Identity-by-descent (IBD) segment outlier detection in endogamous populations using pedigree cohorts

Shi Jie Samuel Tan, Huyen Trang Dang, Sarah Keim, Maja Bućan, Sara Mathieson
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Abstract

Genomic segments that are inherited from a common ancestor are referred to as identical-by-descent (IBD). Because these segments are inherited, they not only allow us to study diseases, population characteristics, and the sharing of rare variants, but also understand hidden familial relationships within populations. Over the past two decades, various IBD finding algorithms have been developed using hidden Markov models (HMMs), hashing and extension, and Burrows-Wheeler Transform (BWT) approaches. In this study, we investigate the utility of pedigree information in IBD outlier detection methods for endogamous populations. With the increasing prevalence of computationally efficient sequencing technology and proper documentation of pedigree structures, we expect complete pedigree information to become readily available for more populations. While IBD segments have been used to reconstruct pedigrees, because we now have access to the pedigree, it is a natural question to ask if including pedigree information would substantially improve IBD segment finding for the purpose of studying inheritance. We propose an IBD pruning algorithm for reducing the number of false positives in IBD segments detected by existing software. While existing software already identify IBD segments with high success rates, our algorithm analyzes the familial relationships between cohorts of individuals who are initially hypothesized to share IBD segments to remove outliers. Our algorithm is inspired by a k-Nearest Neighbors (kNN) approach with a novel distance metric for pedigrees with loops. We apply our method to simulated genomic data under an Amish pedigree, but it could be applied to pedigrees from other human populations as well as domesticated animals such as dogs and cattle.
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利用血统队列在内源种群中检测 "后裔同一性"(IBD)区段异常值
由共同祖先遗传的基因组片段被称为同源染色体(IBD)。由于这些片段具有遗传性,因此我们不仅可以利用它们研究疾病、人群特征和罕见变异的共享性,还可以了解人群中隐藏的家族关系。在过去的二十年里,人们利用隐马尔可夫模型(HMM)、散列和扩展以及 Burrows-Wheeler 变换(BWT)等方法开发了各种 IBD 查找算法。在本研究中,我们研究了血统信息在内生种群 IBD 离群点检测方法中的实用性。随着计算效率高的测序技术的日益普及和对血统结构的适当记录,我们预计将有更多的种群可以随时获得完整的血统信息。虽然 IBD 片段已被用于重建血统,但由于我们现在可以获得血统,因此自然会问,如果包括血统信息,是否会大大改善用于研究遗传的 IBD 片段的发现。我们提出了一种 IBD 修剪算法,以减少现有软件检测到的 IBD 片段中的假阳性数量。虽然现有软件已经能以很高的成功率识别出 IBD 片段,但我们的算法会分析最初被假定共享 IBD 片段的个体队列之间的家族关系,以剔除异常值。我们的算法受 k-近邻(kNN)方法的启发,并针对有循环的谱系采用了新颖的距离度量。我们将我们的方法应用于阿米什血统下的模拟基因组数据,但它也可应用于其他人类群体以及狗和牛等驯养动物的血统。
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