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Parallel Density-Based Downsampling of Cytometry Data

机译:基于平行密度的细胞仪数据下采样

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摘要

Identification of cellular populations is the first step in analyzing cytometry data. To identify both abundant and outlying rare cellular populations a density-based preprocessing of data to equalize representations of populations is needed. Density-based downsampling keeps representative points in the cellular space while discarding irrelevant ones. We propose a fast and fully deterministic algorithm for density calculation, based on space partitioning, tree representation and an iterative approach to downsampling utilizing fast calculation of density. We compared our algorithm with SPADE, the most used approach in this area, achieving comparable results in a significantly shorter runtime.
机译:鉴定细胞群是分析细胞术数据的第一步。为了识别丰富和广阔的稀有蜂窝群体,需要基于密度的数据预处理,以均衡群体的表示。基于密度的下采样在封闭空间中保持代表点,同时丢弃不相关的空间。我们提出了一种快速完全确定的密度计算算法,基于空间分区,树形表示和利用密度快速计算的下采样的迭代方法。我们将我们的算法与Spade进行了比较了该区域中最常用的方法,在显着较短的运行时实现了可比的结果。

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