单细胞和空间组学数据中亚群检测的度量方法

IF 13.1 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Siyuan Luo, Pierre-Luc Germain, Ferdinand von Meyenn, Mark D Robinson
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引用次数: 0

摘要

基准对于理解单细胞和空间组学分析越来越多的工具的优缺点至关重要。关键任务是区分复杂组织中的亚群,其中评估通常依赖于外部聚类验证指标。不同的指标经常导致排名不一致,这突出了理解每个指标的行为和生物学含义的重要性。在这项工作中,我们提供了一个框架,用于系统地理解和选择单细胞数据分析的验证指标,解决诸如创建细胞嵌入、构建图、聚类和空间域检测等任务。我们的讨论集中在指标的理想属性上,侧重于生物学相关性和潜在的偏差。使用这个框架,我们不仅可以分析现有的指标,还可以开发新的指标。深入研究空间组学数据中的域检测,我们开发了适合空间感知测量的新外部度量。此外,一个Bioconductor R包,诗,实现了所有讨论的指标。当我们专注于单细胞组学时,许多讨论与其他类型的高维数据有更广泛的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On metrics for subpopulation detection in single-cell and spatial omics data
Benchmarks are crucial to understanding the strengths and weaknesses of the growing number of tools for single-cell and spatial omics analysis. A key task is to distinguish subpopulations within complex tissues, where evaluation typically relies on external clustering validation metrics. Different metrics often lead to inconsistencies between rankings, highlighting the importance of understanding the behavior and biological implications of each metric. In this work, we provide a framework for systematically understanding and selecting validation metrics for single-cell data analysis, addressing tasks such as creating cell embeddings, constructing graphs, clustering, and spatial domain detection. Our discussion centers on the desirable properties of metrics, focusing on biological relevance and potential biases. Using this framework, we not only analyze existing metrics but also develop novel ones. Delving into domain detection in spatial omics data, we develop new external metrics tailored to spatially aware measurements. Additionally, a Bioconductor R package, poem, implements all the metrics discussed. While we focus on single-cell omics, much of the discussion is of broader relevance to other types of high-dimensional data.
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来源期刊
Nucleic Acids Research
Nucleic Acids Research 生物-生化与分子生物学
CiteScore
27.10
自引率
4.70%
发文量
1057
审稿时长
2 months
期刊介绍: Nucleic Acids Research (NAR) is a scientific journal that publishes research on various aspects of nucleic acids and proteins involved in nucleic acid metabolism and interactions. It covers areas such as chemistry and synthetic biology, computational biology, gene regulation, chromatin and epigenetics, genome integrity, repair and replication, genomics, molecular biology, nucleic acid enzymes, RNA, and structural biology. The journal also includes a Survey and Summary section for brief reviews. Additionally, each year, the first issue is dedicated to biological databases, and an issue in July focuses on web-based software resources for the biological community. Nucleic Acids Research is indexed by several services including Abstracts on Hygiene and Communicable Diseases, Animal Breeding Abstracts, Agricultural Engineering Abstracts, Agbiotech News and Information, BIOSIS Previews, CAB Abstracts, and EMBASE.
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