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A fast and accurate method to detect allelic genomic imbalances underlying mosaic rearrangements using SNP array data

  1. Author:
    Gonzalez, J. R.
    Rodriguez-Santiago, B.
    Caceres, A.
    Pique-Regi, R.
    Rothman, N.
    Chanock, S. J.
    Armengol, L.
    Perez-Jurado, L. A.
  2. Author Address

    [Gonzalez, JR; Caceres, A] Ctr Res Environm Epidemiol CREAL, Barcelona 08003, Spain [Gonzalez, JR; Caceres, A] IMIM, Barcelona 08003, Spain [Rodriguez-Santiago, B; Perez-Jurado, LA] UPF, Dept Ciencies Expt & Salut, Barcelona 08003, Spain [Pique-Regi, R] Univ Chicago, Dept Human Genet, Chicago, IL 60637 USA [Rothman, N; Chanock, SJ] NCI, Div Canc Epidemiol & Genet, Rockville, MD 20852 USA [Chanock, SJ] SAIC Frederick, Core Genotyping Facil, Frederick, MD 21702 USA [Armengol, L] Quantitat Genom Med Labs Ltd qGenom, Barcelona 08003, Spain;Gonzalez, JR (reprint author), Ctr Res Environm Epidemiol CREAL, Doctor Aiguader 88, Barcelona 08003, Spain;jrgonzalez@creal.cat
    1. Year: 2011
    2. Date: May
  1. Journal: Bmc Bioinformatics
    1. 12
    2. Pages: 11
  2. Type of Article: Article
  3. Article Number: 166
  4. ISSN: 1471-2105
  1. Abstract:

    Background: Mosaicism for copy number and copy neutral chromosomal rearrangements has been recently identified as a relatively common source of genetic variation in the normal population. However its prevalence is poorly defined since it has been only studied systematically in one large-scale study and by using non optimal adhoc SNP array data analysis tools, uncovering rather large alterations (> 1 Mb) and affecting a high proportion of cells. Here we propose a novel methodology, Mosaic Alteration Detection-MAD, by providing a software tool that is effective for capturing previously described alterations as wells as new variants that are smaller in size and/or affecting a low percentage of cells. Results: The developed method identified all previously known mosaic abnormalities reported in SNP array data obtained from controls, bladder cancer and HapMap individuals. In addition MAD tool was able to detect new mosaic variants not reported before that were smaller in size and with lower percentage of cells affected. The performance of the tool was analysed by studying simulated data for different scenarios. Our method showed high sensitivity and specificity for all assessed scenarios. Conclusions: The tool presented here has the ability to identify mosaic abnormalities with high sensitivity and specificity. Our results confirm the lack of sensitivity of former methods by identifying new mosaic variants not reported in previously utilised datasets. Our work suggests that the prevalence of mosaic alterations could be higher than initially thought. The use of appropriate SNP array data analysis methods would help in defining the human genome mosaic map.

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External Sources

  1. DOI: 10.1186/1471-2105-12-166
  2. WOS: 000291720700002

Library Notes

  1. Fiscal Year: FY2010-2011
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