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Population genetics / Genetic genealogy / Data analysis / Classical genetics / Molecular biology / Haplotype / Principal component analysis / Imputation / Single-nucleotide polymorphism / Genetics / Biology / Statistics
Date: 2009-09-20 00:00:00
Population genetics
Genetic genealogy
Data analysis
Classical genetics
Molecular biology
Haplotype
Principal component analysis
Imputation
Single-nucleotide polymorphism
Genetics
Biology
Statistics

Posters IMPUTATION OF MISSING GENOTYPES IN HIGH DENSITY SNP DATA G. Moser1, M.S Khatkar2 and H.W. Raadsma2 The CRC for Innovative Dairy Products 1 Bellbowrie, QLD, 4070, Australia

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