Publication: A SNP panel and online tool for checking genotype concordance through comparing QR codes
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Date
2017
Published Version
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Public Library of Science
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Citation
Du, Y., J. S. Martin, J. McGee, Y. Yang, E. Y. Liu, Y. Sun, M. Geihs, et al. 2017. “A SNP panel and online tool for checking genotype concordance through comparing QR codes.” PLoS ONE 12 (9): e0182438. doi:10.1371/journal.pone.0182438. http://dx.doi.org/10.1371/journal.pone.0182438.
Research Data
Abstract
In the current precision medicine era, more and more samples get genotyped and sequenced. Both researchers and commercial companies expend significant time and resources to reduce the error rate. However, it has been reported that there is a sample mix-up rate of between 0.1% and 1%, not to mention the possibly higher mix-up rate during the down-stream genetic reporting processes. Even on the low end of this estimate, this translates to a significant number of mislabeled samples, especially over the projected one billion people that will be sequenced within the next decade. Here, we first describe a method to identify a small set of Single nucleotide polymorphisms (SNPs) that can uniquely identify a personal genome, which utilizes allele frequencies of five major continental populations reported in the 1000 genomes project and the ExAC Consortium. To make this panel more informative, we added four SNPs that are commonly used to predict ABO blood type, and another two SNPs that are capable of predicting sex. We then implement a web interface (http://qrcme.tech), nicknamed QRC (for QR code based Concordance check), which is capable of extracting the relevant ID SNPs from a raw genetic data, coding its genotype as a quick response (QR) code, and comparing QR codes to report the concordance of underlying genetic datasets. The resulting 80 fingerprinting SNPs represent a significant decrease in complexity and the number of markers used for genetic data labelling and tracking. Our method and web tool is easily accessible to both researchers and the general public who consider the accuracy of complex genetic data as a prerequisite towards precision medicine.
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Keywords
Biology and Life Sciences, Molecular Biology, Molecular Biology Techniques, Genotyping, Genetics, Genomics, Genomic Medicine, Heredity, Genetic Mapping, Variant Genotypes, Genetic Fingerprinting and Footprinting, Genetic Fingerprinting, Computer and Information Sciences, Computer Architecture, User Interfaces, Molecular Genetics, Computer Applications, Web-Based Applications, Anatomy, Body Fluids, Blood, Medicine and Health Sciences, Physiology
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