A first-principles exploration of the conformational space of sodiated di-saccharides assisted by semi-empirical methods and neural network potentials.
Huu Trong PhanPei-Kang TsouPo-Jen HsuJer-Lai KuoPublished in: Physical chemistry chemical physics : PCCP (2024)
Previous exploration of the conformational space of sodiated mono-saccharides using a random search algorithm leads to ∼10 3 structurally distinct conformers covering an energy range of ∼150 kJ mol -1 . Thus, it is reasonable to expect that the number of distinct conformers for a given disaccharide would be on the order of 10 6 . Efficient identification of distinct conformers at the first-principles level has been demonstrated with the assistance of neural network potential (NNP) with an accuracy of ∼1 kJ mol -1 compared to DFT. Leveraging a local minima database of neutral and sodiated glucose (Glc), we develop algorithms to systematically explore the conformation landscape of 19 Glc-based sodiated disaccharides. To accelerate the exploration, the NNP method is implemented. The NNP achieves an accuracy of ∼2.3 kJ mol -1 compared to DFT, offering a comparable quality to that of DFT. Through a multi-model approach integrating DFTB3, NNP and DFT, we can rapidly locate low-energy disaccharide conformers at the first-principles level. The methodology we show here can be used to efficiently explore the potential energy landscape of any di-saccharides when first-principles accuracy is required.
Keyphrases
- neural network
- density functional theory
- molecular docking
- molecular dynamics
- molecular dynamics simulations
- crystal structure
- machine learning
- single molecule
- single cell
- deep learning
- biofilm formation
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- staphylococcus aureus
- blood glucose
- pseudomonas aeruginosa
- quality improvement
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