利用样本和基因的相似性以及单细胞 RNA-Seq 数据,对大量基因表达进行解卷积分析

IF 3.5 2区 生物学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY BMC Genomics Pub Date : 2024-09-18 DOI:10.1186/s12864-024-10728-x
Chenqi Wang, Yifan Lin, Shuchao Li, Jinting Guan
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引用次数: 0

摘要

广泛采用的大容量 RNA-seq 技术测量的是细胞基因表达的平均值,掩盖了细胞类型的异质性,从而影响了下游分析。因此,确定细胞组成和细胞类型特异性基因表达谱(GEPs)有助于研究各种生物过程的内在机制。虽然单细胞 RNA-seq 主要研究基因表达的细胞类型异质性,但它需要专业和昂贵的资源,目前还不适合大量样本或常规临床环境。最近,人们开发出了计算解卷积方法,但其中许多方法只估计细胞类型组成或细胞类型特异性 GEPs,需要将另一种方法作为输入。开发更精确的解卷积方法来推断细胞类型丰度和细胞类型特异性 GEP 仍然至关重要。我们提出了一种新的解卷积算法--DSSC,它通过利用大量表达和单细胞RNA-seq数据中基因-基因和样本-样本的相似性,同时推断异质样本的细胞特异性基因表达和细胞类型比例。通过与其他现有方法的比较,我们证明了 DSSC 能有效推断模拟伪大容量数据(包括数据集内和数据集间模拟)和实验大容量数据(包括混合数据和真实实验数据)中的细胞类型比例和细胞类型特异性 GEP。DSSC 对标记基因数量和样本大小的变化表现出鲁棒性,同时还具有成本和时间效率。DSSC 为表征异质样本的细胞组成和基因表达异质性提供了一种实用且有前景的实验技术替代方案。
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Deconvolution from bulk gene expression by leveraging sample-wise and gene-wise similarities and single-cell RNA-Seq data
The widely adopted bulk RNA-seq measures the gene expression average of cells, masking cell type heterogeneity, which confounds downstream analyses. Therefore, identifying the cellular composition and cell type-specific gene expression profiles (GEPs) facilitates the study of the underlying mechanisms of various biological processes. Although single-cell RNA-seq focuses on cell type heterogeneity in gene expression, it requires specialized and expensive resources and currently is not practical for a large number of samples or a routine clinical setting. Recently, computational deconvolution methodologies have been developed, while many of them only estimate cell type composition or cell type-specific GEPs by requiring the other as input. The development of more accurate deconvolution methods to infer cell type abundance and cell type-specific GEPs is still essential. We propose a new deconvolution algorithm, DSSC, which infers cell type-specific gene expression and cell type proportions of heterogeneous samples simultaneously by leveraging gene-gene and sample-sample similarities in bulk expression and single-cell RNA-seq data. Through comparisons with the other existing methods, we demonstrate that DSSC is effective in inferring both cell type proportions and cell type-specific GEPs across simulated pseudo-bulk data (including intra-dataset and inter-dataset simulations) and experimental bulk data (including mixture data and real experimental data). DSSC shows robustness to the change of marker gene number and sample size and also has cost and time efficiencies. DSSC provides a practical and promising alternative to the experimental techniques to characterize cellular composition and heterogeneity in the gene expression of heterogeneous samples.
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来源期刊
BMC Genomics
BMC Genomics 生物-生物工程与应用微生物
CiteScore
7.40
自引率
4.50%
发文量
769
审稿时长
6.4 months
期刊介绍: BMC Genomics is an open access, peer-reviewed journal that considers articles on all aspects of genome-scale analysis, functional genomics, and proteomics. BMC Genomics is part of the BMC series which publishes subject-specific journals focused on the needs of individual research communities across all areas of biology and medicine. We offer an efficient, fair and friendly peer review service, and are committed to publishing all sound science, provided that there is some advance in knowledge presented by the work.
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