Development of a Method for Evaluating Drug-Likeness and Ease of Synthesis Using a Data Set in Which Compounds Are Assigned Scores Based on Chemists' Intuition

The concept of drug-likeness, an important characteristic for any compound in a screening library, is nevertheless difficult to pin down. Based on our belief that this concept is implicit within the collective experience of working chemists, we devised a data set to capture an intuitive human unders...

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Veröffentlicht in:Journal of Chemical Information and Computer Sciences 2003-07, Vol.43 (4), p.1269-1275
Hauptverfasser: Takaoka, Yuji, Endo, Yutaka, Yamanobe, Susumu, Kakinuma, Hiroyuki, Okubo, Taketoshi, Shimazaki, Youichi, Ota, Tomomi, Sumiya, Shigeyuki, Yoshikawa, Kensei
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Sprache:eng
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Zusammenfassung:The concept of drug-likeness, an important characteristic for any compound in a screening library, is nevertheless difficult to pin down. Based on our belief that this concept is implicit within the collective experience of working chemists, we devised a data set to capture an intuitive human understanding of both this characteristic and ease of synthesis, a second key characteristic. Five chemists assigned a pair of scores to each of 3980 diverse compounds, with the component scores of each pair corresponding to drug-likeness and ease of synthesis, respectively. Using this data set, we devised binary classifiers with an artificial neural network and a support vector machine. These models were found to efficiently eliminate compounds that are not drug-like and/or hard-to-synthesize derivatives, demonstrating the suitability of these models for use as compound acquisition filters.
ISSN:0095-2338
1549-960X
DOI:10.1021/ci034043l