| Literature DB >> 24273157 |
Stacey Markovic1, Binlong Li, Vivian Pera, Mario Sznaier, Octavia Camps, Mark Niedre.
Abstract
Noninvasive enumeration of rare circulating cell populations in small animals is of great importance in many areas of biomedical research. In this work, we describe a macroscopic fluorescence imaging system and automated computer vision algorithm that allows in vivo detection, enumeration and tracking of circulating fluorescently-labeled cells from multiple large blood vessels in the ear of a mouse. This imaging system uses a 660 nm laser and a high sensitivity electron-multiplied charge coupled device camera (EMCCD) to acquire fluorescence image sequences from relatively large (∼5 × 5 mm(2) ) imaging areas. The primary technical challenge was developing an automated method for identifying and tracking rare cell events in image sequences with substantial autofluorescence and noise content. To achieve this, we developed a two-step image analysis algorithm that first identified cell candidates in individual frames, and then merged cell candidates into tracks by dynamic analysis of image sequences. The second step was critical since it allowed rejection of >97% of false positive cell counts. Overall, our computer vision IVFC (CV-IVFC) approach allows single-cell detection sensitivity at estimated concentrations of 20 cells/mL of peripheral blood. In addition to simple enumeration, the technique recovers the cell's trajectory, which in the future could be used to automatically identify, for example, in vivo homing and docking events.Entities:
Keywords: automated; computer vision; in vivo flow cytometry; rare cell
Mesh:
Year: 2013 PMID: 24273157 PMCID: PMC3934567 DOI: 10.1002/cyto.a.22397
Source DB: PubMed Journal: Cytometry A ISSN: 1552-4922 Impact factor: 4.355