转录组
电池类型
乳腺癌
雌激素受体
计算生物学
细胞
生物
基因表达谱
癌症研究
癌症
遗传学
基因
基因表达
作者
Siyu He,Yinuo Jin,Achille Nazaret,Lingting Shi,Xueer Chen,Sham Rampersaud,Bahawar S. Dhillon,Izabella Valdez,Lauren E Friend,Joy Linyue Fan,Cameron Y. Park,Rachel L. Mintz,Yeh‐Hsing Lao,David Carrera,Kaylee W Fang,Kaleem Mehdi,Madeline Rohde,José L. McFaline‐Figueroa,David M. Blei,Kam W. Leong,Alexander Y. Rudensky,George Plitas,Elham Azizi
标识
DOI:10.1038/s41587-024-02173-8
摘要
Spatially resolved gene expression profiling provides insight into tissue organization and cell-cell crosstalk; however, sequencing-based spatial transcriptomics (ST) lacks single-cell resolution. Current ST analysis methods require single-cell RNA sequencing data as a reference for rigorous interpretation of cell states, mostly do not use associated histology images and are not capable of inferring shared neighborhoods across multiple tissues. Here we present Starfysh, a computational toolbox using a deep generative model that incorporates archetypal analysis and any known cell type markers to characterize known or new tissue-specific cell states without a single-cell reference. Starfysh improves the characterization of spatial dynamics in complex tissues using histology images and enables the comparison of niches as spatial hubs across tissues. Integrative analysis of primary estrogen receptor (ER)-positive breast cancer, triple-negative breast cancer (TNBC) and metaplastic breast cancer (MBC) tissues led to the identification of spatial hubs with patient- and disease-specific cell type compositions and revealed metabolic reprogramming shaping immunosuppressive hubs in aggressive MBC.
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