CellLENS支持跨域信息融合,以增强单细胞空间组学数据中细胞种群的描绘

IF 27.7 1区 医学 Q1 IMMUNOLOGY
Bokai Zhu, Sheng Gao, Shuxiao Chen, Yuchen Wang, Jason Yeung, Yunhao Bai, Amy Y. Huang, Yao Yu Yeo, Guanrui Liao, Shulin Mao, Zhenghui G. Jiang, Scott J. Rodig, Ka-Chun Wong, Alex K. Shalek, Garry P. Nolan, Sizun Jiang, Zongming Ma
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引用次数: 0

摘要

描述细胞群对于理解健康和疾病中的免疫功能至关重要。空间组学技术通过捕获三个互补的领域提供见解:单细胞分子生物标志物表达、细胞空间关系和组织结构。然而,目前的计算方法往往不能完全整合这些多维数据,特别是对于免疫细胞群和内在功能状态。我们介绍了细胞局部环境和邻域扫描(CellLENS),这是一种自监督计算方法,通过融合三个空间组学域(表达、邻域和图像)的信息来学习细胞表征。CellLENS通过整合单个细胞的分子特征及其邻近环境和组织定位,显著增强了在细粒度上生物学相关免疫细胞群的从头发现。通过将CellLENS应用于多种组织类型和疾病设置的不同空间蛋白质组学和转录组学数据集,我们发现了根据其空间背景进行功能分层的独特免疫细胞群。我们的工作证明了空间组学中多域数据集成的力量,可以揭示免疫细胞异质性和组织特异性功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

CellLENS enables cross-domain information fusion for enhanced cell population delineation in single-cell spatial omics data

CellLENS enables cross-domain information fusion for enhanced cell population delineation in single-cell spatial omics data

Delineating cell populations is crucial for understanding immune function in health and disease. Spatial omics technologies offer insights by capturing three complementary domains: single-cell molecular biomarker expression, cellular spatial relationships and tissue architecture. However, current computational methods often fail to fully integrate these multidimensional data, particularly for immune cell populations and intrinsic functional states. We introduce Cell Local Environment and Neighborhood Scan (CellLENS), a self-supervised computational method that learns cellular representations by fusing information across three spatial omics domains (expression, neighborhood and image). CellLENS markedly enhances de novo discovery of biologically relevant immune cell populations at fine granularity by integrating individual cells’ molecular profiles with their neighborhood context and tissue localization. By applying CellLENS to diverse spatial proteomic and transcriptomic datasets across multiple tissue types and disease settings, we uncover unique immune cell populations functionally stratified according to their spatial contexts. Our work demonstrates the power of multi-domain data integration in spatial omics to reveal insights into immune cell heterogeneity and tissue-specific functions.

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来源期刊
Nature Immunology
Nature Immunology 医学-免疫学
CiteScore
40.00
自引率
2.30%
发文量
248
审稿时长
4-8 weeks
期刊介绍: Nature Immunology is a monthly journal that publishes the highest quality research in all areas of immunology. The editorial decisions are made by a team of full-time professional editors. The journal prioritizes work that provides translational and/or fundamental insight into the workings of the immune system. It covers a wide range of topics including innate immunity and inflammation, development, immune receptors, signaling and apoptosis, antigen presentation, gene regulation and recombination, cellular and systemic immunity, vaccines, immune tolerance, autoimmunity, tumor immunology, and microbial immunopathology. In addition to publishing significant original research, Nature Immunology also includes comments, News and Views, research highlights, matters arising from readers, and reviews of the literature. The journal serves as a major conduit of top-quality information for the immunology community.
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