QuantiSNP: an Objective Bayes Hidden-Markov Model to detect and accurately map copy number variation using SNP genotyping data

Stefano Colella(Genomics (United Kingdom)), Christopher Yau(Centre for Human Genetics), Jennifer M. Taylor(Centre for Human Genetics), Ghazala Mirza(Centre for Human Genetics), Helen Butler(Centre for Human Genetics), Penny Clouston(Centre for Human Genetics), Anne S. Bassett(Centre for Human Genetics), A Seller(Centre for Human Genetics), Chris Holmes(Centre for Human Genetics), Jiannis Ragoussis(Centre for Human Genetics)
Nucleic Acids Research
March 1, 2007
Cited by 625Open Access
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Abstract

Array-based technologies have been used to detect chromosomal copy number changes (aneuploidies) in the human genome. Recent studies identified numerous copy number variants (CNV) and some are common polymorphisms that may contribute to disease susceptibility. We developed, and experimentally validated, a novel computational framework (QuantiSNP) for detecting regions of copy number variation from BeadArray SNP genotyping data using an Objective Bayes Hidden-Markov Model (OB-HMM). Objective Bayes measures are used to set certain hyperparameters in the priors using a novel re-sampling framework to calibrate the model to a fixed Type I (false positive) error rate. Other parameters are set via maximum marginal likelihood to prior training data of known structure. QuantiSNP provides probabilistic quantification of state classifications and significantly improves the accuracy of segmental aneuploidy identification and mapping, relative to existing analytical tools (Beadstudio, Illumina), as demonstrated by validation of breakpoint boundaries. QuantiSNP identified both novel and validated CNVs. QuantiSNP was developed using BeadArray SNP data but it can be adapted to other platforms and we believe that the OB-HMM framework has widespread applicability in genomic research. In conclusion, QuantiSNP is a novel algorithm for high-resolution CNV/aneuploidy detection with application to clinical genetics, cancer and disease association studies.


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