There is growing interest in developing additional DNA typing techniques to provide better investigative leads in forensic analysis. These include inference of genetic ancestry and prediction of common physical characteristics of DNA donors. To date, forensic ancestry analysis has centered on population-divergent SNPs but these binary loci cannot reliably detect DNA mixtures, common in forensic samples. Furthermore, STR genotypes, forming the principal DNA profiling system, are not routinely combined with forensic SNPs to strengthen frequency data available for ancestry inference. We report development of a 12-STR multiplex composed of ancestry informative marker STRs (AIM-STRs) selected from 434 tetranucleotide repeat loci. We adapted our online Bayesian classifier for AIM-SNPs: Snipper, to handle multiallele STR data using frequency-based training sets. We assessed the ability of the 12-plex AIM-STRs to differentiate CEPH Human Genome Diversity Panel populations, plus their informativeness combined with established forensic STRs and AIM-SNPs. We found combining STRs and SNPs improves the success rate of ancestry assignments while providing a reliable mixture detection system lacking from SNP analysis alone. As the 12 STRs generally show a broad range of alleles in all populations, they provide highly informative supplementary STRs for extended relationship testing and identification of missing persons with incomplete reference pedigrees. Lastly, mixed marker approaches (combining STRs with binary loci) for simple ancestry inference tests beyond forensic analysis bring advantages and we discuss the genotyping options available.
The field of research and development of forensic STR genotyping remains active, innovative, and focused on continuous improvements. A series of recent developments including the introduction of a sixth dye have brought expanded STR multiplex sizes while maintaining sensitivity to typical forensic DNA. New supplementary kits complimenting the core STRs have also helped improve analysis of challenging identification cases such as distant pairwise relationships in deficient pedigrees. This article gives an overview of several recent key developments in forensic STR analysis: availability of expanded core STR kits and supplementary STRs, short-amplicon mini-STRs offering practical options for highly degraded DNA, Y-STR enhancements made from the identification of rapidly mutating loci, and enhanced analysis of genetic ancestry by analyzing 32-STR profiles with a Bayesian forensic classifier originally developed for SNP population data. As well as providing scope for genotyping larger numbers of STRs optimized for forensic applications, the launch of compact next-generation sequencing systems provides considerable potential for genotyping the sizeable proportion of nucleotide variation existing in forensic STRs, which currently escapes detection with CE.
Supplementary short tandem repeats (STRs) can be added to forensic DNA analyses when core markers fail to provide sufficient discrimination power in identity and relationship testing. We combined D6S1043 and Penta B with Promega's PowerPlex CS7 supplementary STR kit, comprising Pentas D and E plus LPL, F13A01, FES/FPS, F13B, and Penta C. The nine STRs were typed in 941 individuals from 51 diverse populations of the CEPH Human Genome Diversity Panel (HGDP-CEPH), and we report allele frequency estimates plus rare alleles identified. Both Penta B and D6S1043 show highly informative variation in all populations, exceeding most CS7 STRs and raising cumulative random match probabilities by at least two orders of magnitude. However, Penta B genotype distributions show an excess of homozygotes across all HGDP-CEPH population groups indicating likely allele dropout from uncharted SNP or Indel variation at the primer sites chosen to type this STR. The first sequence analysis of common regular and rare intermediate D6S1043 alleles is reported. D6S1043 .3 intermediate alleles were found to occur at a high frequency in Native Americans, providing scope for differentiation of this group.
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