Article ID Journal Published Year Pages File Type
6462714 Forensic Science International: Genetics 2017 12 Pages PDF
Abstract

•59 STRs and 172 SNPs were typed in 725 Caucasian, Southwest Hispanic, African American, and Chinese population samples.•Performance metrics for each marker (i.e., read depth, allele coverage ratios, relative locus performance) were evaluated.•Hardy Weinberg Equilibrium and pairwise linkage disequilibrium were tested.•Biogeographic ancestry and phenotypic profiles were generated.•Random match probabilities for the large marker set were calculated.

The MiSeq FGx Forensic Genomics System (Illumina) enables amplification and massively parallel sequencing of 59 STRs, 94 identity informative SNPs, 54 ancestry informative SNPs, and 24 phenotypic informative SNPs. Allele frequency and population statistics data were generated for the 172 SNP loci included in this panel on four major population groups (Chinese, African Americans, US Caucasians, and Southwest Hispanics). Single-locus and combined random match probability values were generated for the identity informative SNPs. The average combined STR and identity informative SNP random match probabilities (assuming independence) across all four populations were 1.75E-67 and 2.30E-71 with length-based and sequence-based STR alleles, respectively. Ancestry and phenotype predictions were obtained using the ForenSeq™ Universal Analysis System (UAS; Illumina) based on the ancestry informative and phenotype informative SNP profiles generated for each sample. Additionally, performance metrics, including profile completeness, read depth, relative locus performance, and allele coverage ratios, were evaluated and detailed for the 725 samples included in this study. While some genetic markers included in this panel performed notably better than others, performance across populations was generally consistent. The performance and population data included in this study support that accurate and reliable profiles were generated and provide valuable background information for laboratories considering internal validation studies and implementation.

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