Title of article :
An Energy-Based Three-Dimensional Segmentation Approach for the Quantitative Interpretation of Electron Tomograms
Author/Authors :
A. Bartesaghi، نويسنده , , G. Sapiro، نويسنده , , S. Subramaniam، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
Electron tomography allows for the determination of
the three-dimensional structures of cells and tissues at resolutions
significantly higher than that which is possible with optical microscopy.
Electron tomograms contain, in principle, vast amounts
of information on the locations and architectures of large numbers
of subcellular assemblies and organelles. The development
of reliable quantitative approaches for the analysis of features in
tomograms is an important problem, and a challenging prospect
due to the low signal-to-noise ratios that are inherent to biological
electron microscopic images. This is, in part, a consequence of
the tremendous complexity of biological specimens.We report on a
new method for the automated segmentation of HIV particles and
selected cellular compartments in electron tomograms recorded
from fixed, plastic-embedded sections derived from HIV-infected
human macrophages. Individual features in the tomogram are segmented
using a novel robust algorithm that finds their boundaries
as global minimal surfaces in a metric space defined by image features.
The optimization is carried out in a transformed spherical
domain with the center an interior point of the particle of interest,
providing a proper setting for the fast and accurate minimization of
the segmentation energy. This method provides tools for the semiautomated
detection and statistical evaluation of HIV particles at
different stages of assembly in the cells and presents opportunities
for correlation with biochemical markers of HIV infection. The
segmentation algorithm developed here forms the basis of the automated
analysis of electron tomograms and will be especially useful
given the rapid increases in the rate of data acquisition. It could
also enable studies of much larger data sets, such as those which
might be obtained from the tomographic analysis of HIV-infected
cells from studies of large populations.
Keywords :
Distance functions , electron tomography , energybasedsegmentation , Geodesics , High resolution , minimal surfaces , HIV , volume segmentation.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING