DeepDoublet识别邻近细胞依赖性基因表达。

Linbu Liao, Junyoung Kim, Kanghee Cho, Junil Kim, Byung-Kwan Lim, Kyoung Jae Won
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引用次数: 0

摘要

细胞之间相互作用以维持正常的功能和体内平衡。通常,来自单细胞RNAseq (scRNAseq)的配体-受体对的共表达已被用于鉴定相互作用的细胞类型。最近,物理相互作用的多细胞RNA测序已被用于鉴定相互作用的细胞类型,而不依赖于配体-受体对的共表达。这为研究相互作用细胞类型的表达开辟了一条新的途径。我们提出了DeepDoublet,一个基于深度学习的工具,将物理相互作用的两个细胞(或双元)的转录组分解为两组转录组。将DeepDoublet应用于肝细胞和肝内皮细胞(LECs)的双链,我们成功地分解了每种细胞类型的转录组。特别是DeepDoublet发现了肝细胞与LECs相互作用时的特异性表达。其中有参与血管形成的Angptl3。DeepDoublet是一种识别邻近细胞依赖性基因表达的工具。
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DeepDoublet identifies neighboring cell-dependent gene expression.

Cells interact with each other for proper function and homeostasis. Often, co-expression of ligand-receptor pairs from the single-cell RNAseq (scRNAseq) has been used to identify interacting cell types. Recently, RNA sequencing of physically interacting multi-cells has been used to identify interacting cell types without relying on co-expression of ligand-receptor pairs. This opens a new avenue to study the expression of interacting cell types. We present DeepDoublet, a deep-learning-based tool to decompose the transcriptome of physically interacting two cells (or doublet) into two sets of transcriptome. Applying DeepDoublet to the doublets of hepatocyte and liver endothelial cells (LECs), we successfully decomposed into the transcriptome of each cell type. Especially, DeepDoublet identified specific expression of hepatocytes when they are interacting with LECs. Among them was Angptl3 which has a role in blood vessel formation. DeepDoublet is a tool to identify neighboring cell-dependent gene expression.

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