Tracing Actin Filament Bundles in Three-Dimensional Electron Tomography Density Maps of Hair Cell Stereocilia

Cryo-electron tomography (cryo-ET) is a powerful method of visualizing the three-dimensional organization of supramolecular complexes, such as the cytoskeleton, in their native cell and tissue contexts. Due to its minimal electron dose and reconstruction artifacts arising from the missing wedge duri...

Full description

Bibliographic Details
Main Authors: Salim Sazzed, Junha Song, Julio A. Kovacs, Willy Wriggers, Manfred Auer, Jing He
Format: Article
Language:English
Published: MDPI AG 2018-04-01
Series:Molecules
Subjects:
Online Access:http://www.mdpi.com/1420-3049/23/4/882
id doaj-3ed1f37adc6c465f8d52bff744842a9f
record_format Article
spelling doaj-3ed1f37adc6c465f8d52bff744842a9f2020-11-24T22:49:18ZengMDPI AGMolecules1420-30492018-04-0123488210.3390/molecules23040882molecules23040882Tracing Actin Filament Bundles in Three-Dimensional Electron Tomography Density Maps of Hair Cell StereociliaSalim Sazzed0Junha Song1Julio A. Kovacs2Willy Wriggers3Manfred Auer4Jing He5Department of Computer Science, Old Dominion University, Norfolk, VA 23529, USACell and Tissue Imaging, Molecular Biophysics and Integrated Bioimaging Division, Lawrence Berkeley National Laboratory, Berkeley, CA 94720, USADepartment of Mechanical and Aerospace Engineering, Old Dominion University, Norfolk, VA 23529, USADepartment of Mechanical and Aerospace Engineering, Old Dominion University, Norfolk, VA 23529, USACell and Tissue Imaging, Molecular Biophysics and Integrated Bioimaging Division, Lawrence Berkeley National Laboratory, Berkeley, CA 94720, USADepartment of Computer Science, Old Dominion University, Norfolk, VA 23529, USACryo-electron tomography (cryo-ET) is a powerful method of visualizing the three-dimensional organization of supramolecular complexes, such as the cytoskeleton, in their native cell and tissue contexts. Due to its minimal electron dose and reconstruction artifacts arising from the missing wedge during data collection, cryo-ET typically results in noisy density maps that display anisotropic XY versus Z resolution. Molecular crowding further exacerbates the challenge of automatically detecting supramolecular complexes, such as the actin bundle in hair cell stereocilia. Stereocilia are pivotal to the mechanoelectrical transduction process in inner ear sensory epithelial hair cells. Given the complexity and dense arrangement of actin bundles, traditional approaches to filament detection and tracing have failed in these cases. In this study, we introduce BundleTrac, an effective method to trace hundreds of filaments in a bundle. A comparison between BundleTrac and manually tracing the actin filaments in a stereocilium showed that BundleTrac accurately built 326 of 330 filaments (98.8%), with an overall cross-distance of 1.3 voxels for the 330 filaments. BundleTrac is an effective semi-automatic modeling approach in which a seed point is provided for each filament and the rest of the filament is computationally identified. We also demonstrate the potential of a denoising method that uses a polynomial regression to address the resolution and high-noise anisotropic environment of the density map.http://www.mdpi.com/1420-3049/23/4/882cryo-electron tomographyimagedensityfilamentpattern recognitionsegmentationstereociliaactinmodel buildingvolumetric model
collection DOAJ
language English
format Article
sources DOAJ
author Salim Sazzed
Junha Song
Julio A. Kovacs
Willy Wriggers
Manfred Auer
Jing He
spellingShingle Salim Sazzed
Junha Song
Julio A. Kovacs
Willy Wriggers
Manfred Auer
Jing He
Tracing Actin Filament Bundles in Three-Dimensional Electron Tomography Density Maps of Hair Cell Stereocilia
Molecules
cryo-electron tomography
image
density
filament
pattern recognition
segmentation
stereocilia
actin
model building
volumetric model
author_facet Salim Sazzed
Junha Song
Julio A. Kovacs
Willy Wriggers
Manfred Auer
Jing He
author_sort Salim Sazzed
title Tracing Actin Filament Bundles in Three-Dimensional Electron Tomography Density Maps of Hair Cell Stereocilia
title_short Tracing Actin Filament Bundles in Three-Dimensional Electron Tomography Density Maps of Hair Cell Stereocilia
title_full Tracing Actin Filament Bundles in Three-Dimensional Electron Tomography Density Maps of Hair Cell Stereocilia
title_fullStr Tracing Actin Filament Bundles in Three-Dimensional Electron Tomography Density Maps of Hair Cell Stereocilia
title_full_unstemmed Tracing Actin Filament Bundles in Three-Dimensional Electron Tomography Density Maps of Hair Cell Stereocilia
title_sort tracing actin filament bundles in three-dimensional electron tomography density maps of hair cell stereocilia
publisher MDPI AG
series Molecules
issn 1420-3049
publishDate 2018-04-01
description Cryo-electron tomography (cryo-ET) is a powerful method of visualizing the three-dimensional organization of supramolecular complexes, such as the cytoskeleton, in their native cell and tissue contexts. Due to its minimal electron dose and reconstruction artifacts arising from the missing wedge during data collection, cryo-ET typically results in noisy density maps that display anisotropic XY versus Z resolution. Molecular crowding further exacerbates the challenge of automatically detecting supramolecular complexes, such as the actin bundle in hair cell stereocilia. Stereocilia are pivotal to the mechanoelectrical transduction process in inner ear sensory epithelial hair cells. Given the complexity and dense arrangement of actin bundles, traditional approaches to filament detection and tracing have failed in these cases. In this study, we introduce BundleTrac, an effective method to trace hundreds of filaments in a bundle. A comparison between BundleTrac and manually tracing the actin filaments in a stereocilium showed that BundleTrac accurately built 326 of 330 filaments (98.8%), with an overall cross-distance of 1.3 voxels for the 330 filaments. BundleTrac is an effective semi-automatic modeling approach in which a seed point is provided for each filament and the rest of the filament is computationally identified. We also demonstrate the potential of a denoising method that uses a polynomial regression to address the resolution and high-noise anisotropic environment of the density map.
topic cryo-electron tomography
image
density
filament
pattern recognition
segmentation
stereocilia
actin
model building
volumetric model
url http://www.mdpi.com/1420-3049/23/4/882
work_keys_str_mv AT salimsazzed tracingactinfilamentbundlesinthreedimensionalelectrontomographydensitymapsofhaircellstereocilia
AT junhasong tracingactinfilamentbundlesinthreedimensionalelectrontomographydensitymapsofhaircellstereocilia
AT julioakovacs tracingactinfilamentbundlesinthreedimensionalelectrontomographydensitymapsofhaircellstereocilia
AT willywriggers tracingactinfilamentbundlesinthreedimensionalelectrontomographydensitymapsofhaircellstereocilia
AT manfredauer tracingactinfilamentbundlesinthreedimensionalelectrontomographydensitymapsofhaircellstereocilia
AT jinghe tracingactinfilamentbundlesinthreedimensionalelectrontomographydensitymapsofhaircellstereocilia
_version_ 1725676441421479936