Joint modelling of confounding factors and prominent genetic regulators provides increased accuracy in genetical genomics studies.

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Published in PLoS Comput Biol on January 05, 2012

Authors

Nicoló Fusi1, Oliver Stegle, Neil D Lawrence

Author Affiliations

1: Sheffield Institute for Translational Neuroscience, University of Sheffield, Sheffield, United Kingdom. nicolo.fusi@sheffield.ac.uk

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