PLoS ONE (Jan 2009)

Uncovering the genetic landscape for multiple sleep-wake traits.

  • Christopher J Winrow,
  • Deanna L Williams,
  • Andrew Kasarskis,
  • Joshua Millstein,
  • Aaron D Laposky,
  • He S Yang,
  • Karrie Mrazek,
  • Lili Zhou,
  • Joseph R Owens,
  • Daniel Radzicki,
  • Fabian Preuss,
  • Eric E Schadt,
  • Kazuhiro Shimomura,
  • Martha H Vitaterna,
  • Chunsheng Zhang,
  • Kenneth S Koblan,
  • John J Renger,
  • Fred W Turek

DOI
https://doi.org/10.1371/journal.pone.0005161
Journal volume & issue
Vol. 4, no. 4
p. e5161

Abstract

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Despite decades of research in defining sleep-wake properties in mammals, little is known about the nature or identity of genes that regulate sleep, a fundamental behaviour that in humans occupies about one-third of the entire lifespan. While genome-wide association studies in humans and quantitative trait loci (QTL) analyses in mice have identified candidate genes for an increasing number of complex traits and genetic diseases, the resources and time-consuming process necessary for obtaining detailed quantitative data have made sleep seemingly intractable to similar large-scale genomic approaches. Here we describe analysis of 20 sleep-wake traits from 269 mice from a genetically segregating population that reveals 52 significant QTL representing a minimum of 20 genomic loci. While many (28) QTL affected a particular sleep-wake trait (e.g., amount of wake) across the full 24-hr day, other loci only affected a trait in the light or dark period while some loci had opposite effects on the trait during the light vs. dark. Analysis of a dataset for multiple sleep-wake traits led to previously undetected interactions (including the differential genetic control of number and duration of REM bouts), as well as possible shared genetic regulatory mechanisms for seemingly different unrelated sleep-wake traits (e.g., number of arousals and REM latency). Construction of a Bayesian network for sleep-wake traits and loci led to the identification of sub-networks of linkage not detectable in smaller data sets or limited single-trait analyses. For example, the network analyses revealed a novel chain of causal relationships between the chromosome 17@29cM QTL, total amount of wake, and duration of wake bouts in both light and dark periods that implies a mechanism whereby overall sleep need, mediated by this locus, in turn determines the length of each wake bout. Taken together, the present results reveal a complex genetic landscape underlying multiple sleep-wake traits and emphasize the need for a systems biology approach for elucidating the full extent of the genetic regulatory mechanisms of this complex and universal behavior.