Journal Article10.1002/wrna.1781
Web tools support predicting protein-nucleic acid complexes stability with affinity changes.
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TL;DR: In this article , a review of existing databases for evaluating the stability of protein-nucleic acid binding is presented, and the authors compare and evaluate the pros and cons of web tools for forecasting the interaction energies of PNIs.
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Abstract: Numerous biological processes, such as transcription, replication, and translation, rely on protein-nucleic acid interactions (PNIs). Demonstrating the binding stability of protein-nucleic acid complexes is vital to deciphering the code for PNIs. Numerous web-based tools have been developed to attach importance to protein-nucleic acid stability, facilitating the prediction of PNIs characteristics rapidly. However, the data and tools are dispersed and lack comprehensive integration to understand the stability of PNIs better. In this review, we first summarize existing databases for evaluating the stability of protein-nucleic acid binding. Then, we compare and evaluate the pros and cons of web tools for forecasting the interaction energies of protein-nucleic acid complexes. Finally, we discuss the application of combining models and capabilities of PNIs. We may hope these web-based tools will facilitate the discovery of recognition mechanisms for protein-nucleic acid binding stability. This article is categorized under: RNA Interactions with Proteins and Other Molecules > Protein-RNA Recognition RNA Interactions with Proteins and Other Molecules > RNA-Protein Complexes RNA Interactions with Proteins and Other Molecules > Protein-RNA Interactions: Functional Implications.
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Citations
Predicting the Effect of Single Mutations on Protein Stability and Binding with Respect to Types of Mutations
Preeti Pandey,Shailesh Kumar Panday,Prawin Rimal,Nicolas Ancona,Emil Alexov +4 more
TL;DR: It is shown that the Pearson correlation coefficients (PCCs) of folding and binding free energy changes obtained in cases involving SNVs are smaller than for non-SNVs, indicating that caution should be used in applying leading algorithms to reveal the effect of human SNVs.
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Predicting the Effect of Mutations on Protein Stability and Binding: Assessment of Leading Algorithms Performance and Databases Content with Respect to Types of Mutations
02 Jun 2023
TL;DR: In this paper , the effect of mutations on protein stability, protein-protein, and protein-DNA/RNA binding is analyzed using a database of experimentally measured folding and binding free energy changes.
Comment on 'Thermodynamic database supports deciphering protein-nucleic acid interactions'.
M. Michael Gromiha,K. Harini +1 more
TL;DR: Mei et al. as discussed by the authors reported a thermodynamic database for protein-nucleic acid interactions, PNATDB, which contains 12 635 experimentally determined thermodynamic parameters.
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Zizuo Cheng,Juan Tang,Jiaqi Yang,Ying Huang +3 more
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