通过近似伪块投影对单细胞数据进行主题建模的可扩展方法。

IF 3.3 2区 生物学 Q1 BIOLOGY Life Science Alliance Pub Date : 2024-08-06 Print Date: 2024-10-01 DOI:10.26508/lsa.202402713
Sishir Subedi, Tomokazu S Sumida, Yongjin P Park
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引用次数: 0

摘要

在许多类型的单细胞数据分析中,概率主题建模已变得必不可少。基于每个细胞中的概率主题分配,我们确定了细胞状态的潜在表征。由特定主题基因频率向量组成的字典矩阵提供了可解释的基础,可与已知的特定细胞类型标记基因和其他通路注释进行比较。然而,在大量细胞上拟合主题模型需要大量计算资源--专用计算单元、计算时间和内存。在这里,我们提出了一种专为单细胞 RNA-seq 数据分析定制的可扩展近似方法,称为 ASAP,是通过近似伪块估算注释单细胞数据矩阵的简称。我们的方法比现有方法更精确,但所需的计算时间要少得多,内存消耗也低得多。我们还证明,我们的方法广泛适用于图集级数据分析;我们的方法在联合分析中无缝整合了单细胞和大容量数据,不需要额外的预处理或特征选择步骤。
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A scalable approach to topic modelling in single-cell data by approximate pseudobulk projection.

Probabilistic topic modelling has become essential in many types of single-cell data analysis. Based on probabilistic topic assignments in each cell, we identify the latent representation of cellular states. A dictionary matrix, consisting of topic-specific gene frequency vectors, provides interpretable bases to be compared with known cell type-specific marker genes and other pathway annotations. However, fitting a topic model on a large number of cells would require heavy computational resources-specialized computing units, computing time and memory. Here, we present a scalable approximation method customized for single-cell RNA-seq data analysis, termed ASAP, short for Annotating a Single-cell data matrix by Approximate Pseudobulk estimation. Our approach is more accurate than existing methods but requires orders of magnitude less computing time, leaving much lower memory consumption. We also show that our approach is widely applicable for atlas-scale data analysis; our method seamlessly integrates single-cell and bulk data in joint analysis, not requiring additional preprocessing or feature selection steps.

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来源期刊
Life Science Alliance
Life Science Alliance Agricultural and Biological Sciences-Plant Science
CiteScore
5.80
自引率
2.30%
发文量
241
审稿时长
10 weeks
期刊介绍: Life Science Alliance is a global, open-access, editorially independent, and peer-reviewed journal launched by an alliance of EMBO Press, Rockefeller University Press, and Cold Spring Harbor Laboratory Press. Life Science Alliance is committed to rapid, fair, and transparent publication of valuable research from across all areas in the life sciences.
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