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Modeling associations between genetic markers using Bayesian networks

机译:使用贝叶斯网络对遗传标记之间的关联进行建模

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摘要

>Motivation: Understanding the patterns of association between polymorphisms at different loci in a population (linkage disequilibrium, LD) is of fundamental importance in various genetic studies. Many coefficients were proposed for measuring the degree of LD, but they provide only a static view of the current LD structure. Generative models (GMs) were proposed to go beyond these measures, giving not only a description of the actual LD structure but also a tool to help understanding the process that generated such structure. GMs based in coalescent theory have been the most appealing because they link LD to evolutionary factors. Nevertheless, the inference and parameter estimation of such models is still computationally challenging.>Results: We present a more practical method to build GM that describe LD. The method is based on learning weighted Bayesian network structures from haplotype data, extracting equivalence structure classes and using them to model LD. The results obtained in public data from the HapMap database showed that the method is a promising tool for modeling LD. The associations represented by the learned models are correlated with the traditional measure of LD D′. The method was able to represent LD blocks found by standard tools. The granularity of the association blocks and the readability of the models can be controlled in the method. The results suggest that the causality information gained by our method can be useful to tell about the conservability of the genetic markers and to guide the selection of subset of representative markers.>Availability: The implementation of the method is available upon request by email.>Contact:
机译:>动机:了解人群中不同位点的多态性之间的关联模式(连锁不平衡,LD)在各种遗传研究中具有根本的重要性。提出了许多系数来测量LD的程度,但它们仅提供了当前LD结构的静态视图。提出了超越这些度量的生成模型(GMs),不仅提供了实际LD结构的描述,而且提供了一种工具来帮助理解生成这种结构的过程。基于合并理论的转基因生物最吸引人,因为它们将LD与进化因素联系起来。尽管如此,此类模型的推理和参数估计仍在计算上具有挑战性。>结果:我们提出了一种更实用的方法来构建描述LD的GM。该方法基于从单倍型数据中学习加权贝叶斯网络结构,提取等效结构类并使用它们对LD建模的基础。从HapMap数据库的公共数据中获得的结果表明,该方法是用于LD建模的有前途的工具。学习模型表示的关联与LD D'的传统度量相关。该方法能够表示标准工具找到的LD块。该方法可以控制关​​联块的粒度和模型的可读性。结果表明,我们的方法所获得的因果关系信息可以用来说明遗传标记的保守性,并指导代表性标记子集的选择。>可用性:根据电子邮件要求。>联系方式:

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