4.4 Article

Inferring causal phenotype networks from segregating populations

期刊

GENETICS
卷 179, 期 2, 页码 1089-1100

出版社

GENETICS
DOI: 10.1534/genetics.107.085167

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资金

  1. NIDDK NIH HHS [DK06639, P01 DK058398, DK66369, R01 DK058037, DK58037, R01 DK066369, P01 DK58398] Funding Source: Medline
  2. NIGMS NIH HHS [GM069430-01A2, 2T32GM007171, T32 GM007171, R01 GM069430] Funding Source: Medline
  3. PHS HHS [PA02110] Funding Source: Medline

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A major goal in the study of complex traits is to decipher the causal interrelationships among correlated phenotypes. Current methods mostly yield undirected networks that connect. phenotypes without causal orientation. Sonic of these connections may be spurious due to partial correlation that is not causal. We show how to build causal direction into an undirected network of phenotypes by including causal QTL for each phenotype. We evaluate causal direction for each edge connecting two phenotypes, using a LOD score. This new approach can be applied to man), different population structures, including inbred and outbred crosses as well as natural populations, and can accommodate feedback loops. We assess its performance in simulation studies and show that our method recovers network edges and infers causal direction correctly at a high rate. Finally, we illustrate our method with an example involving gene expression and metabolite traits from experimental crosses.

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