
AbstractWith the growth of protein structure data, the analysis of molecular interactions between ligands and their target molecules is gaining importance. PLIP, the protein–ligand interaction profiler, detects and visualises these interactions and provides data in formats suitable for further processing. PLIP has proven very successful in applications ranging from the characterisation of docking experiments to the assessment of novel ligand–protein complexes. Besides ligand–protein interactions, interactions with DNA and RNA play a vital role in many applications, such as drugs targeting DNA or RNA-binding proteins. To date, over 7% of all 3D structures in the Protein Data Bank include DNA or RNA. Therefore, we extended PLIP to encompass these important molecules. We demonstrate the power of this extension with examples of a cancer drug binding to a DNA target, and an RNA–protein complex central to a neurological disease. PLIP is available online at https://plip-tool.biotec.tu-dresden.de and as open source code. So far, the engine has served over a million queries and the source code has been downloaded several thousand times.
Protein Conformation, RNA-Binding Proteins, Antineoplastic Agents, DNA, Ligands, Response Elements, Web Server Issue, Nucleic Acid Conformation, Phenazines, RNA, Guanosine Triphosphate, RNA Polymerase II, Algorithms, Software
Protein Conformation, RNA-Binding Proteins, Antineoplastic Agents, DNA, Ligands, Response Elements, Web Server Issue, Nucleic Acid Conformation, Phenazines, RNA, Guanosine Triphosphate, RNA Polymerase II, Algorithms, Software
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