Efficient globally optimal segmentation of cells in fluorescence microscopy images using level sets and convex energy functionals
- PMID: 22795525
- DOI: 10.1016/j.media.2012.05.012
Efficient globally optimal segmentation of cells in fluorescence microscopy images using level sets and convex energy functionals
Abstract
In high-throughput applications, accurate and efficient segmentation of cells in fluorescence microscopy images is of central importance for the quantification of protein expression and the understanding of cell function. We propose an approach for segmenting cell nuclei which is based on active contours using level sets and convex energy functionals. Compared to previous work, our approach determines the global solution. Thus, the approach does not suffer from local minima and the segmentation result does not depend on the initialization. We consider three different well-known energy functionals for active contour-based segmentation and introduce convex formulations of these functionals. We also suggest a numeric approach for efficiently computing the solution. The performance of our approach has been evaluated using fluorescence microscopy images from different experiments comprising different cell types. We have also performed a quantitative comparison with previous segmentation approaches.
Copyright © 2012 Elsevier B.V. All rights reserved.
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