转录组
计算生物学
生物
工作流程
肿瘤微环境
蛋白质组学
计算机科学
系统生物学
空间语境意识
RNA序列
信号转导
空间分析
可扩展性
核糖核酸
蛋白质基因组学
细胞信号
生物信息学
空间生态学
神经科学
作者
Stephanie Pei Tung Yiu,Yuzhou Chang,Yao Yu Yeo,Huaying Qiu,Wenrui Wu,Hendrik A. Michel,Xiaojie Jin,Rongting Huang,Shoko Kure,Lindsay Parmelee,Shuli Luo,Precious Cramer,Jia Le Lee,Yang Wang,Zhangxin Zhao,Jason Yeung,Nourhan El Ahmar,Berkay Simsek,Razan Mohanna,McKayla Van Orden
标识
DOI:10.1158/2159-8290.cd-25-0775
摘要
Spatial transcriptomics and proteomics have enabled profound insights into tissue organization, yet these technologies remain largely disparate, and emerging same-slide multi-omics approaches are limited in plex, spatial resolution, signal retention, and integrative analytics. We introduce IN-situ DEtailed Phenotyping To High-resolution transcriptomics (IN-DEPTH), a streamlined, resource-efficient, commercially compatible workflow using single-cell spatial proteomics-derived imaging to guide transcriptomic capture on the same slide without RNA signal loss. To integrate modalities beyond niche-level mapping, we developed Spectral Graph Cross-Correlation (SGCC), a proteomic-transcriptomic framework resolving spatially coordinated functional state changes across interacting cell populations. Applied to diffuse large B-cell lymphoma (DLBCL), IN-DEPTH and SGCC enabled stepwise discovery from EBV-positive and EBV-negative tumor comparisons to single-cell resolution, revealing coordinated tumor-macrophage-CD4 T-cell remodeling, immunosuppressive C1Q macrophage enrichment, CD4 T-cell dysfunction, and a candidate IL-27-STAT3 signaling axis. Collectively, IN-DEPTH enables scalable spatial multi-omics to uncover clinically relevant microenvironmental mechanisms and towards robust spatial multi-modal AI models.
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