ChemModLab: A Web-Based Cheminformatics Modeling Laboratory
ChemModLab, written by the ECCR @ NCSU consortium under NIH support, is a toolbox for fitting and assessing quantitative structure-activity relationships (QSARs). Its elements are: a cheminformatic front end used to supply molecular descriptors for use in modeling; a set of methods for fitting model...
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Veröffentlicht in: | In silico biology 2011, Vol.11 (1-2), p.61-81 |
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Sprache: | eng |
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Zusammenfassung: | ChemModLab, written by the ECCR @ NCSU consortium under NIH support,
is a toolbox for fitting and assessing quantitative structure-activity
relationships (QSARs). Its elements are: a cheminformatic front end used to
supply molecular descriptors for use in modeling; a set of methods for fitting
models; and methods for validating the resulting model. Compounds may be input
as structures from which standard descriptors will be calculated using the
freely available cheminformatic front end PowerMV; PowerMV also supports
compound visualization. In addition, the user can directly input their own
choices of descriptors, so the capability for comparing descriptors is
effectively unlimited. The statistical methodologies comprise a comprehensive
collection of approaches whose validity and utility have been accepted by
experts in the fields. As far as possible, these tools are implemented in
open-source software linked into the flexible R platform, giving the user the
capability of applying many different QSAR modeling methods in a seamless way.
As promising new QSAR methodologies emerge from the statistical and data-mining
communities, they will be incorporated in the laboratory. The web site also
incorporates links to public-domain data sets that can be used as test cases
for proposed new modeling methods.
The capabilities of ChemModLab are illustrated using a variety of
biological responses, with different modeling methodologies being applied to
each. These show clear differences in quality of the fitted QSAR model, and in
computational requirements.
The laboratory is web-based, and use is free. Researchers with new
assay data, a new descriptor set, or a new modeling method may readily build
QSAR models and benchmark their results against other findings. Users may also
examine the diversity of the molecules identified by a QSAR model. Moreover,
users have the choice of placing their data sets in a public area to facilitate
communication with other researchers; or can keep them hidden to preserve
confidentiality. |
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ISSN: | 1386-6338 1434-3207 |
DOI: | 10.3233/CI-2008-0016 |