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Reconstruction of Cellular Biological Structures from Optical Microscopy Data | IEEE Journals & Magazine | IEEE Xplore

Reconstruction of Cellular Biological Structures from Optical Microscopy Data


Abstract:

Developments in optical microscopy imaging have generated large high-resolution data sets that have spurred medical researchers to conduct investigations into mechanisms ...Show More

Abstract:

Developments in optical microscopy imaging have generated large high-resolution data sets that have spurred medical researchers to conduct investigations into mechanisms of disease, including cancer at cellular and subcellular levels. The work reported here demonstrates that a suitable methodology can be conceived that isolates modality-dependent effects from the larger segmentation task and that 3D reconstructions can be cognizant of shapes as evident in the available 2D planar images. In the current realization, a method based on active geodesic contours is first deployed to counter the ambiguity that exists in separating overlapping cells on the image plane. Later, another segmentation effort based on a variant of Voronoi tessellations improves the delineation of the cell boundaries using a Bayesian formulation. In the next stage, the cells are interpolated across the third dimension thereby mitigating the poor structural correlation that exists in that dimension. We deploy our methods on three separate data sets obtained from light, confocal, and phase-contrast microscopy and validate the results appropriately.
Published in: IEEE Transactions on Visualization and Computer Graphics ( Volume: 14, Issue: 4, July-Aug. 2008)
Page(s): 863 - 876
Date of Publication: 02 February 2008

ISSN Information:

PubMed ID: 18467760
References is not available for this document.

1 Introduction

Inthis work, we focus on the three-dimensional (3D) reconstruction of microscopic cellular structures. A reconstruction of cellular structures when combined with genetic/molecular expressions will further the understanding of disease [2], [19]. More importantly, 3D reconstruction will allow biologists to see beyond the 2D image planes that they are accustomed to.

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References

References is not available for this document.