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An accurate and powerful method for copy number variation detection

机译:一种准确而强大的拷贝数变型检测方法

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摘要

Motivation: Integration of multiple genetic sources for copy number variation detection (CNV) is a powerful approach to improve the identification of variants associated with complex traits. Although it has been shown that the widely used change point based methods can increase statistical power to identify variants, it remains challenging to effectively detect CNVs with weak signals due to the noisy nature of genotyping intensity data. We previously developed modSaRa, a normal mean-based model on a screening and ranking algorithm for copy number variation identification which presented desirable sensitivity with high computational efficiency. To boost statistical power for the identification of variants, here we present a novel improvement that integrates the relative allelic intensity with external information from empirical statistics with modeling, which we called modSaRa2.
机译:动机:用于拷贝数变异检测的多种遗传来源的集成是一种强大的方法,可以改善与复杂性状相关的变体的识别。 虽然已经表明,广泛使用的改变点基于方法可以增加统计功率以识别变体,但由于基因分型强度数据的嘈杂性质,有效地检测具有弱信号的CNV。 我们以前开发了Modsara,在筛选和排名算法上进行了正常的基于均值模型,用于拷贝数变型识别,其具有高计算效率的理想灵敏度。 为了提高统计能力来识别变体,在这里,我们提出了一种新颖的改进,它将相对等位基因强度与带有建模的经验统计信息集成了与外部信息,我们称为Modsara2。

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