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A Bayesian segmentation approach to ascertain copy number variations at the population level.

机译:一种贝叶斯分割方法,用于确定种群级别的拷贝数变异。

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MOTIVATION: Efficient and accurate ascertainment of copy number variations (CNVs) at the population level is essential to understand the evolutionary process and population genetics, and to apply CNVs in population-based genome-wide association studies for complex human diseases. We propose a novel Bayesian segmentation approach to identify CNVs in a defined population of any size. It is computationally efficient and provides statistical evidence for the detected CNVs through the Bayes factor. This approach has the unique feature of carrying out segmentation and assigning copy number status simultaneously-a desirable property that current segmentation methods do not share. RESULTS: In comparisons with popular two-step segmentation methods for a single individual using benchmark simulation studies, we find the new approach to perform competitively with respect to false discovery rate and sensitivity in breakpoint detection. In a simulation study of multiple samples with recurrent copy numbers, the new approach outperforms two leading single sample methods. We further demonstrate the effectiveness of our approach in population-level analysis of previously published HapMap data. We also apply our approach in studying population genetics of CNVs. AVAILABILITY: R programs are available at http://www.mshri.on.ca/mitacs/software/SOFTWARE.HTML
机译:动机:在种群水平上有效且准确地确定拷贝数变异(CNV)对于了解进化过程和种群遗传学,并将CNV应用于基于人群的全基因组范围的复杂人类疾病关联研究至关重要。我们提出了一种新颖的贝叶斯分割方法来识别任何规模的定义人群中的CNV。它的计算效率很高,并通过贝叶斯因子为检测到的CNV提供统计依据。这种方法的独特之处在于可以同时执行分段和分配副本编号状态,这是当前分段方法无法共享的理想属性。结果:与使用基准模拟研究的针对单个人的流行两步分割方法相比,我们发现了一种新方法,可以在错误发现率和断点检测灵敏度方面进行竞争。在对具有重复拷贝数的多个样本进行的模拟研究中,新方法的性能优于两种领先的单一样本方法。我们进一步证明了我们的方法在对先前发布的HapMap数据进行人口级分析中的有效性。我们还将我们的方法应用于研究CNV的群体遗传学。可用性:R程序位于http://www.mshri.on.ca/mitacs/software/SOFTWARE.HTML

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