Liu Wendao, Zhao Zhongming
The University of Texas MD Anderson Cancer Center UTHealth Houston Graduate School of Biomedical Sciences, Houston, TX, USA.
Center for Precision Health, McWilliams School of Biomedical Informatics, The University of Texas Health Science Center at Houston, Houston, TX, USA.
bioRxiv. 2024 Aug 19:2024.08.15.608093. doi: 10.1101/2024.08.15.608093.
Immune cells undergo cytokine-driven polarization in respond to diverse stimuli. This process significantly modulates their transcriptional profiles and functional states. Although single-cell RNA sequencing (scRNA-seq) has advanced our understanding of immune responses across various diseases or conditions, currently there lacks a method to systematically examine cytokine effects and immune cell polarization. To address this gap, we developed ingle-ell nified olarization ssessment (Scupa), the first computational method for comprehensive immune cell polarization analysis. Scupa is trained on data from the Immune Dictionary, which characterizes 66 cytokine-driven polarization states across 14 immune cell types. By leveraging the cell embeddings from the Universal Cell Embeddings model, Scupa effectively identifies polarized cells in new datasets generated from different species and experimental conditions. Applications of Scupa in independent datasets demonstrated its accuracy in classifying polarized cells and further revealed distinct polarization profiles in tumor-infiltrating myeloid cells across cancers. Scupa complements conventional single-cell data analysis by providing new insights into immune cell polarization, and it holds promise for assessing molecular effects or identifying therapeutic targets in cytokine-based therapies.
免疫细胞在对各种刺激的反应中经历细胞因子驱动的极化。这一过程显著调节它们的转录谱和功能状态。尽管单细胞RNA测序(scRNA-seq)增进了我们对各种疾病或病症中免疫反应的理解,但目前缺乏一种系统地检查细胞因子效应和免疫细胞极化的方法。为了填补这一空白,我们开发了单细胞统一极化评估(Scupa),这是第一种用于全面免疫细胞极化分析的计算方法。Scupa在来自免疫词典的数据上进行训练,该词典描述了14种免疫细胞类型中的66种细胞因子驱动的极化状态。通过利用通用细胞嵌入模型中的细胞嵌入,Scupa有效地识别了来自不同物种和实验条件的新数据集中的极化细胞。Scupa在独立数据集中的应用证明了其在分类极化细胞方面的准确性,并进一步揭示了不同癌症中肿瘤浸润髓样细胞的不同极化谱。Scupa通过提供对免疫细胞极化的新见解补充了传统的单细胞数据分析,并且它有望评估基于细胞因子的疗法中的分子效应或确定治疗靶点。