Harvard University, Cambridge, MA, USA.
University of California San Diego School of Medicine, San Diego, CA, USA.
Nat Commun. 2024 Sep 1;15(1):7610. doi: 10.1038/s41467-024-51649-3.
Single-cell transcriptomics has emerged as a powerful tool for understanding how different cells contribute to disease progression by identifying cell types that change across diseases or conditions. However, detecting changing cell types is challenging due to individual-to-individual and cohort-to-cohort variability and naive approaches based on current computational tools lead to false positive findings. To address this, we propose a computational tool, scDist, based on a mixed-effects model that provides a statistically rigorous and computationally efficient approach for detecting transcriptomic differences. By accurately recapitulating known immune cell relationships and mitigating false positives induced by individual and cohort variation, we demonstrate that scDist outperforms current methods in both simulated and real datasets, even with limited sample sizes. Through the analysis of COVID-19 and immunotherapy datasets, scDist uncovers transcriptomic perturbations in dendritic cells, plasmacytoid dendritic cells, and FCER1G+NK cells, that provide new insights into disease mechanisms and treatment responses. As single-cell datasets continue to expand, our faster and statistically rigorous method offers a robust and versatile tool for a wide range of research and clinical applications, enabling the investigation of cellular perturbations with implications for human health and disease.
单细胞转录组学已经成为一种强大的工具,可以通过识别在疾病或状态之间发生变化的细胞类型,来了解不同细胞如何促进疾病进展。然而,由于个体间和队列间的可变性,以及基于当前计算工具的幼稚方法,检测变化的细胞类型具有挑战性,这会导致假阳性发现。为了解决这个问题,我们提出了一种基于混合效应模型的计算工具 scDist,它提供了一种统计上严格和计算高效的方法来检测转录组差异。通过准确再现已知的免疫细胞关系,并减轻个体和队列变化引起的假阳性,我们证明 scDist 在模拟和真实数据集上都优于当前的方法,即使样本量有限。通过对 COVID-19 和免疫治疗数据集的分析,scDist 揭示了树突状细胞、浆细胞样树突状细胞和 FCER1G+NK 细胞中的转录组扰动,为疾病机制和治疗反应提供了新的见解。随着单细胞数据集的不断扩展,我们更快、更具统计学严谨性的方法为广泛的研究和临床应用提供了一个强大而通用的工具,使我们能够研究对人类健康和疾病有影响的细胞扰动。