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BATMAN: Fast and Accurate Integration of Single-Cell RNA-Seq Datasets via Minimum-Weight Matching

机译:BATMAN:通过最小重量匹配快速准确地整合单细胞RNA-Seq数据集

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摘要

Single-cell RNA-sequencing (scRNA-seq) is a set of technologies used to profile gene expression at the level of individual cells. Although the throughput of scRNA-seq experiments is steadily growing in terms of the number of cells, large datasets are not yet commonly generated owing to prohibitively high costs. Integrating multiple datasets into one can improve power in scRNA-seq experiments, and efficient integration is very important for downstream analyses such as identifying cell-type-specific eQTLs. State-of-the-art scRNA-seq integration methods are based on the mutual nearest neighbor paradigm and fail to both correct for batch effects and maintain the local structure of the datasets. In this paper, we propose a novel scRNA-seq dataset integration method called BATMAN (BATch integration via minimum-weight MAtchiNg). Across multiple simulations and real datasets, we show that our method significantly outperforms state-of-the-art tools with respect to existing metrics for batch effects by up to 80% while retaining cell-to-cell relationships.
机译:单细胞RNA测序(scRNA-seq)是一套用于在单个细胞水平上分析基因表达的技术。尽管就细胞数量而言,scRNA-seq实验的吞吐量一直在稳定增长,但是由于过高的成本,尚未普遍生成大型数据集。将多个数据集整合为一个可以提高scRNA-seq实验的能力,有效的整合对于下游分析(例如识别特定细胞类型的eQTL)非常重要。最新的scRNA-seq整合方法基于相互最近的邻居范例,既无法校正批处理效果,又无法维护数据集的局部结构。在本文中,我们提出了一种新颖的scRNA-seq数据集整合方法,称为BATMAN(通过最小权重MAtchiNg进行BATch整合)。在多个模拟和真实数据集中,我们表明,相对于现有的批处理效果指标,我们的方法在保持单元间关系的同时,其性能远远优于最新工具(高达80%)。

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