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Using Object Oriented Bayesian Networks to Model Linkage Linkage Disequilibrium and Mutations between STR Markers

机译:使用面向对象的贝叶斯网络以连锁模式连锁不平衡和sTR基因突变之间

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摘要

In a number of applications there is a need to determine the most likely pedigree for a group of persons based on genetic markers. Adequate models are needed to reach this goal. The markers used to perform the statistical calculations can be linked and there may also be linkage disequilibrium (LD) in the population. The purpose of this paper is to present a graphical Bayesian Network framework to deal with such data. Potential LD is normally ignored and it is important to verify that the resulting calculations are not biased. Even if linkage does not influence results for regular paternity cases, it may have substantial impact on likelihood ratios involving other, more extended pedigrees. Models for LD influence likelihoods for all pedigrees to some degree and an initial estimate of the impact of ignoring LD and/or linkage is desirable, going beyond mere rules of thumb based on marker distance. Furthermore, we show how one can readily include a mutation model in the Bayesian Network; extending other programs or formulas to include such models may require considerable amounts of work and will in many case not be practical. As an example, we consider the two STR markers vWa and D12S391. We estimate probabilities for population haplotypes to account for LD using a method based on data from trios, while an estimate for the degree of linkage is taken from the literature. The results show that accounting for haplotype frequencies is unnecessary in most cases for this specific pair of markers. When doing calculations on regular paternity cases, the markers can be considered statistically independent. In more complex cases of disputed relatedness, for instance cases involving siblings or so-called deficient cases, or when small differences in the LR matter, independence should not be assumed. (The networks are freely available at .)
机译:在许多应用中,需要基于遗传标记来确定一组人的最可能谱系。需要足够的模型来实现此目标。可以将用于执行统计计算的标记关联起来,并且总体中也可能存在连锁不平衡(LD)。本文的目的是提出一种图形贝叶斯网络框架来处理此类数据。潜在的LD通常被忽略,因此重要的是要验证结果计算是否有偏差。即使联系不影响常规亲子鉴定的结果,也可能对涉及其他更广泛谱系的似然比产生重大影响。 LD对所有谱系的影响可能性模型在某种程度上是一个理想的模型,它需要对忽略LD和/或链接的影响进行初步估计,而不仅仅是基于标记距离的经验法则。此外,我们展示了如何在贝叶斯网络中轻松包含突变模型;扩展其他程序或公式以包括此类模型可能需要大量工作,并且在许多情况下不切实际。例如,我们考虑两个STR标记vWa和D12S391。我们使用基于来自三重奏的数据的方法来估计人口单倍型解决LD的概率,而对链接程度的估计则来自文献。结果表明,在大多数情况下,对于此特定标记对,无需考虑单倍型频率。在对常规陪产假个案进行计算时,可以认为标记在统计上是独立的。在更复杂的相关性争议案件中,例如,涉及兄弟姐妹的案件或所谓的缺陷案件,或者在LR问题上存在微小差异时,不应假定独立性。 (这些网络可从处免费获得。)

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