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Applicability domains for classification problems: Benchmarking of distance to models for Ames mutagenicity set
Authors:Sushko Iurii  Novotarskyi Sergii  Körner Robert  Pandey Anil Kumar  Cherkasov Artem  Li Jiazhong  Gramatica Paola  Hansen Katja  Schroeter Timon  Müller Klaus-Robert  Xi Lili  Liu Huanxiang  Yao Xiaojun  Öberg Tomas  Hormozdiari Farhad  Dao Phuong  Sahinalp Cenk  Todeschini Roberto  Polishchuk Pavel  Artemenko Anatoliy  Kuz'min Victor  Martin Todd M  Young Douglas M  Fourches Denis  Muratov Eugene  Tropsha Alexander  Baskin Igor  Horvath Dragos  Marcou Gilles  Muller Christophe  Varnek Alexander  Prokopenko Volodymyr V  Tetko Igor V
Institution:Institute of Bioinformatics and Systems Biology, Helmholtz Zentrum Muenchen-German Research Center for Environmental Health (GmbH), Ingolstaedter Landstrasse 1, D-85764 Neuherberg, Germany.
Abstract:The estimation of accuracy and applicability of QSAR and QSPR models for biological and physicochemical properties represents a critical problem. The developed parameter of "distance to model" (DM) is defined as a metric of similarity between the training and test set compounds that have been subjected to QSAR/QSPR modeling. In our previous work, we demonstrated the utility and optimal performance of DM metrics that have been based on the standard deviation within an ensemble of QSAR models. The current study applies such analysis to 30 QSAR models for the Ames mutagenicity data set that were previously reported within the 2009 QSAR challenge. We demonstrate that the DMs based on an ensemble (consensus) model provide systematically better performance than other DMs. The presented approach identifies 30-60% of compounds having an accuracy of prediction similar to the interlaboratory accuracy of the Ames test, which is estimated to be 90%. Thus, the in silico predictions can be used to halve the cost of experimental measurements by providing a similar prediction accuracy. The developed model has been made publicly available at http://ochem.eu/models/1 .
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