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DNA Identification: Mixture Weight & Inference
Mark W Perlin, PhD, MD, PhD Cybergenetics, Pittsburgh, PA TrueAllele® Lectures Fall, 2010 Cybergenetics © Cybergenetics ©
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Mixture Weight: Uncertain Quantity
Infer mixture weight from STR experiments: • quantitative peak data • contributor genotypes Pr(W=w | data, G1=g1, G2=g2, …) hierarchical Bayesian model Perlin MW, Legler MM, Spencer CE, Smith JL, Allan WP, Belrose JL, Duceman BW. Validating TrueAllele® DNA mixture interpretation. Journal of Forensic Sciences. 2011;56(November):in press. Cybergenetics ©
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Mixture Weight Model kth contributor experiment data dk,1 dk,2 … dk,N
locus weights Wk,1 Wk,2 … Wk,N template weight Wk prior probability W0 Cybergenetics ©
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Experiment Estimate sum of peak heights from kth contributor wk =
from all contributors Cybergenetics ©
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D16S539 Cybergenetics ©
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Three Alleles Allele 11 12 13 Quantity 500 6,750 250 11 12 13
Cybergenetics ©
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Experiment Estimate Allele 11 12 13 Quantity 500 6,750 250 500 + 250
, 750 11 12 13 = = 10% 7,500 Cybergenetics ©
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D7S820 Cybergenetics ©
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Four Alleles Allele 8 10 12 13 Quantity 4,000 250 3,000 8 10 12 13
Cybergenetics ©
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Experiment Estimate Allele 8 10 12 13 Quantity 4,000 250 3,000
4, , 8 10 12 13 500 = = 6.7% 7,500 Cybergenetics ©
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Overlapping Alleles Cybergenetics ©
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Template Average mean variance Cybergenetics ©
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Template Mixture Weight Probability Distribution
mean = 6.7% standard deviation = 0.9% Cybergenetics ©
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Central Limit Theorem • more data experiments for a template
provide greater mixture weight precision • double the precision by doing four times the number of experiments • combine evidence from multiple experiments to obtain a more informative result Cybergenetics ©
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Probability Solution interacting random variables w | d, g1, g2, …
g1 | d, g2, w, … g2 | d, g1, w, … zi | d, g1, g2, w, … find probability distributions by iterative sampling Gelfand, A. and Smith, A. (1990). Sampling based approaches to calculating marginal densities. J. American Statist. Assoc., 85: Cybergenetics ©
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Markov Chain Monte Carlo
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Prior Probability genotype mixture weight DNA quantity variance
parameters
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Joint Likelihood Function
data pattern variation
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Posterior Probability
genotype mixture weight data variation
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Generally Accepted Method
mixture weight genotype James Curran. A MCMC method for resolving two person mixtures Science & Justice. 2008;48(4): data variation
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Hierarchical Bayesian Model with MCMC Solution
• standard approach in modern science • describes uncertainty using probability • the "new calculus" • replaces hard calculus with easy computing • can solve virtually any problem • well-suited to interpreting DNA evidence
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