Watson School of Biological Sciences, Cold Spring Harbor Laboratory, Cold Spring Harbor, New York 11724, USA.
Department of Molecular and Cellular Biology, Stony Brook University, Stony Brook, New York 11794, USA.
Genome Res. 2018 Sep;28(9):1353-1363. doi: 10.1101/gr.234062.117. Epub 2018 Jul 30.
Single-cell RNA-seq's (scRNA-seq) unprecedented cellular resolution at a genome-wide scale enables us to address questions about cellular heterogeneity that are inaccessible using methods that average over bulk tissue extracts. However, scRNA-seq data sets also present additional challenges such as high transcript dropout rates, stochastic transcription events, and complex population substructures. Here, we present a ingle-cell RNA-seq nalysis and lustering valuation (SAKE), a robust method for scRNA-seq analysis that provides quantitative statistical metrics at each step of the analysis pipeline. Comparing SAKE to multiple single-cell analysis methods shows that most methods perform similarly across a wide range of cellular contexts, with SAKE outperforming these methods in the case of large complex populations. We next applied the SAKE algorithms to identify drug-resistant cellular populations as human melanoma cells respond to targeted BRAF inhibitors (BRAFi). Single-cell RNA-seq data from both the Fluidigm C1 and 10x Genomics platforms were analyzed with SAKE to dissect this problem at multiple scales. Data from both platforms indicate that BRAF inhibitor-resistant cells can emerge from rare populations already present before drug application, with SAKE identifying both novel and known markers of resistance. These experimentally validated markers of BRAFi resistance share overlap with previous analyses in different melanoma cell lines, demonstrating the generality of these findings and highlighting the utility of single-cell analysis to elucidate mechanisms of BRAFi resistance.
单细胞 RNA 测序(scRNA-seq)在全基因组范围内对细胞的空前分辨率,使我们能够解决使用平均批量组织提取物的方法无法解决的关于细胞异质性的问题。然而,scRNA-seq 数据集还提出了其他挑战,例如高转录本脱落率、随机转录事件和复杂的群体亚结构。在这里,我们提出了一种单细胞 RNA-seq 分析和聚类评估(SAKE)方法,这是一种用于 scRNA-seq 分析的稳健方法,在分析管道的每个步骤都提供定量统计指标。将 SAKE 与多种单细胞分析方法进行比较表明,大多数方法在广泛的细胞环境中表现相似,而在复杂的大群体情况下,SAKE 优于这些方法。我们接下来应用 SAKE 算法来识别人类黑色素瘤细胞对靶向 BRAF 抑制剂(BRAFi)的耐药细胞群体。使用 SAKE 分析 Fluidigm C1 和 10x Genomics 平台的单细胞 RNA-seq 数据,以在多个尺度上剖析这个问题。来自两个平台的数据表明,BRAF 抑制剂耐药细胞可以从药物应用前已经存在的稀有群体中出现,SAKE 鉴定出了耐药的新的和已知标志物。这些经实验验证的 BRAFi 耐药标志物与先前在不同黑色素瘤细胞系中的分析重叠,证明了这些发现的普遍性,并强调了单细胞分析在阐明 BRAFi 耐药机制方面的实用性。