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Automated subset identification and characterization pipeline for multidimensional flow and mass cytometry data clustering and visualization

机译:用于多维流动和质量细胞仪数据聚类和可视化的自动子集识别和表征管道

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When examining datasets of any dimensionality, researchers frequently aim to identify individual subsets (clusters) of objects within the dataset. The ubiquity of multidimensional data has motivated the replacement of user-guided clustering with fully automated clustering. The fully automated methods are designed to make clustering more accurate, standardized and faster. However, the adoption of these methods is still limited by the lack of intuitive visualization and cluster matching methods that would allow users to readily interpret fully automatically generated clusters. To address these issues, we developed a fully automated subset identification and characterization (SIC) pipeline providing robust cluster matching and data visualization tools for high-dimensional flow/mass cytometry (and other) data. This pipeline automatically (and intuitively) generates two-dimensional representations of high-dimensional datasets that are safe from the curse of dimensionality. This new approach allows more robust and reproducible data analysis,+ facilitating the development of new gold standard practices across laboratories and institutions. Stephen Meehan, Gleb A. Kolyagin et al. present a fully automated subset identification and characterization pipeline for robust cluster matching and data visualization of high-dimensional flow/mass cytometry data. They show that the method can be applied to single- or multi-dimensional data.
机译:当检查任何维度的数据集时,研究人员频繁旨在识别数据集中的对象的单个子集(集群)。多维数据的无处存在具有完全自动聚类的用户引导聚类。全自动方法旨在使聚类更准确,标准化和更快。但是,通过这些方法的采用仍然受到缺乏直观的可视化和集群匹配方法,这些方法将允许用户容易地解释完全自动生成的集群。为了解决这些问题,我们开发了一种全自动的子集识别和表征(SIC)管道,提供强大的集群匹配和用于高维流/质量细胞计量(和其他)数据的数据可视化工具。此管线自动(和直观)生成高维数据集的二维表示,这是安全的维度诅咒。这种新方法允许更强大和可重复的数据分析,促进实验室和机构的新金标准实践的发展。 Stephen Meehan,Gleb A. Kolyagin等。呈现完全自动的子集识别和表征流水线,用于鲁棒群匹配和高尺寸流量/质量细胞仪数据的数据可视化。他们表明该方法可以应用于单维或多维数据。

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