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TRACING CO-REGULATORY NETWORK DYNAMICS IN NOISY, SINGLE-CELL TRANSCRIPTOME TRAJECTORIES

机译:在嘈杂,单细胞转录组轨迹中追踪共监管网络动态

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The availability of gene expression data at the single cell level makes it possible to probe the molecular underpinnings of complex biological processes such as differentiation and oncogenesis. Promising new methods have emerged for reconstructing a progression 'trajectory" from static single-cell transcriptome measurements. However, it remains unclear how to adequately model the appreciable level of noise in these data to elucidate gene regulatory network rewiring. Here, we present a framework called Single Cell Inference of Morphlng Trajectories and their Associated Regulation (SCIMITAR) that infers progressions from static single-cell transcriptomes by employing a continuous parametrization of Gaussian mixtures in high-dimensional curves. SCIMITAR yields rich models from the data that highlight genes with expression and co-expression patterns that are associated with the inferred progression. Further, SCIMITAR extracts regulatory states from the implicated trajectory-evolving co-expression networks. We benchmark the method on simulated data to show that it yields accurate cell ordering and gene network inferences. Applied to the interpretation of a single-cell human fetal neuron dataset, SCIMITAR finds progression-associated genes in cornerstone neural differentiation pathways missed by standard differential expression tests. Finally, by leveraging the rewiring of gene-gene co-expression relations across the progression, the method reveals the rise and fall of co-regulatory states and trajectory-dependent gene modules. These analyses implicate new transcription factors in neural differentiation including putative co-factors for the multi-functional NFAT pathway.
机译:在单细胞层的基因表达数据的可用性使得可以探测复杂生物过程的分子下限,例如分化和肿瘤发生。已经出现了从静态单细胞转录组测量重建进展“轨迹”的有希望的新方法。然而,它仍然不明确如何充分模型这些数据中的可观噪声水平,以阐明基因监管网络重新兴奋。在这里,我们展示了一个框架被称为Morphlng轨迹的单细胞推理及其相关的调节(Scimitar),其通过在高维曲线中使用高斯混合物的连续参数来递送静态单细胞转录om的进展。Scimitar从突出显示基因的数据中产生丰富的模型和与推断的进展相关联的共表达模式。此外,Scimitar从牵连的轨迹演化的共同表达网络中提取调节状态。我们基准模拟数据的方法,表明它产生了准确的细胞排序和基因网络推断。应用解释单细胞人胎儿神经元数据集,Scimitar在标准差异表达测试中错过的基石神经分化途径中发现进展相关基因。最后,通过利用进展的基因 - 基因共同表达关系的重新启动,该方法揭示了共调节状态和术依赖性基因模块的上升和下降。这些分析致命神经分化中的新转录因子,包括用于多功能NFAT途径的推定的共同因子。

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