| Literature DB >> 19592680 |
Tamim H Shaikh1, Xiaowu Gai, Juan C Perin, Joseph T Glessner, Hongbo Xie, Kevin Murphy, Ryan O'Hara, Tracy Casalunovo, Laura K Conlin, Monica D'Arcy, Edward C Frackelton, Elizabeth A Geiger, Chad Haldeman-Englert, Marcin Imielinski, Cecilia E Kim, Livija Medne, Kiran Annaiah, Jonathan P Bradfield, Elvira Dabaghyan, Andrew Eckert, Chioma C Onyiah, Svetlana Ostapenko, F George Otieno, Erin Santa, Julie L Shaner, Robert Skraban, Ryan M Smith, Josephine Elia, Elizabeth Goldmuntz, Nancy B Spinner, Elaine H Zackai, Rosetta M Chiavacci, Robert Grundmeier, Eric F Rappaport, Struan F A Grant, Peter S White, Hakon Hakonarson.
Abstract
We present a database of copy number variations (CNVs) detected in 2026 disease-free individuals, using high-density, SNP-based oligonucleotide microarrays. This large cohort, comprised mainly of Caucasians (65.2%) and African-Americans (34.2%), was analyzed for CNVs in a single study using a uniform array platform and computational process. We have catalogued and characterized 54,462 individual CNVs, 77.8% of which were identified in multiple unrelated individuals. These nonunique CNVs mapped to 3272 distinct regions of genomic variation spanning 5.9% of the genome; 51.5% of these were previously unreported, and >85% are rare. Our annotation and analysis confirmed and extended previously reported correlations between CNVs and several genomic features such as repetitive DNA elements, segmental duplications, and genes. We demonstrate the utility of this data set in distinguishing CNVs with pathologic significance from normal variants. Together, this analysis and annotation provides a useful resource to assist with the assessment of CNVs in the contexts of human variation, disease susceptibility, and clinical molecular diagnostics.Entities:
Mesh:
Year: 2009 PMID: 19592680 PMCID: PMC2752118 DOI: 10.1101/gr.083501.108
Source DB: PubMed Journal: Genome Res ISSN: 1088-9051 Impact factor: 9.043