Wang, 2012 - Google Patents
Computationally efficient sibship and parentage assignment from multilocus marker dataWang, 2012
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- 7832263638684454735
- Author
- Wang J
- Publication year
- Publication venue
- Genetics
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Quite a few methods have been proposed to infer sibship and parentage among individuals from their multilocus marker genotypes. They are all based on Mendelian laws either qualitatively (exclusion methods) or quantitatively (likelihood methods), have different …
- 239000003550 marker 0 title abstract description 32
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