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Self-assembling manifolds in single-cell RNA sequencing data

机译:单细胞RNA测序数据中的自组装歧管

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摘要

Single-cell RNA sequencing has spurred the development of computational methods that enable researchers to classify cell types, delineate developmental trajectories, and measure molecular responses to external perturbations. Many of these technologies rely on their ability to detect genes whose cell-to-cell variations arise from the biological processes of interest rather than transcriptional or technical noise. However, for datasets in which the biologically relevant differences between cells are subtle, identifying these genes is challenging. We present the self-assembling manifold (SAM) algorithm, an iterative soft feature selection strategy to quantify gene relevance and improve dimensionality reduction. We demonstrate its advantages over other state-of-the-art methods with experimental validation in identifying novel stem cell populations of Schistosoma mansoni, a prevalent parasite that infects hundreds of millions of people. Extending our analysis to a total of 56 datasets, we show that SAM is generalizable and consistently outperforms other methods in a variety of biological and quantitative benchmarks.
机译:单细胞RNA测序刺激了计算方法的发展,这些方法使研究人员能够对细胞类型进行分类,描绘发育轨迹并测量对外部干扰的分子反应。这些技术中的许多技术都依赖于其检测基因的能力,这些基因的细胞间差异源自感兴趣的生物过程,而不是转录或技术噪音。然而,对于细胞之间生物学相关差异微妙的数据集,鉴定这些基因具有挑战性。我们提出了自组装流形(SAM)算法,一种迭代的软特征选择策略,用于量化基因相关性并提高降维效果。我们通过实验验证证明了它在确定曼氏血吸虫新干细胞种群方面的优势,并优于其他最新方法,曼氏血吸虫是一种感染数亿人的普遍寄生虫。将我们的分析扩展到总共56个数据集,我们显示SAM具有通用性,并且在各种生物学和定量基准中均始终优于其他方法。

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