Summary of 131-Wen-NeuronalNucDyn

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Title
Time-lapse images of tracking cell nuclei during movements or the dynamics and movements of GCaMP signals in dataset worm 1a of C. elegans
Description
-
Relase date
2022-03-31
Updated date
-
License
CC BY
Kind
Quantitative data, Image data based on Experiment
Number of Datasets
7 ( Image datasets: 6, Quantitative data datasets: 1 )
Size of Datasets
9.2 GB ( Image datasets: 9.2 GB, Quantitative data datasets: 12.9 MB )

Organism(s)
Caenorhabditis elegans
Strain(s)
AML14 (WormBase ID:WBStrain00000190), KDK54165, KDK54165
Protein tag(s)
GCaMP

Datatype
-
Molecular Function (MF)
-
Biological Process (BP)
nucleus localization
Cellular Component (CC)
nucleus
Biological Imaging Method
time lapse microscopy
X scale
0.16 micrometer/pixel
Y scale
0.16 micrometer/pixel
Z scale
1.5 micrometer/slice, 0.16 micrometer/slice
T scale
1.015 sec per time interval , 1.015 sec per time interval, 2.04 sec per time interval

Image Acquisition
Experiment type
-
Microscope type
-
Acquisition mode
-
Contrast method
-
Microscope model
-
Detector model
-
Objective model
-
Filter set
-

Related paper(s)

Chentao Wen, Takuya Miura, Venkatakaushik Voleti, Kazushi Yamaguchi, Motosuke Tsutsumi, Kei Yamamoto, Kohei Otomo, Yukako Fujie, Takayuki Teramoto, Takeshi Ishihara, Kazuhiro Aoki, Tomomi Nemoto, Elizabeth Mc Hillman, Koutarou D Kimura (2021) 3DeeCellTracker, a deep learning-based pipeline for segmenting and tracking cells in 3D time lapse images., eLife, Volume 10

Published in 2021 Mar 30 (Electronic publication in March 30, 2021, midnight )

(Abstract) Despite recent improvements in microscope technologies, segmenting and tracking cells in three-dimensional time-lapse images (3D + T images) to extract their dynamic positions and activities remains a considerable bottleneck in the field. We developed a deep learning-based software pipeline, 3DeeCellTracker, by integrating multiple existing and new techniques including deep learning for tracking. With only one volume of training data, one initial correction, and a few parameter changes, 3DeeCellTracker successfully segmented and tracked ~100 cells in both semi-immobilized and 'straightened' freely moving worm's brain, in a naturally beating zebrafish heart, and ~1000 cells in a 3D cultured tumor spheroid. While these datasets were imaged with highly divergent optical systems, our method tracked 90-100% of the cells in most cases, which is comparable or superior to previous results. These results suggest that 3DeeCellTracker could pave the way for revealing dynamic cell activities in image datasets that have been difficult to analyze.
(MeSH Terms)

Contact
Chentao Wen , Graduate School of Science, Nagoya City University
Contributors
Chentao WenChentao Wen


Dataset List of 131-Wen-NeuronalNucDyn

#
Dataset ID
Kind
Size
4D View
SSBD:OMERO
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# 6834
Dataset Kind Image data
Dataset Size 1.8 GB
4D view
SSBD:OMERO
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# 6835
Dataset Kind Image data
Dataset Size 2.5 GB
4D view
SSBD:OMERO
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# 6836
Dataset Kind Image data
Dataset Size 378.2 MB
4D view
SSBD:OMERO
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# 6837
Dataset Kind Image data
Dataset Size 1.8 GB
4D view
SSBD:OMERO
Download BDML
Download Image data

# 6838
Dataset Kind Image data
Dataset Size 2.5 GB
4D view
SSBD:OMERO
Download BDML
Download Image data

# 6839
Dataset Kind Image data
Dataset Size 378.2 MB
4D view
SSBD:OMERO
Download BDML
Download Image data

# 10713
Dataset Kind Quantitative data
Dataset Size 12.9 MB
4D view
SSBD:OMERO
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