Adossa Nigatu, Khan Sofia, Rytkönen Kalle T, Elo Laura L
Turku Bioscience Centre, University of Turku and Åbo Akademi University, 20520 Turku, Finland.
Institute of Biomedicine, University of Turku, 20520 Turku, Finland.
Comput Struct Biotechnol J. 2021 Apr 27;19:2588-2596. doi: 10.1016/j.csbj.2021.04.060. eCollection 2021.
Single-cell omics technologies are currently solving biological and medical problems that earlier have remained elusive, such as discovery of new cell types, cellular differentiation trajectories and communication networks across cells and tissues. Current advances especially in single-cell multi-omics hold high potential for breakthroughs by integration of multiple different omics layers. To pair with the recent biotechnological developments, many computational approaches to process and analyze single-cell multi-omics data have been proposed. In this review, we first introduce recent developments in single-cell multi-omics in general and then focus on the available data integration strategies. The integration approaches are divided into three categories: early, intermediate, and late data integration. For each category, we describe the underlying conceptual principles and main characteristics, as well as provide examples of currently available tools and how they have been applied to analyze single-cell multi-omics data. Finally, we explore the challenges and prospective future directions of single-cell multi-omics data integration, including examples of adopting multi-view analysis approaches used in other disciplines to single-cell multi-omics.
单细胞组学技术目前正在解决一些此前一直难以攻克的生物学和医学问题,比如发现新的细胞类型、细胞分化轨迹以及细胞和组织间的通讯网络。当前的进展,尤其是单细胞多组学方面的进展,通过整合多个不同的组学层面,具有实现突破的巨大潜力。为了与近期的生物技术发展相匹配,人们提出了许多处理和分析单细胞多组学数据的计算方法。在这篇综述中,我们首先总体介绍单细胞多组学的近期发展,然后重点关注可用的数据整合策略。整合方法分为三类:早期、中期和晚期数据整合。对于每一类,我们描述其潜在的概念原理和主要特征,并提供当前可用工具的示例以及它们如何被应用于分析单细胞多组学数据。最后,我们探讨单细胞多组学数据整合的挑战和未来潜在方向,包括将其他学科中使用的多视图分析方法应用于单细胞多组学的示例。