Ignac Tomasz M, Skupin Alexander, Sakhanenko Nikita A, Galas David J
Luxembourg Centre for Systems Biomedicine, Esch-sur-Alzette, Luxembourg; Pacific Northwest Diabetes Research Institute, Seattle, Washington, United States of America.
Luxembourg Centre for Systems Biomedicine, Esch-sur-Alzette, Luxembourg; National Center for Microscopy and Imaging Research, University of California San Diego, La Jolla, California, United States of America.
PLoS One. 2014 Mar 26;9(3):e92310. doi: 10.1371/journal.pone.0092310. eCollection 2014.
Phenotypic variation, including that which underlies health and disease in humans, results in part from multiple interactions among both genetic variation and environmental factors. While diseases or phenotypes caused by single gene variants can be identified by established association methods and family-based approaches, complex phenotypic traits resulting from multi-gene interactions remain very difficult to characterize. Here we describe a new method based on information theory, and demonstrate how it improves on previous approaches to identifying genetic interactions, including both synthetic and modifier kinds of interactions. We apply our measure, called interaction distance, to previously analyzed data sets of yeast sporulation efficiency, lipid related mouse data and several human disease models to characterize the method. We show how the interaction distance can reveal novel gene interaction candidates in experimental and simulated data sets, and outperforms other measures in several circumstances. The method also allows us to optimize case/control sample composition for clinical studies.
表型变异,包括构成人类健康和疾病基础的表型变异,部分是由遗传变异和环境因素之间的多重相互作用导致的。虽然由单基因变异引起的疾病或表型可以通过既定的关联方法和基于家系的方法来识别,但由多基因相互作用产生的复杂表型特征仍然很难进行表征。在此,我们描述了一种基于信息论的新方法,并展示了它如何改进先前识别遗传相互作用的方法,包括合成和修饰剂类型的相互作用。我们将我们称为相互作用距离的度量应用于先前分析过的酵母孢子形成效率数据集、脂质相关小鼠数据集以及几种人类疾病模型,以对该方法进行表征。我们展示了相互作用距离如何在实验和模拟数据集中揭示新的基因相互作用候选物,并且在几种情况下优于其他度量。该方法还使我们能够为临床研究优化病例/对照样本组成。