Rank-statistics based enrichment-site prediction algorithm developed for chromatin immunoprecipitation on chip experiments |
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Authors: | Srinka Ghosh Heather A Hirsch Edward Sekinger Kevin Struhl Thomas R Gingeras |
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Affiliation: | (1) Affymetrix Inc, Santa Clara, CA 95051, USA;(2) Dept. Biological Chemistry & Molecular Pharmacology, Harvard Medical School, Boston, MA 02115, USA;(3) Ambion Inc, 2130 Woodward, Austin, TX 78744-1832, USA |
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Abstract: | Background High density oligonucleotide tiling arrays are an effective and powerful platform for conducting unbiased genome-wide studies. The ab initio probe selection method employed in tiling arrays is unbiased, and thus ensures consistent sampling across coding and non-coding regions of the genome. Tiling arrays are increasingly used in chromatin immunoprecipitation (IP) experiments (ChIP on chip). ChIP on chip facilitates the generation of genome-wide maps of in-vivo interactions between DNA-associated proteins including transcription factors and DNA. Analysis of the hybridization of an immunoprecipitated sample to a tiling array facilitates the identification of ChIP-enriched segments of the genome. These enriched segments are putative targets of antibody assayable regulatory elements. The enrichment response is not ubiquitous across the genome. Typically 5 to 10% of tiled probes manifest some significant enrichment. Depending upon the factor being studied, this response can drop to less than 1%. The detection and assessment of significance for interactions that emanate from non-canonical and/or un-annotated regions of the genome is especially challenging. This is the motivation behind the proposed algorithm. |
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