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Development of a methylation marker set for forensic age estimation using analysis of public methylation data and the Agena Bioscience EpiTYPER system.

Authors :
Freire-Aradas, A.
Phillips, C.
Mosquera-Miguel, A.
Girón-Santamaría, L.
Gómez-Tato, A.
Casares de Cal, M.
Álvarez-Dios, J.
Ansede-Bermejo, J.
Torres-Español, M.
Schneider, P.M.
Pośpiech, E.
Branicki, W.
Carracedo, Á.
Lareu, M.V.
Source :
Forensic Science International: Genetics; Sep2016, Vol. 24, p65-74, 10p
Publication Year :
2016

Abstract

Individual age estimation has the potential to provide key information that could enhance and extend DNA intelligence tools. Following predictive tests for externally visible characteristics developed in recent years, prediction of age could guide police investigations and improve the assessment of age-related phenotype expression patterns such as hair colour changes and early onset of male pattern baldness. DNA methylation at CpG positions has emerged as the most promising DNA tests to ascertain the individual age of the donor of a biological contact trace. Although different methodologies are available to detect DNA methylation, EpiTYPER technology (Agena Bioscience, formerly Sequenom) provides useful characteristics that can be applied as a discovery tool in localized regions of the genome. In our study, a total of twenty-two candidate genomic regions, selected from the assessment of publically available data from the Illumina HumanMethylation 450 BeadChip, had a total of 177 CpG sites with informative methylation patterns that were subsequently investigated in detail. From the methylation analyses made, a novel age prediction model based on a multivariate quantile regression analysis was built using the seven highest age-correlated loci of ELOVL2, ASPA, PDE4C, FHL2, CCDC102B , C1orf132 and chr16:85395429. The detected methylation levels in these loci provide a median absolute age prediction error of ±3.07 years and a percentage of prediction error relative to the age of 6.3%. We report the predictive performance of the developed model using cross validation of a carefully age-graded training set of 725 European individuals and a test set of 52 monozygotic twin pairs. The multivariate quantile regression age predictor, using the CpG sites selected in this study, has been placed in the open-access Snipper forensic classification website. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
18724973
Volume :
24
Database :
Supplemental Index
Journal :
Forensic Science International: Genetics
Publication Type :
Academic Journal
Accession number :
117316622
Full Text :
https://doi.org/10.1016/j.fsigen.2016.06.005