Literature DB >> 17459966

A multi-array multi-SNP genotyping algorithm for Affymetrix SNP microarrays.

Yuanyuan Xiao1, Mark R Segal, Y H Yang, Ru-Fang Yeh.   

Abstract

MOTIVATION: Modern strategies for mapping disease loci require efficient genotyping of a large number of known polymorphic sites in the genome. The sensitive and high-throughput nature of hybridization-based DNA microarray technology provides an ideal platform for such an application by interrogating up to hundreds of thousands of single nucleotide polymorphisms (SNPs) in a single assay. Similar to the development of expression arrays, these genotyping arrays pose many data analytic challenges that are often platform specific. Affymetrix SNP arrays, e.g. use multiple sets of short oligonucleotide probes for each known SNP, and require effective statistical methods to combine these probe intensities in order to generate reliable and accurate genotype calls.
RESULTS: We developed an integrated multi-SNP, multi-array genotype calling algorithm for Affymetrix SNP arrays, MAMS, that combines single-array multi-SNP (SAMS) and multi-array, single-SNP (MASS) calls to improve the accuracy of genotype calls, without the need for training data or computation-intensive normalization procedures as in other multi-array methods. The algorithm uses resampling techniques and model-based clustering to derive single array based genotype calls, which are subsequently refined by competitive genotype calls based on (MASS) clustering. The resampling scheme caps computation for single-array analysis and hence is readily scalable, important in view of expanding numbers of SNPs per array. The MASS update is designed to improve calls for atypical SNPs, harboring allele-imbalanced binding affinities, that are difficult to genotype without information from other arrays. Using a publicly available data set of HapMap samples from Affymetrix, and independent calls by alternative genotyping methods from the HapMap project, we show that our approach performs competitively to existing methods. AVAILABILITY: R functions are available upon request from the authors.

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Year:  2007        PMID: 17459966     DOI: 10.1093/bioinformatics/btm131

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  18 in total

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2.  Smarter clustering methods for SNP genotype calling.

Authors:  Yan Lin; George C Tseng; Soo Yeon Cheong; Lora J H Bean; Stephanie L Sherman; Eleanor Feingold
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3.  R/Bioconductor software for Illumina's Infinium whole-genome genotyping BeadChips.

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4.  PanCGH: a genotype-calling algorithm for pangenome CGH data.

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Review 5.  Cancer gene discovery in mouse and man.

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6.  A model of higher accuracy for the individual haplotyping problem based on weighted SNP fragments and genotype with errors.

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7.  PICNIC: an algorithm to predict absolute allelic copy number variation with microarray cancer data.

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8.  Automated SNP genotype clustering algorithm to improve data completeness in high-throughput SNP genotyping datasets from custom arrays.

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9.  Hybridization modeling of oligonucleotide SNP arrays for accurate DNA copy number estimation.

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Journal:  Nucleic Acids Res       Date:  2009-07-07       Impact factor: 16.971

10.  Integrated study of copy number states and genotype calls using high-density SNP arrays.

Authors:  Wei Sun; Fred A Wright; Zhengzheng Tang; Silje H Nordgard; Peter Van Loo; Tianwei Yu; Vessela N Kristensen; Charles M Perou
Journal:  Nucleic Acids Res       Date:  2009-07-06       Impact factor: 16.971

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