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A Signal Model for Forensic DNA Mixtures

Authors :
Ullrich J. Monich
Catherine M. Grgicak
Muriel Medard
Genevieve Wellner
Ken R. Duffy
Jason Yonglin Wu
Viveck R. Cadambe
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science
Massachusetts Institute of Technology. Research Laboratory of Electronics
Monich, Ullrich
Wu, Yonglin
Medard, Muriel
Source :
MIT web domain, ACSSC
Publication Year :
2014

Abstract

For forensic purposes, short tandem repeat allele signals are used as DNA fingerprints. The interpretation of signals measured from samples has traditionally been conducted by applying thresholding. More quantitative approaches have recently been developed, but not for the purposes of identifying an appropriate signal model. By analyzing data from 643 single person samples, we develop such a signal model. Three standard classes of two-parameter distributions, one symmetric (normal) and two right-skewed (gamma and log-normal), were investigated for their ability to adequately describe the data. Our analysis suggests that additive noise is well modeled via the log-normal distribution class and that variability in peak heights is well described by the gamma distribution class. This is a crucial step towards the development of principled techniques for mixed sample signal deconvolution.<br />United States. Dept. of Justice. National Institute of Justice (2012-DN-BX-K050)

Details

Language :
English
Database :
OpenAIRE
Journal :
MIT web domain, ACSSC
Accession number :
edsair.doi.dedup.....418043909c918e250167e8b60fe70a30