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Copy number variation (CNV) is pervasive in the human genome and can play a causal role in genetic diseases. The functional impact of CNV cannot be fully captured through linkage disequilibrium with SNPs. These observations motivate the development of statistical methods for performing direct CNV association studies. We show through simulation that current tests for CNV association are prone to false-positive associations in the presence of differential errors between cases and controls, especially if quantitative CNV measurements are noisy. We present a statistical framework for performing case-control CNV association studies that applies likelihood ratio testing of quantitative CNV measurements in cases and controls. We show that our methods are robust to differential errors and noisy data and can achieve maximal theoretical power. We illustrate the power of these methods for testing for association with binary and quantitative traits, and have made this software available as the R package CNVtools.

Original publication

DOI

10.1038/ng.206

Type

Journal article

Journal

Nat Genet

Publication Date

10/2008

Volume

40

Pages

1245 - 1252

Keywords

Case-Control Studies, Chromosomes, Human, Cohort Studies, Computer Simulation, DNA, Diabetes Mellitus, Type 1, Gene Dosage, Genome, Human, Haplotypes, Humans, Models, Genetic, Oligonucleotide Array Sequence Analysis, Polymerase Chain Reaction, Polymorphism, Single Nucleotide, Quantitative Trait Loci