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Comparison of multilevel modeling and the family-based association test for identifying genetic variants associated with systolic and diastolic blood pressure using Genetic Analysis Workshop 18 simulated data

机译:使用遗传分析工作室18模拟数据比较多级建模和基于家庭的关联测试以鉴定与收缩压和舒张压相关的遗传变异

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摘要

Identifying genetic variants associated with complex diseases is an important task in genetic research. Although association studies based on unrelated individuals (ie, case-control genome-wide association studies) have successfully identified common single-nucleotide polymorphisms for many complex diseases, these studies are not so likely to identify rare genetic variants. In contrast, family-based association studies are particularly useful for identifying rare-variant associations. Recently, there has been some interest in employing multilevel models in family-based genetic association studies. However, the performance of such models in these studies, especially for longitudinal family-based sequence data, has not been fully investigated. Therefore, in this study, we investigated the performance of the multilevel model in the family-based genetic association analysis and compared it with the conventional family-based association test, by examining the powers and type I error rates of the 2 approaches using 3 data sets from the Genetic Analysis Workshop 18 simulated data: genome-wide association single-nucleotide polymorphism data, sequence data, and rare-variants-only data. Compared with the univariate family-based association test, the multilevel model had slightly higher power to identify most of the causal genetic variants using the genome-wide association single-nucleotide polymorphism data and sequence data. However, both approaches had low power to identify most of the causal single-nucleotide polymorphisms, especially those among the relatively rare genetic variants. Therefore, we suggest a unified method that combines both approaches and incorporates collapsing strategy, which may be more powerful than either approach alone for studying genetic associations using family-based data.
机译:鉴定与复杂疾病有关的遗传变异是遗传研究的重要任务。尽管基于无关个体的关联研究(即,病例对照全基因组关联研究)已成功识别出许多复杂疾病的常见单核苷酸多态性,但这些研究不太可能识别出罕见的遗传变异。相反,基于家庭的关联研究对于识别稀有变异关联特别有用。最近,在基于家族的遗传关联研究中采用多层次模型引起了人们的兴趣。但是,这些模型在这些研究中的性能,特别是对于基于纵向家族的序列数据的性能,尚未得到充分研究。因此,在这项研究中,我们通过使用3个数据检查了2种方法的功效和I类错误率,研究了多层次模型在基于家族的遗传关联分析中的性能,并将其与常规的基于家族的关联检验进行了比较。遗传分析研讨会的18个模拟数据集:全基因组关联单核苷酸多态性数据,序列数据和仅稀有变异数据。与基于单变量家庭的关联测试相比,该多级模型具有使用全基因组关联的单核苷酸多态性数据和序列数据来识别大多数因果遗传变异的能力。但是,这两种方法都无法识别大多数因果单核苷酸多态性,特别是相对罕见的遗传变异中的那些。因此,我们建议将两种方法结合起来并采用折叠策略的统一方法,这种方法可能比使用基于家庭的数据研究遗传关联的任何一种方法都更强大。

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