Mining High-Throughput Screening Data of Combinatorial Libraries: Development of a Filter to Distinguish Hits from Nonhits.

Mining High-Throughput Screening Data of Combinatorial Libraries: Development of a Filter to Distinguish Hits from Nonhits.

Teckentrup A, Briem H, Gasteiger J. “Mining High-Throughput Screening Data of Combinatorial Libraries: Development of a Filter to Distinguish Hits from Nonhits.” J. Chem. Inf. Model.. 2004;44(2):626-634. 

TitleMining High-Throughput Screening Data of Combinatorial Libraries: Development of a Filter to Distinguish Hits from Nonhits
Publication TypeJournal Article
Year of Publication2004
AuthorsTeckentrup A, Briem H, Gasteiger J
JournalJ. Chem. Inf. Model.
Volume44
Issue2
Pagination626 – 634
Date Published03/2004
ISSN1549-9596
AbstractKohonen neural networks generate projections of large data sets defined in high-dimensional space. The resulting self-organizing maps can be used in many applications in the drug discovery process, such as to analyze combinatorial libraries for their similarity or diversity and to select descriptors for structure−activity relationships. The ability to investigate thousands of compounds in parallel also allows one to conduct a study based on single-dose experiments of high-throughput screening campaigns, which are known to have a greater uncertainty than IC50 or Ki values. This is demonstrated here for a data set of 5513 compounds from one combinatorial library. Furthermore, a method was developed that uses self-organizing maps not only as an indicator of structure−activity relationships, but as the basis of a classification system allowing predictive modeling of combinatorial libraries.
DOI10.1021/ci034223v
Short TitleJ. Chem. Inf. Model.

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