IEEE/ACM Trans Comput Biol Bioinform. 2022 Jul-Aug;19(4):2512-2522. doi: 10.1109/TCBB.2021.3061720. Epub 2022 Aug 8.
Cellular programs often exhibit strong heterogeneity and asynchrony in the timing of program execution. Single-cell RNA-seq technology has provided an unprecedented opportunity for characterizing these cellular processes by simultaneously quantifying many parameters at single-cell resolution. Robust trajectory inference is a critical step in the analysis of dynamic temporal gene expression, which can shed light on the mechanisms of normal development and diseases. Here, we present TiC2D, a novel algorithm for cell trajectory inference from single-cell RNA-seq data, which adopts a consensus clustering strategy to precisely cluster cells. To evaluate the power of TiC2D, we compare it with three state-of-the-art methods on four independent single-cell RNA-seq datasets. The results show that TiC2D can accurately infer developmental trajectories from single-cell transcriptome. Furthermore, the reconstructed trajectories enable us to identify key genes involved in cell fate determination and to obtain new insights about their roles at different developmental stages.
细胞程序通常在程序执行的时间上表现出强烈的异质性和异步性。单细胞 RNA-seq 技术通过在单细胞分辨率上同时定量许多参数,为描述这些细胞过程提供了前所未有的机会。稳健的轨迹推断是分析动态时间基因表达的关键步骤,它可以揭示正常发育和疾病的机制。在这里,我们提出了 TiC2D,这是一种从单细胞 RNA-seq 数据中推断细胞轨迹的新算法,它采用共识聚类策略来精确地对细胞进行聚类。为了评估 TiC2D 的性能,我们将其与三种最先进的方法在四个独立的单细胞 RNA-seq 数据集上进行了比较。结果表明,TiC2D 可以从单细胞转录组中准确推断发育轨迹。此外,重构的轨迹使我们能够识别参与细胞命运决定的关键基因,并获得关于它们在不同发育阶段的作用的新见解。