SimBoost: a read-across approach for predicting drug–target binding affinities using gradient boosting machinesReportar como inadecuado




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Journal of Cheminformatics

, 9:24

First Online: 18 April 2017Received: 03 November 2016Accepted: 30 March 2017DOI: 10.1186-s13321-017-0209-z

Cite this article as: He, T., Heidemeyer, M., Ban, F. et al. J Cheminform 2017 9: 24. doi:10.1186-s13321-017-0209-z

Abstract

Computational prediction of the interaction between drugs and targets is a standing challenge in the field of drug discovery. A number of rather accurate predictions were reported for various binary drug–target benchmark datasets. However, a notable drawback of a binary representation of interaction data is that missing endpoints for non-interacting drug–target pairs are not differentiated from inactive cases, and that predicted levels of activity depend on pre-defined binarization thresholds. In this paper, we present a method called SimBoost that predicts continuous non-binary values of binding affinities of compounds and proteins and thus incorporates the whole interaction spectrum from true negative to true positive interactions. Additionally, we propose a version of the method called SimBoostQuant which computes a prediction interval in order to assess the confidence of the predicted affinity, thus defining the Applicability Domain metrics explicitly. We evaluate SimBoost and SimBoostQuant on two established drug–target interaction benchmark datasets and one new dataset that we propose to use as a benchmark for read-across cheminformatics applications. We demonstrate that our methods outperform the previously reported models across the studied datasets.

KeywordsRead-across Gradient boosting Drug–target interaction Prediction interval Applicability Domain QSAR Tong He and Marten Heidemeyer contributed equally to this work

Artem Cherkasov and Martin Ester labs contributed equally to the work





Autor: Tong He - Marten Heidemeyer - Fuqiang Ban - Artem Cherkasov - Martin Ester

Fuente: https://link.springer.com/







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