonstrated herein
via unique links within Matcher’s interface – a functionality that anyone can use to preserve and
share their own analyses. Matcher and all its dependencies are open-source with permissive
licenses and trivial containerized deployment, and is freely available at
https://github.com/Merck/Matcher. Matcher makes large structure/property datasets more
transparent than ever before and accelerates the data-driven solution of common problems in
drug discovery.
Supplementary weblinks
Title
Matcher Open-Source Code
Description
Matcher source code, which can be deployed to the live Matcher application via docker
compose, is available at this link.
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