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  ¿î¿µÀÚ 2006-10-16 14:13:27 | Hit : 23655 | Vote : 7962
Subject   [ÀÚ·á] Genetic relatedness analysis: modern data and new challenges
Genetic relatedness analysis: modern data and new challenges

Bruce S.Weir*,Amy D.Anderson*and Amanda B.Hepler ¢Ô

Abstract |

Individuals who belong to the same family or the same population are related because of their shared ancestry. Population and quantitative genetics theory is built with parameters that describe relatedness, and the estimation of these parameters from genetic markers enables progress in fields as disparate as plant breeding, human disease gene mapping and forensic science. The large number of multiallelic microsatellite loci and biallelic SNPs that are now available have markedly increased the precision with which relationships can be estimated, although they have also revealed unexpected levels of genomic heterogeneity of relationship measures.


http://www.nature.com/nrg/journal/v7/n10/pdf/nrg1960.pdf
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