Demultiplexing of Single-Cell RNA sequencing data using interindividual variation in gene expression

IF 2.4 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY Bioinformatics advances Pub Date : 2024-06-08 DOI:10.1093/bioadv/vbae085
I. Nassiri, Andrew J Kwok, Aneesha Bhandari, Katherine R. Bull, Lucy C. Garner, Paul Klenerman, Caleb Webber, Laura Parkkinen, Angela W Lee, Yanxia Wu, Benjamin Fairfax, Julian C. Knight, David Buck, Paolo Piazza
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Abstract

Pooled designs for single-cell RNA sequencing, where many cells from distinct samples are processed jointly, offer increased throughput and reduced batch variation. This study describes expression-aware demultiplexing (EAD), a computational method that employs differential co-expression patterns between individuals to demultiplex pooled samples without any extra experimental steps. We use synthetic sample pools and show that the top interindividual differentially co-expressed genes provide a distinct cluster of cells per individual, significantly enriching the regulation of metabolism. Our application of EAD to samples of 6 isogenic inbred mice demonstrated that controlling genetic and environmental effects can solve inter-individual variations related to metabolic pathways. We utilized 30 samples from both sepsis and healthy individuals in six batches to assess the performance of classification approaches. The results indicate that combining genetic and EAD results can enhance the accuracy of assignments (Min 0.94, Mean 0.98, Max 1). The results were enhanced by an average of 1.4% when EAD and barcoding techniques were combined (Min. 1.25%, Median 1.33%, Max. 1.74%). Furthermore, we demonstrate that interindividual differential co-expression analysis within the same cell type can be used to identify cells from the same donor in different activation states. By analyzing single-nuclei transcriptome profiles from the brain, we demonstrate that our method can be applied to non-immune cells. Expression-aware demultiplexing workflow is available at https://isarnassiri.github.io/scDIV/ as an R package called scDIV (acronym for Single Cell RNA sequencing data Demultiplexing using Interindividual Variations). Supplementary data are available at Bioinformatics Advances online.
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利用基因表达的个体间差异解复用单细胞 RNA 测序数据
单细胞 RNA 测序的汇集设计,即联合处理来自不同样本的许多细胞,可提高通量并减少批次差异。本研究介绍了表达感知解复用(EAD),这是一种利用个体间差异共表达模式解复用集合样本的计算方法,无需任何额外的实验步骤。 我们使用合成样本池,结果表明个体间差异共表达基因的前列提供了每个个体的独特细胞群,极大地丰富了新陈代谢的调控。我们将 EAD 应用于 6 个同源近交系小鼠样本,结果表明,控制遗传和环境效应可以解决与代谢途径相关的个体间差异。我们利用来自败血症和健康个体的 6 批 30 个样本来评估分类方法的性能。结果表明,结合基因和 EAD 结果可以提高分配的准确性(最小值 0.94,平均值 0.98,最大值 1)。当 EAD 和条形码技术相结合时,结果平均提高了 1.4%(最小值 1.25%,中值 1.33%,最大值 1.74%)。此外,我们还证明了同一细胞类型中的个体间差异共表达分析可用于识别处于不同激活状态的同一供体的细胞。通过分析来自大脑的单核转录组图谱,我们证明了我们的方法可以应用于非免疫细胞。 表达感知解复用工作流程作为一个名为scDIV(Single Cell RNA sequencing data Demultiplexing using Interindividual Variations)的R包可在https://isarnassiri.github.io/scDIV/。 补充数据可在 Bioinformatics Advances 在线查阅。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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