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Accurate automated clustering of two-dimensional data for single-nucleotide polymorphism genotyping by a combination of clustering methods: evaluation by large-scale real data

机译:结合聚类方法对单核苷酸多态性基因分型的二维数据进行准确的自动聚类:通过大规模真实数据进行评估

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Motivation: The Invader assay is a fluorescence-based high-throughput genotyping technology. If the output data from the Invader assay were classified automatically, then genotypes for individuals would be determined efficiently. However, existing classification methods do not necessarily yield results with the same accuracy as can be achieved by technicians. Our clustering algorithm, Genocluster, is intended to increase the proportion of data points that need not be manually corrected by technicians. Results: Genocluster worked well even when the number of clusters was unknown in advance and when there were only a few points in a cluster. The use of Genocluster enabled us to achieve an acceptance rate (proportion of assay results that did not need to be corrected by expert technicians) of 84.4% and a proportion of uncorrected points of 95.8%, as determined using the data from over 31 million points. Availability: Information for obtaining the executable code, example data and example analysis are available at http://www.genstat.net/genocluster Contact: kamatani@ior.twmu.ac.jp
机译:动机:Invader分析是一种基于荧光的高通量基因分型技术。如果来自入侵者测定的输出数据被自动分类,那么将有效地确定个体的基因型。但是,现有的分类方法不一定能获得与技术人员可以达到的精度相同的结果。我们的聚类算法Genocluster旨在增加不需要技术人员手动校正的数据点的比例。结果:即使集群的数目事先未知,并且集群中只有几个点,Genocluster也能很好地工作。 Genocluster的使用使我们能够获得84.4%的接受率(不需要专业技术人员校正的测定结果比例)和95.8%的未校正点,这是使用超过3,100万个点的数据确定的。可用性:有关获得可执行代码,示例数据和示例分析的信息,请访问http://www.genstat.net/genocluster。联系人:kamatani@ior.twmu.ac.jp

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