ProNA2020 predicts protein-DNA, protein-RNA and protein-protein binding proteins and residues from sequence

2020 
Abstract The intricate details of how proteins bind to proteins, DNA and RNA, are crucial for the understanding of almost all biological processes. Disease-causing sequence variants often affect binding residues. Here, we described a new, comprehensive system of in silico methods that take only protein sequence as input to predict binding of protein to DNA, RNA and other proteins. Firstly, we needed to develop several new methods to predict whether or not proteins bind (per-protein prediction). Secondly, we developed independent methods that predict which residues bind (per-residue). Not requiring 3D information, the system can predict the actual binding residue. The system combined homology-based inference with machine learning, and motif-based profile-kernel approaches with word-based (ProtVec) solutions to machine learning protein level predictions. This achieved an overall non-exclusive three-state accuracy of 77%±1% (±one standard error) corresponding to a 1.8 fold improvement over random (best classification for protein-protein with F1=91±0.8%). Standard neural networks for per-residue binding residue predictions appeared best for DNA-binding (Q2=81±0.9%) followed by RNA-binding (Q2= 80±1%), and worst for protein-protein binding (Q2=69±0.8%). The new method, dubbed ProNA2020, is available as code through github ( https://github.com/Rostlab/ProNA2020.git ) and through PredictProtein ( www.predictprotein.org ).
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