| Literature DB >> 24298393 |
Eunice Wu1, Yan A Su, Eric Billings, Bernard R Brooks, Xiongwu Wu.
Abstract
High throughput microarray analysis has great potential in scientific research, disease diagnosis, and drug discovery. A major hurdle toward high throughput microarray analysis is the time and effort needed to accurately locate gene spots in microarray images. An automatic microarray image processor will allow accurate and efficient determination of spot locations and sizes so that gene expression information can be reliably extracted in a high throughput manner. Current microarray image processing tools require intensive manual operations in addition to the input of grid parameters to correctly and accurately identify gene spots. This work developed a method, herein called auto-spot, to automate the spot identification process. Through a series of correlation and convolution operations, as well as pixel manipulations, this method makes spot identification an automatic and accurate process. Testing with real microarray images has demonstrated that this method is capable of automatically extracting subgrids from microarray images and determining spot locations and sizes within each subgrid, regardless of variations in array patterns and background noises. With this method, we are one step closer to the goal of high throughput microarray analysis.Entities:
Year: 2011 PMID: 24298393 PMCID: PMC3843961 DOI: 10.4172/2155-9538.S5-005
Source DB: PubMed Journal: J Bioeng Biomed Sci ISSN: 2155-9538