Bound ion effects: Using machine learning method to study the kinesin Ncd's binding with microtubule.

Journal: Biophysical journal
PMID:

Abstract

Drosophila Ncd proteins are motor proteins that play important roles in spindle organization. Ncd and the tubulin dimer are highly charged. Thus, it is crucial to investigate Ncd-tubulin dimer interactions in the presence of ions, especially ions that are bound or restricted at the Ncd-tubulin dimer binding interfaces. To consider the ion effects, widely used implicit solvent models treat ions implicitly in the continuous solvent environment without focusing on the individual ions' effects. But highly charged biomolecules such as the Ncd and tubulin dimer may capture some ions at highly charged regions as bound ions. Such bound ions are restricted to their binding sites; thus, they can be treated as part of the biomolecules. By applying multiscale computational methods, including the machine-learning-based Hybridizing Ions Treatment-2 program, molecular dynamics simulations, DelPhi, and DelPhiForce, we studied the interaction between the Ncd motor domain and the tubulin dimer using a hybrid solvent model, which considers the bound ions explicitly and the other ions implicitly in the solvent environment. To identify the importance of treating bound ions explicitly, we also performed calculations using the implicit solvent model without considering the individual bound ions. We found that the calculations of the electrostatic features differ significantly between those of the hybrid solvent model and the pure implicit solvent model. The analyses show that treating bound ions at highly charged regions explicitly is crucial for electrostatic calculations. This work proposes a machine-learning-based approach to handle the bound ions using the hybrid solvent model. Such an approach is not only capable of handling kinesin-tubulin complexes but is also appropriate for other highly charged biomolecules, such as DNA/RNA, viral capsid proteins, etc.

Authors

  • Wenhan Guo
    College of Physical Science and Technology, Central China Normal University, Hubei, China; Computational Science Program, University of Texas at El Paso, El Paso, Texas.
  • Dan Du
    Dept of Radiology, The Central Hospital of Wuhan, Huazhong University of Science and Technology, Wuhan, China.
  • Houfang Zhang
    College of Physical Science and Technology, Central China Normal University, Hubei, China.
  • Jason E Sanchez
    Computational Science Program, University of Texas at El Paso, El Paso, Texas.
  • Shengjie Sun
    Computational Science Program, University of Texas at El Paso, El Paso, Texas; School of Life Sciences, Central South University, Hunan, China.
  • Wang Xu
    Department of Forensic Science, Soochow University, Suzhou 215000, Jiangsu Province, China.
  • Yunhui Peng
    College of Physical Science and Technology, Central China Normal University, Hubei, China. Electronic address: yunhuipeng@ccnu.edu.cn.
  • Lin Li
    Department of Medicine III, LMU University Hospital, LMU Munich, Munich, Germany.