Autor: |
Dong HC; Institute of Atomic and Molecular Sciences, Academia Sinica, Taipei, 10617, Taiwan. jlkuo@gate.sinica.edu.tw.; Molecular Science and Technology Program, Taiwan International Graduate Program, Academia Sinica, Taipei, 11529, Taiwan.; International Graduate Program of Molecular Science and Technology (NTU-MST), National Taiwan University, Taipei 10617, Taiwan., Hsu PJ; Institute of Atomic and Molecular Sciences, Academia Sinica, Taipei, 10617, Taiwan. jlkuo@gate.sinica.edu.tw., Kuo JL; Institute of Atomic and Molecular Sciences, Academia Sinica, Taipei, 10617, Taiwan. jlkuo@gate.sinica.edu.tw.; Molecular Science and Technology Program, Taiwan International Graduate Program, Academia Sinica, Taipei, 11529, Taiwan.; International Graduate Program of Molecular Science and Technology (NTU-MST), National Taiwan University, Taipei 10617, Taiwan.; Department of Chemistry, National Tsing Hua University, Hsinchu 30013, Taiwan. |
Abstrakt: |
In the last ten years, combinations of state-of-the-art gas-phase spectroscopies and quantum chemistry calculations have suggested several intuitive trends in the structure of small polypeptides that may not hold true. For example, the preference for the cis form of the peptide bond and multiple protonated sites was proposed by comparing experimental spectra with low-energy minima obtained from limited structural sampling using various density functional theory methods. For understanding the structures of polypeptides, extensive sampling of their configurational space with high-accuracy computational methods is required. In this work, we demonstrated the use of deep-learning neural network potential (DL-NNP) to assist in exploring the structure and energy landscape of di-, tri-, and tetra-glycine with the accuracy of high-level quantum chemistry methods, and low-energy conformers of small polypeptides can be efficiently located. We hope that the structures of these polypeptides we found and our preliminary analysis will stimulate further experimental investigations. |