Song Xiaoyu, Shang Yuqing, Ehrlich Michelle E, Roussos Panos, Yuan Guo-Cheng, Wang Pei
Centre for Quantitative Medicine, Duke-NUS Medical School, Singapore 169857;
Centre for Quantitative Medicine, Duke-NUS Medical School, Singapore 169857.
Genome Res. 2025 Aug 1;35(8):1821-1831. doi: 10.1101/gr.279859.124.
Recent advances in spatially resolved transcriptomics (SRT) have provided valuable avenues for identifying cell-cell interactions and their critical roles in diseases. Here, we introduce QuadST, a novel statistical method for the robust and powerful identification of cell-cell interactions and their impacted genes in single-cell SRT. QuadST models interactions at different cell-cell distance quantile levels and innovatively contrasts signals to identify interaction-changed genes, which exhibit stronger signals at shorter distances. Unlike other methods, QuadST does not require the specification of interacting cell pairs. It is also robust against unmeasured confounding factors and measurement errors of the data. Simulation studies demonstrate that QuadST effectively controls the type I error, even in misspecified settings, and significantly improves power over existing methods. Applications of QuadST to real data sets reveal biologically significant interaction-changed genes across various cell types.
空间分辨转录组学(SRT)的最新进展为识别细胞间相互作用及其在疾病中的关键作用提供了宝贵途径。在此,我们介绍QuadST,这是一种用于在单细胞SRT中稳健且有力地识别细胞间相互作用及其受影响基因的新型统计方法。QuadST在不同细胞间距离分位数水平上对相互作用进行建模,并创新性地对比信号以识别相互作用改变的基因,这些基因在较短距离处表现出更强的信号。与其他方法不同,QuadST不需要指定相互作用的细胞对。它对未测量的混杂因素和数据的测量误差也具有稳健性。模拟研究表明,即使在设定错误的情况下,QuadST也能有效控制I型错误,并且与现有方法相比显著提高了检验效能。将QuadST应用于实际数据集揭示了跨各种细胞类型具有生物学意义的相互作用改变基因。