细胞
标杆管理
计算机科学
分割
电池类型
CD8型
生物
计算生物学
细胞生物学
免疫系统
人工智能
免疫学
遗传学
业务
营销
作者
Daniel C. Jones,Anna Elz,Azadeh Hadadianpour,Heeju Ryu,David R. Glass,Evan W. Newell
标识
DOI:10.1101/2024.04.25.591218
摘要
Single-cell spatial transcriptomics promises a highly detailed view of a cell's transcriptional state and microenvironment, yet inaccurate cell segmentation can render this data murky by misattributing large numbers of transcripts to nearby cells or conjuring nonexistent cells. We adopt methods from ab initio cell simulation to rapidly infer morphologically plausible cell boundaries that preserve cell type heterogeneity. Benchmarking applied to datasets generated by three commercial platforms show superior performance and computational efficiency of this approach compared with existing methods. We show that improved accuracy in cell segmentation aids greatly in detection of difficult to accurately segment tumor infiltrating immune cells such as neutrophils and T cells. Lastly, through improvements in our ability to delineate subsets of tumor infiltrating T cells, we show that CXCL13-expressing CD8+ T cells tend to be more closely associated with tumor cells than their CXCL13-negative counterparts in data generated from renal cell carcinoma patient samples.
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