Measuring Binding Affinity of Protein−Ligand Interaction Using Spectrophotometry: Binding of Neutral Red to Riboflavin-Binding Protein

2010 ◽  
Vol 87 (8) ◽  
pp. 829-831 ◽  
Author(s):  
Pirom Chenprakhon ◽  
Jeerus Sucharitakul ◽  
Bhinyo Panijpan ◽  
Pimchai Chaiyen
2022 ◽  
Author(s):  
Berly Cárdenas-Pillco ◽  
Lizbeth Campos-Olazaval ◽  
Patricia López ◽  
Jorge Alberto Aguilar-Pineda ◽  
Pamela Lily Gamero-Begazo ◽  
...  

Abstract Colorectal cancer (CRC) disease has a high mortality rate and has recently involved human profilin II (Pfn2), an actin-binding protein, as a promoter of its invasiveness and progression. This work evaluated the binding affinity of oleanolic acid saponin over Pfn2 and its structural stability. QM and MM techniques were applied to perform geometrical optimization and calculation of the reactive sites from oleanolic acid, whereas molecular docking and MD simulations for protein-ligand interaction under physiological conditions. Oleanolic acid saponin showed a high binding affinity to the Pfn2 PLPbinding site. Analysis of the protein-ligand structure suggests saponin as a molecule with high potential for developing new drugs against Pfn2 in colorectal cancer cells.


Author(s):  
Xiaodong Pang ◽  
Linxiang Zhou ◽  
Lily Zhang ◽  
Lina Xu ◽  
Xinyi Zhang

2021 ◽  
Vol 13 (1) ◽  
Author(s):  
Surendra Kumar ◽  
Mi-hyun Kim

AbstractIn drug discovery, rapid and accurate prediction of protein–ligand binding affinities is a pivotal task for lead optimization with acceptable on-target potency as well as pharmacological efficacy. Furthermore, researchers hope for a high correlation between docking score and pose with key interactive residues, although scoring functions as free energy surrogates of protein–ligand complexes have failed to provide collinearity. Recently, various machine learning or deep learning methods have been proposed to overcome the drawbacks of scoring functions. Despite being highly accurate, their featurization process is complex and the meaning of the embedded features cannot directly be interpreted by human recognition without an additional feature analysis. Here, we propose SMPLIP-Score (Substructural Molecular and Protein–Ligand Interaction Pattern Score), a direct interpretable predictor of absolute binding affinity. Our simple featurization embeds the interaction fingerprint pattern on the ligand-binding site environment and molecular fragments of ligands into an input vectorized matrix for learning layers (random forest or deep neural network). Despite their less complex features than other state-of-the-art models, SMPLIP-Score achieved comparable performance, a Pearson’s correlation coefficient up to 0.80, and a root mean square error up to 1.18 in pK units with several benchmark datasets (PDBbind v.2015, Astex Diverse Set, CSAR NRC HiQ, FEP, PDBbind NMR, and CASF-2016). For this model, generality, predictive power, ranking power, and robustness were examined using direct interpretation of feature matrices for specific targets.


Author(s):  
Lennart Gundelach ◽  
Christofer S Tautermann ◽  
Thomas Fox ◽  
Chris-Kriton Skylaris

The accurate prediction of protein-ligand binding free energies with tractable computational methods has the potential to revolutionize drug discovery. Modeling the protein-ligand interaction at a quantum mechanical level, instead of...


RSC Advances ◽  
2019 ◽  
Vol 9 (14) ◽  
pp. 7757-7766 ◽  
Author(s):  
Yao Wu ◽  
Xin-Ying Gao ◽  
Xin-Hui Chen ◽  
Shao-Long Zhang ◽  
Wen-Juan Wang ◽  
...  

Our study gains insight into the development of novel specific ABCG2 inhibitors, and develops a comprehensive computational strategy to understand protein ligand interaction with the help of AlphaSpace, a fragment-centric topographic mapping tool.


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