Understanding the Enzyme ( S )-Norcoclaurine Synthase Promiscuity to Aldehydes and Ketones.
Brunno A SalvattiMarcelo A ChagasPhilipe de Olveira FernandesYan F X LadeiraAline S BozziVeronica S ValadaresAna Paula ValenteAmanda S de MirandaWillian R RochaVinícius Gonçalves MaltarolloAdolfo Henrique MoraesPublished in: Journal of chemical information and modeling (2024)
The ( S )-norcoclaurine synthase from Thalictrum flavum ( Tf NCS) stereoselectively catalyzes the Pictet-Spengler reaction between dopamine and 4-hydroxyphenylacetaldehyde to give ( S )-norcoclaurine. Tf NCS can catalyze the Pictet-Spengler reaction with various aldehydes and ketones, leading to diverse tetrahydroisoquinolines. This substrate promiscuity positions Tf NCS as a highly promising enzyme for synthesizing fine chemicals. Understanding carbonyl-containing substrates' structural and electronic signatures that influence Tf NCS activity can help expand its applications in the synthesis of different compounds and aid in protein optimization strategies. In this study, we investigated the influence of the molecular properties of aldehydes and ketones on their reactivity in the Tf NCS-catalyzed Pictet-Spengler reaction. Initially, we compiled a library of reactive and unreactive compounds from previous publications. We also performed enzymatic assays using nuclear magnetic resonance to identify some reactive and unreactive carbonyl compounds, which were then included in the library. Subsequently, we employed QSAR and DFT calculations to establish correlations between substrate-candidate structures and reactivity. Our findings highlight correlations of structural and stereoelectronic features, including the electrophilicity of the carbonyl group, to the reactivity of aldehydes and ketones toward the Tf NCS-catalyzed Pictet-Spengler reaction. Interestingly, experimental data of seven compounds out of fifty-three did not correlate with the electrophilicity of the carbonyl group. For these seven compounds, we identified unfavorable interactions between them and the Tf NCS. Our results demonstrate the applications of in silico techniques in understanding enzyme promiscuity and specificity, with a particular emphasis on machine learning methodologies, DFT electronic structure calculations, and molecular dynamic (MD) simulations.
Keyphrases
- molecular dynamics
- density functional theory
- molecular docking
- magnetic resonance
- machine learning
- molecular dynamics simulations
- high resolution
- room temperature
- amino acid
- mass spectrometry
- big data
- genome wide
- computed tomography
- small molecule
- electronic health record
- electron transfer
- dna methylation
- artificial intelligence
- structural basis
- hydrogen peroxide
- deep learning
- contrast enhanced
- crystal structure
- high speed