| Literature DB >> 24974040 |
Denis Tsygankov1, Pei-Hsuan Chu1, Hsin Chen2, Timothy C Elston1, Klaus M Hahn3.
Abstract
Understanding the heterogeneous dynamics of cellular processes requires not only tools to visualize molecular behavior but also versatile approaches to extract and analyze the information contained in live-cell movies of many cells. Automated identification and tracking of cellular features enable thorough and consistent comparative analyses in a high-throughput manner. Here, we present tools for two challenging problems in computational image analysis: (1) classification of motion for cells with complex shapes and dynamics and (2) segmentation of clustered cells and quantification of intracellular protein distributions based on a single fluorescence channel. We describe these methods and user-friendly software(1) (MATLAB applications with graphical user interfaces) so these tools can be readily applied without an extensive knowledge of computational techniques.Entities:
Keywords: Cell segmentation; Cell tracking; Image quantification; Motion classification; User interface
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Year: 2014 PMID: 24974040 PMCID: PMC4504218 DOI: 10.1016/B978-0-12-420138-5.00022-7
Source DB: PubMed Journal: Methods Cell Biol ISSN: 0091-679X Impact factor: 1.441