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Co-regulated transcriptional networks contribute to natural genetic variation in Drosophila sleep.


ABSTRACT: Sleep disorders are common in humans, and sleep loss increases the risk of obesity and diabetes. Studies in Drosophila have revealed molecular pathways and neural tissues regulating sleep; however, genes that maintain genetic variation for sleep in natural populations are unknown. Here, we characterized sleep in 40 wild-derived Drosophila lines and observed abundant genetic variation in sleep architecture. We associated sleep with genome-wide variation in gene expression to identify candidate genes. We independently confirmed that molecular polymorphisms in Catsup (Catecholamines up) are associated with variation in sleep and that P-element mutations in four candidate genes affect sleep and gene expression. Transcripts associated with sleep grouped into biologically plausible genetically correlated transcriptional modules. We confirmed co-regulated gene expression using P-element mutants. Quantitative genetic analysis of natural phenotypic variation is an efficient method for revealing candidate genes and pathways.

SUBMITTER: Harbison ST 

PROVIDER: S-EPMC2683981 | biostudies-literature | 2009 Mar

REPOSITORIES: biostudies-literature

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Co-regulated transcriptional networks contribute to natural genetic variation in Drosophila sleep.

Harbison Susan T ST   Carbone Mary Anna MA   Ayroles Julien F JF   Stone Eric A EA   Lyman Richard F RF   Mackay Trudy F C TF  

Nature genetics 20090222 3


Sleep disorders are common in humans, and sleep loss increases the risk of obesity and diabetes. Studies in Drosophila have revealed molecular pathways and neural tissues regulating sleep; however, genes that maintain genetic variation for sleep in natural populations are unknown. Here, we characterized sleep in 40 wild-derived Drosophila lines and observed abundant genetic variation in sleep architecture. We associated sleep with genome-wide variation in gene expression to identify candidate ge  ...[more]

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