Revealing sequence variation patterns in rice with machine learning methods
Date Issued
Date Online
Language
Type
Review Status
Access Rights
Metadata
Full item pageCitation
Bohnert, Regina; Zeller, Georg; Clark, Richard M; Childs, Kevin L; Ulat, Victor; Stokowski, Renee; Ballinger, Dennis; Frazer, Kelly; Cox, David; Bruskiewich, Richard; Buell, C Robin; Leach, Jan; Leung, Hei; McNally, Kenneth L; Weigel, Detlef and Rätsch, Gunnar. 2008. Revealing sequence variation patterns in rice with machine learning methods. BMC Bioinformatics, Volume 9, no. S10
Permanent link to cite or share this item
External link to download this item
Abstract/Description
The major breakthrough at the turn of the millennium was the completion of genome sequences for individuals from many species, including human, worm and rice. More recently, it has also been important to describe sequence variation within one species, providing the first step towards the linkage of genetic variation to traits. Today, rice is the most important source for human caloric intake, making up 20% of the calorie supply and feeding millions of people daily. The more detailed understanding and findings on the molecular assembly of phenotypic rice varieties will therefore be essential for future improvement in rice cultivation and breeding. In order to reveal patterns of sequence variation in Oryza sativa (rice), the non-repetitive portion of the genomes of 20 diverse rice cultivars was resequenced, in collaboration with Perlegen Sciences, Inc., using a high-density oligonucleotide microarray technology.