Literature DB >> 29040920

Ancestry prediction in Singapore population samples using the Illumina ForenSeq kit.

Anantharaman Ramani1, Yongxun Wong2, Si Zhen Tan2, Bing Hong Shue2, Christopher Syn2.   

Abstract

The ability to predict bio-geographic ancestry can be valuable to generate investigative leads towards solving crimes. Ancestry informative marker (AIM) sets include large numbers of SNPs to predict an ancestral population. Massively parallel sequencing has enabled forensic laboratories to genotype a large number of such markers in a single assay. Illumina's ForenSeq DNA Signature Kit includes the ancestry informative SNPs reported by Kidd et al. In this study, the ancestry prediction capabilities of the ForenSeq kit through sequencing on the MiSeq FGx were evaluated in 1030 unrelated Singapore population samples of Chinese, Malay and Indian origin. A total of 59 ancestry SNPs and phenotypic SNPs with AIM properties were selected. The bio-geographic ancestry of the 1030 samples, as predicted by Illumina's ForenSeq Universal Analysis Software (UAS), was determined. 712 of the genotyped samples were used as a training sample set for the generation of an ancestry prediction model using STRUCTURE and Snipper. The performance of the prediction model was tested by both methods with the remaining 318 samples. Ancestry prediction in UAS was able to correctly classify the Singapore Chinese as part of the East Asian cluster, while Indians clustered with Ad-mixed Americans and Malays clustered in-between these two reference populations. Principal component analyses showed that the 59 SNPs were only able to account for 26% of the variation between the Singapore sub-populations. Their discriminatory potential was also found to be lower (GST=0.085) than that reported in ALFRED (FST=0.357). The Snipper algorithm was able to correctly predict bio-geographic ancestry in 91% of Chinese and Indian, and 88% of Malay individuals, while the success rates for the STRUCTURE algorithm were 94% in Chinese, 80% in Malay, and 91% in Indian individuals. Both these algorithms were able to provide admixture proportions when present. Ancestry prediction accuracy (in terms of likelihood ratio) was generally high in the absence of admixture. Misclassification occurred in admixed individuals, who were likely offspring of inter-ethnic marriages, and hence whose self-reported bio-geographic ancestries were dependent on that of their fathers, and in individuals of minority sub-populations with inter-ethnic beliefs. The ancestry prediction capabilities of the 59 SNPs on the ForenSeq kit were reasonably effective in differentiating the Singapore Chinese, Malay and Indian sub-populations, and will be of use for investigative purposes. However, there is potential for more accurate prediction through the evaluation of other AIM sets.
Copyright © 2017 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Bio-geographic ancestry prediction; ForenSeq; Massively parallel sequencing; STRUCTURE; Singapore population; Snipper

Mesh:

Year:  2017        PMID: 29040920     DOI: 10.1016/j.fsigen.2017.08.013

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


  2 in total

1.  Evaluation of the Ion AmpliSeq™ PhenoTrivium Panel: MPS-Based Assay for Ancestry and Phenotype Predictions Challenged by Casework Samples.

Authors:  Marta Diepenbroek; Birgit Bayer; Kristina Schwender; Roberta Schiller; Jessica Lim; Robert Lagacé; Katja Anslinger
Journal:  Genes (Basel)       Date:  2020-11-25       Impact factor: 4.096

2.  Evaluation of a custom QIAseq targeted DNA panel with 164 ancestry informative markers sequenced with the Illumina MiSeq.

Authors:  D Truelsen; A Freire-Aradas; M Nazari; A Aliferi; D Ballard; C Phillips; N Morling; V Pereira; C Børsting
Journal:  Sci Rep       Date:  2021-10-26       Impact factor: 4.379

  2 in total

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