PLoS Computational Biology (Dec 2022)

Development of hidden Markov modeling method for molecular orientations and structure estimation from high-speed atomic force microscopy time-series images.

  • Tomonori Ogane,
  • Daisuke Noshiro,
  • Toshio Ando,
  • Atsuko Yamashita,
  • Yuji Sugita,
  • Yasuhiro Matsunaga

DOI
https://doi.org/10.1371/journal.pcbi.1010384
Journal volume & issue
Vol. 18, no. 12
p. e1010384

Abstract

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High-speed atomic force microscopy (HS-AFM) is a powerful technique for capturing the time-resolved behavior of biomolecules. However, structural information in HS-AFM images is limited to the surface geometry of a sample molecule. Inferring latent three-dimensional structures from the surface geometry is thus important for getting more insights into conformational dynamics of a target biomolecule. Existing methods for estimating the structures are based on the rigid-body fitting of candidate structures to each frame of HS-AFM images. Here, we extend the existing frame-by-frame rigid-body fitting analysis to multiple frames to exploit orientational correlations of a sample molecule between adjacent frames in HS-AFM data due to the interaction with the stage. In the method, we treat HS-AFM data as time-series data, and they are analyzed with the hidden Markov modeling. Using simulated HS-AFM images of the taste receptor type 1 as a test case, the proposed method shows a more robust estimation of molecular orientations than the frame-by-frame analysis. The method is applicable in integrative modeling of conformational dynamics using HS-AFM data.