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Ct3d: tracking microglia motility in 3D using a novel cosegmentation approach.


ABSTRACT: MOTIVATION: Cell tracking is an important method to quantitatively analyze time-lapse microscopy data. While numerous methods and tools exist for tracking cells in 2D time-lapse images, only few and very application-specific tracking tools are available for 3D time-lapse images, which is of high relevance in immunoimaging, in particular for studying the motility of microglia in vivo. RESULTS: We introduce a novel algorithm for tracking cells in 3D time-lapse microscopy data, based on computing cosegmentations between component trees representing individual time frames using the so-called tree-assignments. For the first time, our method allows to track microglia in three dimensional confocal time-lapse microscopy images. We also evaluate our method on synthetically generated data, demonstrating that our algorithm is robust even in the presence of different types of inhomogeneous background noise. AVAILABILITY: Our algorithm is implemented in the ct3d package, which is available under http://www.picb.ac.cn/patterns/Software/ct3d; supplementary videos are available from http://www.picb.ac.cn/patterns/Supplements/ct3d.

SUBMITTER: Xiao H 

PROVIDER: S-EPMC3035800 | biostudies-other | 2011 Feb

REPOSITORIES: biostudies-other

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Ct3d: tracking microglia motility in 3D using a novel cosegmentation approach.

Xiao Hang H   Li Ying Y   Du Jiulin J   Mosig Axel A  

Bioinformatics (Oxford, England) 20101224 4


<h4>Motivation</h4>Cell tracking is an important method to quantitatively analyze time-lapse microscopy data. While numerous methods and tools exist for tracking cells in 2D time-lapse images, only few and very application-specific tracking tools are available for 3D time-lapse images, which is of high relevance in immunoimaging, in particular for studying the motility of microglia in vivo.<h4>Results</h4>We introduce a novel algorithm for tracking cells in 3D time-lapse microscopy data, based o  ...[more]

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