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Parameterizing cell-to-cell regulatory heterogeneities via stochastic transcriptional profiles

机译:通过随机转录谱参数化细胞间调节异质性

摘要

Regulated changes in gene expression underlie many biological processes, but globally profiling cell-to-cell variations in transcriptional regulation is problematic when measuring single cells. Transcriptome-wide identification of regulatory heterogeneities can be robustly achieved by randomly collecting small numbers of cells followed by statistical analysis. However, this stochastic-profiling approach blurs out the expression states of the individual cells in each pooled sample. Various aspects of the disclosure show that the underlying distribution of single-cell regulatory states can be deconvolved from stochastic-profiling data through maximum-likelihood inference. Guided by the mechanisms of transcriptional regulation, the disclosure provides mixture models for cell-to-cell regulatory heterogeneity which result in likelihood functions to infer model parameters. Inferences that validate both computationally and experimentally different mixture models, which include regulatory states for multicellular function occupied by as few as one in 40 cells of the population, are also encompassed. When the disclosed method extends to programs of heterogeneously coexpressed transcripts, the population-level inferences are much more accurate with pooled samples than with one-cell samples when the extent of sampling was limited. The disclosed deconvolution method provides a means to quantify the heterogeneous regulation of molecular states efficiently and gain a deeper understanding of the heterogeneous execution of cell decisions.
机译:基因表达的调控变化是许多生物学过程的基础,但是在测量单个细胞时,在转录调控中对细胞间的变化进行全球概况分析是有问题的。通过随机收集少量细胞,然后进行统计分析,可以可靠地实现转录组范围内调节异质性的鉴定。但是,这种随机分析方法模糊了每个合并样品中单个细胞的表达状态。本公开的各个方面表明,可以通过最大似然推断将随机配置数据从卷积单细胞调节状态的基础分布中解卷积。在转录调节机制的指导下,本公开提供了用于细胞间调节异质性的混合模型,其导致似然函数来推断模型参数。还涵盖了在计算和实验上不同的混合模型(包括人口中每40个细胞中只有一个细胞所占据的多细胞功能的调节状态)进行验证的推论。当所公开的方法扩展到异类共表达转录物的程序时,在采样范围受到限制的情况下,与单细胞样品相比,合并样品的总体水平推断要准确得多。所公开的解卷积方法提供了一种有效地量化分子状态的异质调节并获得对细胞决定的异质执行的更深入理解的手段。

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