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Keywords
(15)
3d imaging
Cell Cycle
Cross Validation
Embryos
Error Correction
Gene Expression
Graphical Interface
Image Analysis
Image Annotation
Image Sampling
Machine Learning
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Using machine learning to speed up manual image annotation: application to a 3D imaging protocol for measuring single cell gene expression in the developing C. elegans embryo
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Using machine learning to speed up manual image annotation: application to a 3D imaging protocol for measuring single cell gene expression in the developing C. elegans embryo
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Zafer Aydin
,
John I. Murray
,
Robert H. Waterston
,
William Stafford Noble
Background:
Image analysis
is an essential component in many biological experiments that study gene expression,
cell cycle
progression, and protein localization. A protocol for tracking the expression of individual C. elegans genes was developed that collects image samples of a developing embryo by 3-D time lapse microscopy. In this protocol, a program called StarryNite performs the automatic recognition of fluorescently labeled cells and traces their lineage. However, due to the amount of noise present in the data and due to the challenges introduced by increasing number of cells in later stages of development, this program is not error free. In the current version, the
error correction
(i.e., editing) is performed manually using a
graphical interface
tool named AceTree, which is specifically developed for this task. For a single experiment, this manual annotation task takes several hours. Results: In this paper, we reduce the time required to correct errors made by StarryNite. We target one of the most frequent error types (movements annotated as divisions) and train a
support vector machine
(SVM) classifier to decide whether a division call made by StarryNite is correct or not. We show, via cross-validation experiments on several benchmark data sets, that the SVM successfully identifies this type of error significantly. A new version of StarryNite that includes the trained SVM classifier is available at http://starrynite.sourceforge.net. Conclusions: We demonstrate the utility of a
machine learning
approach to error annotation for StarryNite. In the process, we also provide some general methodologies for developing and validating a classifier with respect to a given
pattern recognition
task.
Journal:
BMC Bioinformatics
, vol. 11, no. 1, pp. 84-13, 2010
DOI:
10.1186/1471-2105-11-84
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References
(19)
CellProfiler Analyst: data exploration and analysis software for complex image-based screens
(
Citations: 18
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Thouis R. Jones
,
In Han Kang
,
Douglas B. Wheeler
,
Robert A. Lindquist
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Adam Papallo
,
David M. Sabatini
,
Polina Golland
,
Anne E. Carpenter
Journal:
BMC Bioinformatics
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(
Citations: 64
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Xiaowei Chen
,
Xiaobo Zhou
,
Stephen T. C. Wong
,
X. Chen
,
X. Zhouare
Conference:
Biomedical Engineering - BioMED
, 2006
Automated cell lineage tracing in Caenorhabditis elegans
(
Citations: 54
)
Z. Bao
Journal:
Proceedings of The National Academy of Sciences - PNAS
, vol. 103, no. 8, pp. 2707-2712, 2006
Detection of nuclei in 4D Nomarski DIC microscope images of early Caenorhabditis elegans embryos using local image entropy and object tracking
(
Citations: 11
)
Shugo Hamahashi
,
Shuichi Onami
,
Hiroaki Kitano
Journal:
BMC Bioinformatics
, vol. 6, no. 1, pp. 125-15, 2005
Novel cell segmentation and online SVM for cell cycle phase identification in automated microscopy
(
Citations: 22
)
Meng Wang
,
Xiaobo Zhou
,
Fuhai Li
,
Jeremy Huckins
,
Randall W. King
,
Stephen T. C. Wong
Journal:
Bioinformatics/computer Applications in The Biosciences - BIOINFORMATICS
, vol. 24, no. 1, pp. 94-101, 2008