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Bayesian intervals for linkage locations.

机译:链接位置的贝叶斯间隔。

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Intermediate fine mapping has received considerable attention recently, with the goal of providing statistically precise and valid chromosomal regions for fine mapping following initial identification of broad regions that are linked to a disease. The following classes of methods have been proposed and compared in the literature: (1) LOD-support intervals, (2) generalized estimating equations, (3) bootstrap, and (4) confidence set inference framework. These methods provide confidence intervals either with coverage levels deviating from the nominal confidence levels or that are not fully efficient. Here, we propose a novel Bayesian method for constructing such intervals using affected sibling pair data. The susceptibility gene location is treated as a parameter in this method, with a uniform prior. A Metropolis-Hastings algorithm is implemented to sample from the posterior distribution and highest posterior density intervals of the disease gene locations are constructed. Correct coverage levels are maintained by our method. Both simulation studies and an application to a rheumatoid arthritis dataset demonstrate the improved efficiency of the Bayesian intervals compared with existing methods.
机译:中间精细定位最近受到了相当大的关注,其目标是在初步鉴定出与疾病相关的广泛区域之后,提供统计学上精确有效的染色体区域用于精细定位。在文献中提出并比较了以下几类方法:(1)LOD支持间隔,(2)广义估计方程,(3)自举和(4)置信集推断框架。这些方法提供的置信区间的覆盖范围偏离了名义置信水平,或者效率不高。在这里,我们提出了一种新颖的贝叶斯方法,用于使用受影响的同级对数据构建此类区间。在这种方法中,敏感性基因的位置被作为参数,具有统一的先验。实施Metropolis-Hastings算法以从后验分布进行采样,并构建疾病基因位置的最高后验密度区间。通过我们的方法可以维护正确的覆盖范围。仿真研究和对类风湿关节炎数据集的应用均表明,与现有方法相比,贝叶斯区间的效率有所提高。

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