Author
|
Conference
|
Journal
|
Organization
|
Year
|
DOI
Look for results that meet for the following criteria:
since
equal to
before
between
and
Search in all domains
Limit my searches in the following domains
Agriculture Science
Arts & Humanities
Biology
Chemistry
Computer Science
Economics & Business
Engineering
Environmental Sciences
Geosciences
Material Science
Mathematics
Medicine
Physics
Social Science
Keywords
(8)
Blood Cells
Cell Size
Hematopoietic Stem Cell
Optimal Algorithm
Stem Cell Therapy
Template Matching
Tracking System
Stem Cell
Subscribe
Academic
Publications
Stem-Cell Localization: A Deconvolution Problem
Edit
Stem-Cell Localization: A Deconvolution Problem
(
Citations: 2
)
BibTex
|
EndNote
|
RefWorks
Download
Nezamoddin N. Kachouie
,
Paul Fieguth
,
Eric Jervis
Hematopoietic Stem Cells (HSCs) form blood and immune cells and are responsible for the constant renewal of blood. To produce new blood cells, HSCs proliferate and differentiate to different blood cell types continuously during their lifetime. Hence they are of substantial interest in
stem cell therapy
and cancer research. To classify HSCs to different groups, they must be observed/tracked over time and their key features including cell size, shape, and motility must be extracted. The manual tracking is an onerous task and automated methods are in high demand. The first stage of an semi-automatic/automatic
tracking system
is cell segmentation. In our previous work we addressed the cell segmentation/localization problem. Modelling adjacent or splitting cells is very challenging and our previous methods might fail to accurately model a group of adjacent cells or a splitting cell. In this paper we address this issue and propose a deconvolution method to precisely model individual HSCs as well as adjacent (splitting) HSCs. An optimization algorithm is combined with a
template matching
method to segment cell regions and locate the cell centers.
Published in 2007.
DOI:
10.1109/IEMBS.2007.4353597
Cumulative
Annual
View Publication
The following links allow you to view full publications. These links are maintained by other sources not affiliated with Microsoft Academic Search.
(
ieeexplore.ieee.org
)
(
ieeexplore.ieee.org
)
References
(8)
Shape-based image indexing and retrieval for diagnostic pathology
(
Citations: 14
)
Dorin Comaniciu
,
P. Meer
,
D. Foran
Conference:
International Conference on Pattern Recognition - ICPR
, vol. 1, pp. 902-904 vol.1, 1998
Cell Image Segmentation for Diagnostic Pathology
(
Citations: 22
)
Dorin Comaniciu
,
Peter Meer
Quantitative microscopic image analysis by Active Contours
(
Citations: 10
)
V. Meas-yedid
,
F. Cloppet
,
A. Roumier
,
A. Alcover
,
J C Olivo-marin
,
G. Stamon
Minimum error thresholding
(
Citations: 518
)
Josef Kittler
,
John Illingworth
Journal:
Pattern Recognition - PR
, vol. 19, no. 1, pp. 41-47, 1986
A Threshold Selection Method from Gray-Level Histograms
(
Citations: 4300
)
N. Otsu
Published in 1979.
Order by:
Citations
(2)
Automatic Embryonic Stem Cells Detection and Counting Method in Fluorescence Microscopy Images
(
Citations: 1
)
Geisa Martins Faustino
,
Marcelo Gattass
,
Stevens Rehen
,
Carlos José Pereira de Lucena
Conference:
IEEE International Symposium on Biomedical Imaging
, pp. 799-802, 2009
Watershed deconvolution for cell segmentation
(
Citations: 3
)
Nezamoddin N. Kachouie
,
Paul Fieguth
,
Eric Jervis
Published in 2008.