An overview of data-driven HADDOCK strategies in CAPRI rounds 38-45

Publication date

2020-01-07

Authors

Koukos, PanosISNI 0000000492900320
Roel-Touris, JorgeISNI 0000000492917800
Ambrosetti, FrancescoISNI 0000000493352696
Geng, C.ISNI 000000050599841X
Schaarschmidt, Jörg JISNI 0000000506048061
Trellet, Mikael EISNI 0000000455501793
Melquiond, Adrien S JISNI 0000000356963319
Xue, LiISNI 0000000506297551
Vargas Honorato, RodrigoISNI 0000000492959592
de Sousa Moreira, IrinaISNI 0000000428079988

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Abstract

Our information‐driven docking approach HADDOCK has demonstrated a sustained performance since the start of its participation to CAPRI. This is due, in part, to its ability to integrate data into the modeling process, and to the robustness of its scoring function. We participated in CAPRI both as server and manual predictors. In CAPRI rounds 38‐45, we have used various strategies depending on the available information. These ranged from imposing restraints to a few residues identified from literature as being important for the interaction, to binding pockets identified from homologous complexes or template‐based refinement/CA‐CA restraint‐guided docking from identified templates. When relevant, symmetry restraints were used to limit the conformational sampling. We also tested for a large decamer target a new implementation of the MARTINI coarse‐grained force field in HADDOCK. Overall, we obtained acceptable or better predictions for 13 and 11 server and manual submissions, respectively, out of the 22 interfaces. Our server performance (acceptable or higher‐quality models when considering the top 10) was better (59%) than the manual (50%) one, in which we typically experiment with various combinations of protocols and data sources. Again, our simple scoring function based on a linear combination of intermolecular van der Waals and electrostatic energies and an empirical desolvation term demonstrated a good performance in the scoring experiment with a 63% success rate across all 22 interfaces. An analysis of model quality indicates that, while we are consistently performing well in generating acceptable models, there is room for improvement for generating/identifying higher quality models

Keywords

biomolecular interactions, complexes, integrative modeling, prediction, scoring

Citation

Koukos, P I, Roel-Touris, J, Ambrosetti, F, Geng, C, Schaarschmidt, J, Trellet, M E, Melquiond, A S J, Xue, L C, Honorato, R V, Moreira, I, Kurkcuoglu, Z, Vangone, A & Bonvin, A M J J 2020, 'An overview of data-driven HADDOCK strategies in CAPRI rounds 38-45', Proteins: Structure, Function and Genetics. https://doi.org/10.1002/prot.25869