Full metadata
Title
Learning Sparse Representations for Fruit-Fly Gene Expression Pattern Image Annotation and Retrieval
Description
Background
Fruit fly embryogenesis is one of the best understood animal development systems, and the spatiotemporal gene expression dynamics in this process are captured by digital images. Analysis of these high-throughput images will provide novel insights into the functions, interactions, and networks of animal genes governing development. To facilitate comparative analysis, web-based interfaces have been developed to conduct image retrieval based on body part keywords and images. Currently, the keyword annotation of spatiotemporal gene expression patterns is conducted manually. However, this manual practice does not scale with the continuously expanding collection of images. In addition, existing image retrieval systems based on the expression patterns may be made more accurate using keywords.
Results
In this article, we adapt advanced data mining and computer vision techniques to address the key challenges in annotating and retrieving fruit fly gene expression pattern images. To boost the performance of image annotation and retrieval, we propose representations integrating spatial information and sparse features, overcoming the limitations of prior schemes.
Conclusions
We perform systematic experimental studies to evaluate the proposed schemes in comparison with current methods. Experimental results indicate that the integration of spatial information and sparse features lead to consistent performance improvement in image annotation, while for the task of retrieval, sparse features alone yields better results.
Fruit fly embryogenesis is one of the best understood animal development systems, and the spatiotemporal gene expression dynamics in this process are captured by digital images. Analysis of these high-throughput images will provide novel insights into the functions, interactions, and networks of animal genes governing development. To facilitate comparative analysis, web-based interfaces have been developed to conduct image retrieval based on body part keywords and images. Currently, the keyword annotation of spatiotemporal gene expression patterns is conducted manually. However, this manual practice does not scale with the continuously expanding collection of images. In addition, existing image retrieval systems based on the expression patterns may be made more accurate using keywords.
Results
In this article, we adapt advanced data mining and computer vision techniques to address the key challenges in annotating and retrieving fruit fly gene expression pattern images. To boost the performance of image annotation and retrieval, we propose representations integrating spatial information and sparse features, overcoming the limitations of prior schemes.
Conclusions
We perform systematic experimental studies to evaluate the proposed schemes in comparison with current methods. Experimental results indicate that the integration of spatial information and sparse features lead to consistent performance improvement in image annotation, while for the task of retrieval, sparse features alone yields better results.
Date Created
2012-05-23
Contributors
- Yuan, Lei (Author)
- Woodard, Alexander (Author)
- Ji, Shuiwang (Author)
- Jiang, Yuan (Author)
- Zhou, Zhi-Hua (Author)
- Kumar, Sudhir (Author)
- Ye, Jieping (Author)
- Biodesign Institute (Contributor)
- Center for Evolution and Medicine (Contributor)
- Ira A. Fulton Schools of Engineering (Contributor)
- College of Liberal Arts and Sciences (Contributor)
- School of Life Sciences (Contributor)
Resource Type
Extent
15 pages
Language
eng
Copyright Statement
In Copyright
Primary Member of
Identifier
Digital object identifier: 10.1186/1471-2105-13-107
Identifier Type
International standard serial number
Identifier Value
1471-2105
Series
BMC BIOINFORMATICS
Handle
https://hdl.handle.net/2286/R.I.41731
Preferred Citation
Yuan, L., Woodard, A., Ji, S., Jiang, Y., Zhou, Z., Kumar, S., & Ye, J. (2012). Learning Sparse Representations for Fruit-Fly Gene Expression Pattern Image Annotation and Retrieval. BMC Bioinformatics, 13(1), 107. doi:10.1186/1471-2105-13-107
Level of coding
minimal
Cataloging Standards
Note
The electronic version of this article is the complete one and can be found online at: http://bmcbioinformatics.biomedcentral.com/articles/10.1186/1471-2105-13-107
System Created
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System Modified
- 2021-08-16 02:23:30
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