PUBLICATION
GRAPHIE: graph based histology image explorer
- Authors
- Ding, H., Wang, C., Huang, K., Machiraju, R.
- ID
- ZDB-PUB-170214-125
- Date
- 2015
- Source
- BMC Bioinformatics 16 Suppl 11: S10 (Journal)
- Registered Authors
- Wang, Chao
- Keywords
- none
- MeSH Terms
-
- Algorithms*
- Animals
- Computational Biology/methods*
- Computer Graphics*
- Computer Simulation
- Databases, Factual
- Image Processing, Computer-Assisted/methods*
- Information Storage and Retrieval
- Models, Biological
- Retina/cytology*
- Software*
- User-Computer Interface
- Zebrafish/growth & development*
- PubMed
- 26330277 Full text @ BMC Bioinformatics
Citation
Ding, H., Wang, C., Huang, K., Machiraju, R. (2015) GRAPHIE: graph based histology image explorer. BMC Bioinformatics. 16 Suppl 11:S10.
Abstract
Background Histology images comprise one of the important sources of knowledge for phenotyping studies in systems biology. However, the annotation and analyses of histological data have remained a manual, subjective and relatively low-throughput process.
Results We introduce Graph based Histology Image Explorer (GRAPHIE)-a visual analytics tool to explore, annotate and discover potential relationships in histology image collections within a biologically relevant context. The design of GRAPHIE is guided by domain experts' requirements and well-known InfoVis mantras. By representing each image with informative features and then subsequently visualizing the image collection with a graph, GRAPHIE allows users to effectively explore the image collection. The features were designed to capture localized morphological properties in the given tissue specimen. More importantly, users can perform feature selection in an interactive way to improve the visualization of the image collection and the overall annotation process. Finally, the annotation allows for a better prospective examination of datasets as demonstrated in the users study. Thus, our design of GRAPHIE allows for the users to navigate and explore large collections of histology image datasets.
Conclusions We demonstrated the usefulness of our visual analytics approach through two case studies. Both of the cases showed efficient annotation and analysis of histology image collection.
Genes / Markers
Expression
Phenotype
Mutations / Transgenics
Human Disease / Model
Sequence Targeting Reagents
Fish
Orthology
Engineered Foreign Genes
Mapping