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Automatic genotype calling of single nucleotide polymorphisms using a linear grouping algorithm

机译:使用线性分组算法自动基因型呼叫单核苷酸多态性的单核苷酸多态性

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The use of single nucleotide polymorphisms (SNPs) has become increasingly important for a wide range of genetic studies. A high-throughput genotyping technology usually involves a statistical algorithm for automatic (non-manual) genotype calling. Most calling algorithms in the literature, using methods such as k-means and mixture-models, rely on elliptical structures of the genotyping intensity data. They may fail when the intensity data have linear patterns. We propose an automatic genotype calling algorithm by further developing a linear grouping algorithm (LGA). The proposed method clusters data points around lines as opposed to around centroids. The clusters are on lines because we do not normalize the intensities. In addition, we associate a quality value, silhouette width, with each DNA sample and with each whole plate. For a data set of 101 SNPs from the TaqMan platform (Applied Biosystems), the LGA algorithm has 100% automatic calling and 93% of samples pass a quality criterion and are assigned a genotype. For a subset of 30 SNPs where validated samples are available, the accuracy for called genotypes is over 98%. Thus, a key feature of applying LGA to unnormalized TaqMan SNP assay fluorescent signals is that it is able to call automatically and realiably a substantial proportion of samples, reducing the need for manual intervention. It could be potentially adapted to other fluorescent-based SNP genotyping technologies such as Invader Assay.
机译:单一核苷酸多态性(SNP)的使用对于广泛的遗传研究来说越来越重要。高通量基因分型技术通常涉及自动(非手动)基因型调用的统计算法。在文献中大多数呼叫算法,使用诸如K-Means和混合模型的方法,依赖于基因分型强度数据的椭圆结构。当强度数据具有线性模式时,它们可能会失败。我们通过进一步开发线性分组算法(LGA)来提出自动基因型调用算法。所提出的方法群围绕线条的数据点而不是质心。群集在线,因为我们没有正常化强度。此外,我们将质量值,轮廓宽度与每个DNA样品和每个整体相关联。对于来自Taqman平台(应用生物系统)的101个SNP的数据集,LGA算法具有100%的自动呼叫,93%的样本通过质量标准并分配基因型。对于验证样品可用的30个SNP的子集,称为基因型的准确性超过98%。因此,将LGA应用于非正式的Taqman SNP测定荧光信号的关键特征是它能够自动呼叫,可实现大量的样本,从而减少对手动干预的需求。它可能适用于其他基于荧光的SNP基因分型技术,例如入侵者测定。

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