Automated time-lapse microscopy imaging provides an important and revolutionary method to study dynamic cellular processes and to measure drug response in a dynamic fashion. The availability of fluorescent protein markers makes it possible to monitor mitosis and apoptosis in living cells over extended periods of imaging. Nevertheless, there are significant informatics challenges in processing, modeling, managing, and analyzing large volumes of cellular images generated by time-lapse microscopy in studying dynamic cellular information. The existing bioimaging tools are extremely limited in their scope and capacity for image analysis for live-cell imaging, particularly in respect of time-lapse and high throughput data. Currently, the scientists have to rely on slow, manual analysis to extract information. Thus, image informatics has become the rate-limiting factor in dynamic molecular and cellular imaging studies. This proposal seeks to fill that gap by providing an advanced software package, dynamic cellular image quantitator (D-CELLIQ), with increased capacity to identify and track objects and to analyze and quantitate object features extracted from the large amounts of images generated by time-lapse microscopy, providing a complete picture of the evolution of the features and behaviors of cells in time and space. The hypothesis is that the D-CELLIQ system will be useful to measure cell cycle progression, mitotic timing and initiation of apoptosis in cells observed by time-lapse imaging and to characterize the mechanism of action of novel antimitotic compounds. To test this hypothesis, we aim to define the integrated data processing pipeline and architecture of D-CELLIQ, develop new cellular image analysis and computational modeling tools, and evaluate the utility of the D-CELLIQ with a set of well defined, biological-driven experiments. There are currently no software packages that can perform such analyses, and we therefore plan to make this package freely available to biomedical community.

Agency
National Institute of Health (NIH)
Institute
National Library of Medicine (NLM)
Type
Research Project (R01)
Project #
5R01LM008696-03
Application #
7240574
Study Section
Special Emphasis Panel (ZLM1-HS-Z (J2))
Program Officer
Sim, Hua-Chuan
Project Start
2005-06-01
Project End
2007-06-30
Budget Start
2007-06-01
Budget End
2007-06-30
Support Year
3
Fiscal Year
2007
Total Cost
$1
Indirect Cost
Name
Brigham and Women's Hospital
Department
Type
DUNS #
030811269
City
Boston
State
MA
Country
United States
Zip Code
02115
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Sigoillot, Frederic D; Huckins, Jeremy F; Li, Fuhai et al. (2011) A time-series method for automated measurement of changes in mitotic and interphase duration from time-lapse movies. PLoS One 6:e25511
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Cheng, Jie; Zhou, Xiaobo; Miller, Eric L et al. (2010) Oriented Markov random field based dendritic spine segmentation for fluorescence microscopy images. Neuroinformatics 8:157-70
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Li, Fuhai; Zhou, Xiaobo; Zhao, Hong et al. (2009) Cell segmentation using front vector flow guided active contours. Med Image Comput Comput Assist Interv 12:609-16
Zhou, Xiaobo; Li, Fuhai; Yan, Jun et al. (2009) A novel cell segmentation method and cell phase identification using Markov model. IEEE Trans Inf Technol Biomed 13:152-7
Peng, Huiming; Zhou, Xiaobo; Li, Fuhai et al. (2009) INTEGRATING MULTI-SCALE BLOB/CURVILINEAR DETECTOR TECHNIQUES AND MULTI-LEVEL SETS FOR AUTOMATED SEGMENTATION OF STEM CELL IMAGES. Proc IEEE Int Symp Biomed Imaging 2009:1362-1365

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