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Improvement of Virtual Screening Results by Docking Data Feature Analysis

MPG-Autoren
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Arciniega,  Marcelino
Huber, Robert / Structure Research, Max Planck Institute of Biochemistry, Max Planck Society;

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Zitation

Arciniega, M., & Lange, O. F. (2014). Improvement of Virtual Screening Results by Docking Data Feature Analysis. JOURNAL OF CHEMICAL INFORMATION AND MODELING, 54(5), 1401-1411. doi:10.1021/ci500028u.


Zitierlink: https://hdl.handle.net/11858/00-001M-0000-0019-DBE3-D
Zusammenfassung
In this study, we propose a novel approach to evaluate virtual screening (VS) experiments based on the analysis of docking output data. This approach, which we refer to as docking data feature analysis (DDFA), consists of two steps. First, a set of features derived from the docking output data is computed and assigned to each molecule in the virtually screened library. Second, an artificial neural network (ANN) analyzes the molecule's docking features and estimates its activity. Given the simple architecture of the ANN, DDFA can be easily adapted to deal with information from several docking programs simultaneously. We tested our approach on the Directory of Useful Decoys (DUD), a well-established and highly accepted VS benchmark. Outstanding results were obtained by DDFA not only in comparison with the conventional rankings of the docking programs used in this work but also with respect to other methods found in the literature. Our approach performs with similar good results as the best available methods, which, however, also require substantially more computing time, economic resources, and/or expert intervention. Taken together, DDFA represents an automatic and highly attractive methodology for VS.