2008
DOI: 10.1007/s10822-008-9192-9
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Utilizing high throughput screening data for predictive toxicology models: protocols and application to MLSCN assays

Abstract: Computational toxicology is emerging as an encouraging alternative to experimental testing. The Molecular Libraries Screening Center Network (MLSCN) as part of the NIH Molecular Libraries Roadmap has recently started generating large and diverse screening datasets, which are publicly available in PubChem. In this report, we investigate various aspects of developing computational models to predict cell toxicity based on cell proliferation screening data generated in the MLSCN. By capturing feature-based informa… Show more

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Cited by 43 publications
(78 citation statements)
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References 43 publications
(46 reference statements)
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“…Δ is the sum of the Kronecker deltas, that is, the number of atom pairs at a distance equal to 6. [42,43]. Its value is directly proportional to the number of atoms and inversely proportional to the number of atom pairs at a distance equal to 6.…”
Section: Descriptor Analysis and Interpretationmentioning
confidence: 99%
“…Δ is the sum of the Kronecker deltas, that is, the number of atom pairs at a distance equal to 6. [42,43]. Its value is directly proportional to the number of atoms and inversely proportional to the number of atom pairs at a distance equal to 6.…”
Section: Descriptor Analysis and Interpretationmentioning
confidence: 99%
“…With a considerable thrust from the National Institute of Health, the Molecular Libraries Initiative has brought assay results and methodologies into the public domain [27]. Parallel advances in computational power have enabled researchers to take advantage [28] of these multiple highthroughput assays, which are now employed to describe both on-and off-target drug effects by creating an activity profile for each compound tested.…”
Section: Biodescriptorsmentioning
confidence: 99%
“…Though fingerprints were originally developed for searching chemical databases, they have proven to be useful as descriptors in developing a variety of predictive modeling studies [12,33,45,51,92,117]. The goal of any fingerprint is to characterize the substructures present in a molecule.…”
Section: Descriptorsmentioning
confidence: 99%