FILTREST3D: Discrimination of structural models using restraints from experimental data

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Abstract

Summary: Automatic methods for macromolecular structure prediction (fold recognition, de novo folding and docking programs) produce large sets of alternative models. These large model sets often include many native-like structures, which are often scored as false positives. Such native-like models can be more easily identified based on data from experimental analyses used as structural restraints (e.g. identification of nearby residues by cross-linking, chemical modification, site-directed mutagenesis, deuterium exchange coupled with mass spectrometry, etc.). We present a simple server for scoring and ranking of models according to their agreement with user-defined restraints. © The Author 2010. Published by Oxford University Press. All rights reserved.

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Gajda, M. J., Tuszynska, I., Kaczor, M., Bakulina, A. Y., & Bujnicki, J. M. (2010). FILTREST3D: Discrimination of structural models using restraints from experimental data. Bioinformatics, 26(23), 2986–2987. https://doi.org/10.1093/bioinformatics/btq582

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