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scICML:基于信息论的共聚类多视图学习用于单细胞多组学数据的综合分析。

scICML: Information-Theoretic Co-Clustering-Based Multi-View Learning for the Integrative Analysis of Single-Cell Multi-Omics Data.

出版信息

IEEE/ACM Trans Comput Biol Bioinform. 2024 Jan-Feb;21(1):200-207. doi: 10.1109/TCBB.2023.3305989. Epub 2024 Feb 5.

Abstract

Modern high-throughput sequencing technologies have enabled us to profile multiple molecular modalities from the same single cell, providing unprecedented opportunities to assay cellular heterogeneity from multiple biological layers. However, the datasets generated from these technologies tend to have high level of noise and are highly sparse, bringing challenges to data analysis. In this paper, we develop a novel information-theoretic co-clustering-based multi-view learning (scICML) method for multi-omics single-cell data integration. scICML utilizes co-clusterings to aggregate similar features for each view of data and uncover the common clustering pattern for cells. In addition, scICML automatically matches the clusters of the linked features across different data types for considering the biological dependency structure across different types of genomic features. Our experiments on four real-world datasets demonstrate that scICML improves the overall clustering performance and provides biological insights into the data analysis of peripheral blood mononuclear cells.

摘要

现代高通量测序技术使我们能够从单个细胞中同时分析多种分子模态,从而为从多个生物学层面分析细胞异质性提供了前所未有的机会。然而,这些技术生成的数据集往往噪声水平较高且高度稀疏,给数据分析带来了挑战。在本文中,我们开发了一种新的基于信息论的共聚类多视图学习(scICML)方法,用于多组学单细胞数据整合。scICML 利用共聚类对每一个数据视图的相似特征进行聚合,并揭示细胞的共同聚类模式。此外,scICML 还自动匹配不同数据类型中相关特征的聚类,以考虑不同类型基因组特征之间的生物学依赖结构。我们在四个真实数据集上的实验表明,scICML 提高了整体聚类性能,并为外周血单核细胞数据分析提供了生物学见解。

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