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CNV detection method optimized for high-resolution arrayCGH by normality test

机译:通过正态性检验优化高分辨率阵列CGH的CNV检测方法

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摘要

High-resolution arrayCGH platform makes it possible to detect small gains and losses which previously could not be measured. However, current CNV detection tools fitted to early low-resolution data are not applicable to larger high-resolution data. When CNV detection tools are applied to high-resolution data, they suffer from high false-positives, which increases validation cost. Existing CNV detection tools also require optimal parameter values. In most cases, obtaining these values is a difficult task. This study developed a CNV detection algorithm that is optimized for high-resolution arrayCGH data. This tool operates up to 1500 times faster than existing tools on a high-resolution arrayCGH of whole human chromosomes which has 42 million probes whose average length is 50 bases, while preserving false positiveegative rates. The algorithm also uses a normality test, thereby removing the need for optimal parameters. To our knowledge, this is the first formulation for CNV detecting problems that results in a near-linear empirical overall complexity for real high-resolution data.
机译:高分辨率arrayCGH平台可以检测以前无法测量的微小增益和损耗。但是,当前适用于早期低分辨率数据的CNV检测工具不适用于较大的高分辨率数据。将CNV检测工具应用于高分辨率数据时,它们的假阳性率很高,这会增加验证成本。现有的CNV检测工具也需要最佳的参数值。在大多数情况下,获得这些值是一项艰巨的任务。这项研究开发了一种CNV检测算法,该算法针对高分辨率arrayCGH数据进行了优化。该工具在全人类染色体高分辨率arrayCGH上的运行速度比现有工具快1500倍,该阵列具有4,200万个探针,平均长度为50个碱基,同时保留了假阳性/阴性率。该算法还使用正态性检验,从而消除了对最佳参数的需求。据我们所知,这是用于CNV检测问题的第一个公式,该问题导致实际高分辨率数据的线性总体经验复杂度。

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