生物
聚类分析
计算生物学
注释
公制(单位)
水准点(测量)
同种类的
相似性(几何)
基因注释
DNA测序
核糖核酸
基因
基因组
基因组学
遗传学
RNA序列
基因组计划
序列(生物学)
共识聚类
DNA微阵列
模式识别(心理学)
表型
系统生物学
分类
深度测序
人工智能
分辨率(逻辑)
星团(航天器)
作者
Christopher Thai,Amartya Singh,Daniel Herranz,Hossein Khiabanian
标识
DOI:10.1038/s44320-025-00176-4
摘要
Single-cell RNA sequencing allows defining cellular identities based on transcriptional similarity using unsupervised clustering. However, a single clustering resolution may not yield groups of cells that represent both broad, well-defined populations and smaller subpopulations simultaneously. Therefore, when cell identities are not known prior to sequencing, robust comparison and annotation of inferred de novo clusters remains a challenge. Here, we introduce CANTAO, in which we propose the average overlap metric to define the distance between single-cell clusters by comparing ranked lists of differentially expressed genes in a top-weighted manner. We benchmark CANTAO in truth-known datasets comprised of similar yet distinct cell populations and show that evaluating clusters with average overlap results in a consistent, precise, and biologically meaningful recapitulation of true cell identities. We then analyze unsorted mouse thymocytes and characterize stages of T-cell development in the thymus, including minor populations of double-negative (CD4-CD8-) T cells that are difficult to confidently detect among unsorted single cells. We demonstrate that CANTAO enables robust, reproducible characterization of single-cell data and clarifies biological interpretation of underlying identities in homogeneous populations.
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