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- Title
AnnotCompute: annotation-based exploration and meta-analysis of genomics experiments.
- Authors
Jie Zheng; Stoyanovich, Julia; Manduchi, Elisabetta; Junmin Liu; Stoeckert Jr, Christian J.
- Abstract
The ever-increasing scale of biological data sets, particularly those arising in the context of high-throughput technologies, requires the development of rich data exploration tools. In this article, we present AnnotCompute, an information discovery platform for repositories of functional genomics experiments such as ArrayExpress. Our system leverages semantic annotations of functional genomics experiments with controlled vocabulary and ontology terms, such as those from the MGED Ontology, to compute conceptual dissimilarities between pairs of experiments. These dissimilarities are then used to support two types of exploratory analysis-clustering and query-by-example. We show that our proposed dissimilarity measures correspond to a user's intuition about conceptual dissimilarity, and can be used to support effective query-by-example. We also evaluate the quality of clustering based on these measures. While AnnotCompute can support a richer data exploration experience, its effectiveness is limited in some cases, due to the quality of available annotations. Nonetheless, tools such as AnnotCompute may provide an incentive for richer annotations of experiments. Code is available for download at http://www.cbil.upenn.edu/downloads/AnnotCompute.
- Subjects
DATA mining; FUNCTIONAL genomics; META-analysis; GENOMICS; GENE expression
- Publication
Database: The Journal of Biological Databases & Curation, 2011, Vol 2011, p1
- ISSN
1758-0463
- Publication type
Article
- DOI
10.1093/database/bar045