4.8 Article

DoGSD: the dog and wolf genome SNP database

Journal

NUCLEIC ACIDS RESEARCH
Volume 43, Issue D1, Pages D777-D783

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/nar/gku1174

Keywords

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Funding

  1. 973 program [2013CB835200, 2013CB835202]
  2. Strategic Priority Research Program of the Chinese Academy of Sciences [XDB13040500]
  3. Chinese Academy of Sciences [1731200000001]
  4. Youth Innovation Promotion Association, Chinese Academy of Sciences

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The rapid advancement of next-generation sequencing technology has generated a deluge of genomic data from domesticated dogs and their wild ancestor, grey wolves, which have simultaneously broadened our understanding of domestication and diseases that are shared by humans and dogs. To address the scarcity of single nucleotide polymorphism (SNP) data provided by authorized databases and to make SNP data more easily/friendly usable and available, we propose DoGSD (http://dogsd.big.ac.cn), the first canidae-specific database which focuses on whole genome SNP data from domesticated dogs and grey wolves. The DoGSD is a web-based, open-access resource comprising similar to 19 million high-quality whole-genome SNPs. In addition to the dbSNP data set (build 139), DoGSD incorporates a comprehensive collection of SNPs from two newly sequenced samples (1 wolf and 1 dog) and collected SNPs from three latest dog/wolf genetic studies (7 wolves and 68 dogs), which were taken together for analysis with the population genetic statistics, Fst. In addition, DoGSD integrates some closely related information including SNP annotation, summary lists of SNPs located in genes, synonymous and non-synonymous SNPs, sampling location and breed information. All these features make DoGSD a useful resource for in-depth analysis in dog-/wolf-related studies.

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