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A novel copy number variants kernel association test with application to autism spectrum disorders studies

机译:新型拷贝数变异核关联测试及其在自闭症谱系障碍研究中的应用

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摘要

>Motivation: Copy number variants (CNVs) have been implicated in a variety of neurodevelopmental disorders, including autism spectrum disorders, intellectual disability and schizophrenia. Recent advances in high-throughput genomic technologies have enabled rapid discovery of many genetic variants including CNVs. As a result, there is increasing interest in studying the role of CNVs in the etiology of many complex diseases. Despite the availability of an unprecedented wealth of CNV data, methods for testing association between CNVs and disease-related traits are still under-developed due to the low prevalence and complicated multi-scale features of CNVs.>Results: We propose a novel CNV kernel association test (CKAT) in this paper. To address the low prevalence, CNVs are first grouped into CNV regions (CNVR). Then, taking into account the multi-scale features of CNVs, we first design a single-CNV kernel which summarizes the similarity between two CNVs, and next aggregate the single-CNV kernel to a CNVR kernel which summarizes the similarity between two CNVRs. Finally, association between CNVR and disease-related traits is assessed by comparing the kernel-based similarity with the similarity in the trait using a score test for variance components in a random effect model. We illustrate the proposed CKAT using simulations and show that CKAT is more powerful than existing methods, while always being able to control the type I error. We also apply CKAT to a real dataset examining the association between CNV and autism spectrum disorders, which demonstrates the potential usefulness of the proposed method.>Availability and Implementation: A R package to implement the proposed CKAT method is available at .>Contacts: or >Supplementary information: are available at Bioinformatics online.
机译:>动机:拷贝数变异(CNV)与多种神经发育障碍有关,包括自闭症谱系障碍,智力障碍和精神分裂症。高通量基因组技术的最新进展使得能够迅速发现包括CNV在内的许多遗传变异。结果,人们越来越关注研究CNV在许多复杂疾病的病因中的作用。尽管可获得空前丰富的CNV数据,但由于CNV的低患病率和复杂的多尺度特征,用于测试CNV与疾病相关性状之间关联的方法仍未开发。>结果:我们在本文中提出了一种新颖的CNV内核关联测试(CKAT)。为了解决低患病率,首先将CNV分组为CNV区域(CNVR)。然后,考虑到CNV的多尺度特征,我们首先设计一个总结两个CNV之间相似性的单CNV内核,然后将单个CNV内核聚合到一个总结两个CNVR之间相似性的CNVR内核。最后,通过使用随机效应模型中方差成分的得分测试,将基于核的相似性与性状的相似性进行比较,来评估CNVR与疾病相关性状之间的关联。我们使用仿真说明了拟议的CKAT,并表明CKAT比现有方法更强大,同时始终能够控制I型错误。我们还将CKAT应用于检查CNV和自闭症谱系障碍之间关联的真实数据集,这证明了该方法的潜在实用性。>可用性和实现:可从以下位置获得实现该CKAT方法的AR包: 。>联系人:或>补充信息:可从在线生物信息学获得。

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