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Identification of cell types from single-cell transcriptomes using a novel clustering method

机译:使用新型聚类方法从单细胞转录组中鉴定细胞类型

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Motivation: The recent advance of single-cell technologies has brought new insights into complex biological phenomena. In particular, genome-wide single-cell measurements such as transcriptome sequencing enable the characterization of cellular composition as well as functional variation in homogenic cell populations. An important step in the single-cell transcriptome analysis is to group cells that belong to the same cell types based on gene expression patterns. The corresponding computational problem is to cluster a noisy high dimensional dataset with substantially fewer objects (cells) than the number of variables (genes).
机译:动机:单细胞技术的最新进展为复杂的生物现象带来了新的见解。特别地,全基因组范围的单细胞测量(例如转录组测序)能够表征细胞组成以及同质细胞群体中的功能变异。单细胞转录组分析中的重要步骤是基于基因表达模式将属于相同细胞类型的细胞分组。相应的计算问题是将嘈杂的高维数据集与对象(单元格)的数量明显少于变量(基因)的数量。

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