转录组
计算机科学
管道(软件)
杠杆(统计)
计算生物学
背景(考古学)
分割
人工智能
数据挖掘
模式识别(心理学)
生物
基因
遗传学
基因表达
古生物学
程序设计语言
作者
Katherine Benjamin,Aneesha Bhandari,Jessica D. Kepple,Rui Qi,Zhouchun Shang,Yanan Xing,Yanru An,Nannan Zhang,Yong Hou,Tanya L. Crockford,Oliver McCallion,Fadi Issa,Joanna Hester,Ulrike Tillmann,Heather A. Harrington,Katherine R. Bull
出处
期刊:Nature
[Nature Portfolio]
日期:2024-06-19
卷期号:630 (8018): 943-949
被引量:17
标识
DOI:10.1038/s41586-024-07563-1
摘要
Abstract Spatial transcriptomics measures in situ gene expression at millions of locations within a tissue 1 , hitherto with some trade-off between transcriptome depth, spatial resolution and sample size 2 . Although integration of image-based segmentation has enabled impactful work in this context, it is limited by imaging quality and tissue heterogeneity. By contrast, recent array-based technologies offer the ability to measure the entire transcriptome at subcellular resolution across large samples 3–6 . Presently, there exist no approaches for cell type identification that directly leverage this information to annotate individual cells. Here we propose a multiscale approach to automatically classify cell types at this subcellular level, using both transcriptomic information and spatial context. We showcase this on both targeted and whole-transcriptome spatial platforms, improving cell classification and morphology for human kidney tissue and pinpointing individual sparsely distributed renal mouse immune cells without reliance on image data. By integrating these predictions into a topological pipeline based on multiparameter persistent homology 7–9 , we identify cell spatial relationships characteristic of a mouse model of lupus nephritis, which we validate experimentally by immunofluorescence. The proposed framework readily generalizes to new platforms, providing a comprehensive pipeline bridging different levels of biological organization from genes through to tissues.
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