Evaluation of DNA-protein complex structures using the deep learning method.

Journal: Physical chemistry chemical physics : PCCP
Published Date:

Abstract

Biological processes such as transcription, repair, and regulation require interactions between DNA and proteins. To unravel their functions, it is imperative to determine the high-resolution structures of DNA-protein complexes. However, experimental methods for this purpose are costly and technically demanding. Consequently, there is an urgent need for computational techniques to identify the structures of DNA-protein complexes. Despite technological advancements, accurately identifying DNA-protein complexes through computational methods still poses a challenge. Our team has developed a cutting-edge deep-learning approach called DDPScore that assesses DNA-protein complex structures. DDPScore utilizes a 4D convolutional neural network to overcome limited training data. This approach effectively captures local and global features while comprehensively considering the conformational changes arising from the flexibility during the DNA-protein docking process. DDPScore consistently outperformed the available methods in comprehensive DNA-protein complex docking evaluations, even for the flexible docking challenges. DDPScore has a wide range of applications in predicting and designing structures of DNA-protein complexes.

Authors

  • Chengwei Zeng
    Institute of Biophysics and Department of Physics, Central China Normal University, Wuhan 430079, China. yjzhaowh@mail.ccnu.edu.cn.
  • Yiren Jian
    Department of Physics , The George Washington University , Washington , D.C. 20052 , United States.
  • Chen Zhuo
    Institute of Biophysics and Department of Physics, Central China Normal University, Wuhan, 430079, China. yjzhaowh@ccnu.edu.cn.
  • Anbang Li
    Institute of Biophysics and Department of Physics, Central China Normal University, Wuhan, 430079, China. yjzhaowh@ccnu.edu.cn.
  • Chen Zeng
    Department of Physics , The George Washington University , Washington , D.C. 20052 , United States.
  • Yunjie Zhao
    Institute of Biophysics and Department of Physics , Central China Normal University , Wuhan , Hubei 430079 , China.