Title :
Data Mining in situ gene expression patterns at cellular resolution
Author :
Carson, James ; Ju, Tao ; Thaller, Christina ; Bello, M. ; Kakadiaris, I. ; Warren, Joe ; Eichele, Gregor ; Chiu, Wah
Author_Institution :
Nat. Center for Macromolecular Imaging, Baylor Coll. of Medicine, Houston, TX, USA
Abstract :
Non-radioactive in situ hybridization (ISH) is a powerful technique for revealing gene expression in individual cells, the level of detail necessary for investigating how genes control cell type identity, cell differentiation, and cell-cell signaling. Although the availability of robotic ISH enables the expeditious determination of expression patterns for thousands of genes in serially sectioned tissues, a large collection of ISH images is, per se, of limited benefit. However, via accurate detection of expression strength and spatial normalization of expression location across different specimens, ISH images become a minable resource of annotated gene expression capable of advancing functional genomics in a mode similar to DNA sequence databases. We have developed computational methods to automate robotic ISH image annotation and applied these to over 200 genes throughout the postnatal mouse brain. Gene expression strengths were quantified for each cell tissue section images, and these images were subjected to atlas-based segmentation using a series of subdivision mesh maps that comprise our atlas of the postnatal mouse brain. With this common geometric representation of gene expression, patterns are automatically annotated and spatial searches success fully find the genes expressed in a similar fashion to custom query patterns. Cluster analysis of spatially normalized expression patterns identifies potential relationships in gene networks. Annotated gene expression patterns and query interfaces are publicly accessible at wv/w. geneattas. org.
Keywords :
biological techniques; biological tissues; biology computing; brain; cellular biophysics; data mining; genetics; image classification; image segmentation; pattern clustering; statistical analysis; DNA sequence database; atlas-based segmentation; automate robotic in situ hybridization image annotation; cell differentiation; cell-cell signaling; cellular resolution; cluster analysis; data mining; functional genomics; gene expression pattern; mesh maps; postnatal mouse brain; query interface; tissue; Bioinformatics; DNA; Data mining; Gene expression; Genomics; Image databases; Mice; Robots; Sequences; Signal resolution;
Conference_Titel :
Computational Systems Bioinformatics Conference, 2005. Workshops and Poster Abstracts. IEEE
Print_ISBN :
0-7695-2442-7
DOI :
10.1109/CSBW.2005.49