Literature DB >> 26851613

An assessment of the information content of likelihood ratios derived from complex mixtures.

Clare D Marsden1, Norah Rudin2, Keith Inman3, Kirk E Lohmueller4.   

Abstract

With the increasing sensitivity of DNA typing methodologies, as well as increasing awareness by law enforcement of the perceived capabilities of DNA typing, complex mixtures consisting of DNA from two or more contributors are increasingly being encountered. However, insufficient research has been conducted to characterize the ability to distinguish a true contributor (TC) from a known non-contributor (KNC) in these complex samples, and under what specific conditions. In order to investigate this question, sets of six 15-locus Caucasian genotype profiles were simulated and used to create mixtures containing 2-5 contributors. Likelihood ratios were computed for various situations, including varying numbers of contributors and unknowns in the evidence profile, as well as comparisons of the evidence profile to TCs and KNCs. This work was intended to illustrate the best-case scenario, in which all alleles from the TC were detected in the simulated evidence samples. Therefore the possibility of drop-out was not modeled in this study. The computer program DNAMIX was then used to compute LRs comparing the evidence profile to TCs and KNCs. This resulted in 140,000 LRs for each of the two scenarios. These complex mixture simulations show that, even when all alleles are detected (i.e. no drop-out), TCs can generate LRs less than 1 across a 15-locus profile. However, this outcome was rare, 7 of 140,000 replicates (0.005%), and associated only with mixtures comprising 5 contributors in which the numerator hypothesis includes one or more unknown contributors. For KNCs, LRs were found to be greater than 1 in a small number of replicates (75 of 140,000 replicates, or 0.05%). These replicates were limited to 4 and 5 person mixtures with 1 or more unknowns in the numerator. Only 5 of these 75 replicates (0.004%) yielded an LR greater than 1,000. Thus, overall, these results imply that the weight of evidence that can be derived from complex mixtures containing up to 5 contributors, under a scenario in which no drop-out is required to explain any of the contributors, is remarkably high. This is a useful benchmark result on top of which to layer the effects of additional factors, such as drop-out, peak height, and other variables.
Copyright © 2016 Elsevier Ireland Ltd. All rights reserved.

Entities:  

Keywords:  Complex mixture; Forensic DNA; Known non-contributor; Likelihood ratio; Simulation; Statistics

Mesh:

Substances:

Year:  2016        PMID: 26851613     DOI: 10.1016/j.fsigen.2016.01.008

Source DB:  PubMed          Journal:  Forensic Sci Int Genet        ISSN: 1872-4973            Impact factor:   4.882


  3 in total

Review 1.  Separation/extraction, detection, and interpretation of DNA mixtures in forensic science (review).

Authors:  Ruiyang Tao; Shouyu Wang; Jiashuo Zhang; Jingyi Zhang; Zihao Yang; Xiang Sheng; Yiping Hou; Suhua Zhang; Chengtao Li
Journal:  Int J Legal Med       Date:  2018-05-25       Impact factor: 2.686

2.  Estimation of the number of contributors to mixed samples of DNA by mitochondrial DNA analyses using massively parallel sequencing.

Authors:  Hiroaki Nakanishi; Koji Fujii; Hiroaki Nakahara; Natsuko Mizuno; Kazumasa Sekiguchi; Katsumi Yoneyama; Masaaki Hara; Aya Takada; Kazuyuki Saito
Journal:  Int J Legal Med       Date:  2019-11-12       Impact factor: 2.686

3.  Estimating individual mtDNA haplotypes in mixed DNA samples by combining MinION and MiSeq.

Authors:  Hiroaki Nakanishi; Katsumi Yoneyama; Masaaki Hara; Aya Takada; Kentaro Sakai; Kazuyuki Saito
Journal:  Int J Legal Med       Date:  2022-01-10       Impact factor: 2.686

  3 in total

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