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CSS: cluster similarity spectrum integration of single-cell genomics data

机译:CSS:单细胞基因组学数据的集群相似谱集成

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It is a major challenge to integrate single-cell sequencing data across experiments, conditions, batches, time points, and other technical considerations. New computational methods are required that can integrate samples while simultaneously preserving biological information. Here, we propose an unsupervised reference-free data representation, cluster similarity spectrum (CSS), where each cell is represented by its similarities to clusters independently identified across samples. We show that CSS can be used to assess cellular heterogeneity and enable reconstruction of differentiation trajectories from cerebral organoid and other single-cell transcriptomic data, and to integrate data across experimental conditions and human individuals.
机译:在实验,条件,批次,时间点和其他技术考虑中集成单细胞测序数据是一项重大挑战。 需要新的计算方法,可以在同时保留生物信息的同时集成样本。 这里,我们提出了无监督的可不传达的参考数据数据表示,群集相似度频谱(CSS),其中每个小区由其相似性与在样本中独立地识别的集群表示。 我们表明CSS可用于评估细胞异质性并使来自脑软骨和其他单细胞转录组数据的分化轨迹的重建,并在实验条件和人体上整合数据。

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