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Graph identification of proteins in tomograms (GRIP-Tomo)

ORAL

Abstract

In this study, we present a method of pattern mining based on network theory that enables the identification of protein structures or complexes from synthetic volume densities, without the knowledge of predefined templates or human biases for refinement. We hypothesized that the topological connectivity of protein structures is invariant, and they are distinctive for the purpose of protein identification from distorted data presented in volume densities. Three-dimensional densities of a protein or a complex from simulated tomographic volumes were transformed into mathematical graphs as observables. We systematically introduced data distortion or defects such as missing fullness of data, the tumbling effect, and the missing wedge effect into the simulated volumes, and varied the distance cutoffs in pixels to capture the varying connectivity between the density cluster centroids in the presence of defects. A similarity score between the graphs from the simulated volumes and the graphs transformed from the physical protein structures in point data was calculated by comparing their network theory order parameters including node degrees, betweenness centrality, and graph densities. By capturing the essential topological features defining the heterogeneous morphologies of a network, we were able to accurately identify proteins and homo-multimeric complexes from ten topologically distinctive samples without noise. Our approach empowers future developments to provide pattern mining with interpretability that classifies single-domain protein native topologies as well as distinct single-domain proteins from multimeric complexes within noisy volumes.

Publication: George, A. D. & Cheung, M. S., "Graph identification of proteins in tomographs (GRIP-Tomo)," Provisional Application No. 63/353,974, 2022.<br>A.D. George, D. Kim, T.H. Moser, I.T. Gildea. J.E. Evans, M.S. Cheung, "Graph identification of proteins in tomographs (GRIP-Tomo)

Presenters

  • Margaret S Cheung

    PNNL, Pacific Northwest National Laboratory

Authors

  • Margaret S Cheung

    PNNL, Pacific Northwest National Laboratory

  • August George

    Oregon Health and Science University

  • Doonam Kim

    Pacific Northwest National Laboratory

  • Trevor H Moser

    Pacific Northwest National Laboratory

  • James E Evans

    Pacific Northwest National Laboratory

  • Ian Gildea

    Pacific Northwest National Laboratory