GenoSNP: A variational Bayes within-sample SNP genotyping algorithm that does not require a reference population

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Abstract

Current genotyping algorithms typically call genotypes by clustering allele-specific intensity data on a single nucleotide polymorphism (SNP) by SNP basis. This approach assumes the availability of a large number of control samples that have been sampled on the same array and platform. We have developed a SNP genotyping algorithm for the Illumina Infinium SNP genotyping assay that is entirely within-sample and does not require the need for a population of control samples nor parameters derived from such a population. Our algorithm exhibits high concordance with current methods and >99% call accuracy on HapMap samples. The ability to call genotypes using only within-sample information makes the method computationally light and practical for studies involving small sample sizes and provides a valuable independent quality control metric for other population-based approaches. © The Author 2008. Published by Oxford University Press. All rights reserved.

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Giannoulatou, E., Yau, C., Colella, S., Ragoussis, J., & Holmes, C. C. (2008). GenoSNP: A variational Bayes within-sample SNP genotyping algorithm that does not require a reference population. Bioinformatics, 24(19), 2209–2214. https://doi.org/10.1093/bioinformatics/btn386

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