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Using topic modeling to detect cellular crosstalk in scRNA-seq

机译:使用主题建模检测scRNA-seq中的细胞串扰

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Cell-cell interactions are vital for numerous biological processes including development, differentiation, and response to inflammation. Currently, most methods for studying interactions on scRNA-seq level are based on curated databases of ligands and receptors. While those methods are useful, they are limited to our current biological knowledge. Recent advances in single cell protocols have allowed for physically interacting cells to be captured, and as such we have the potential to study interactions in a complimentary way without relying on prior knowledge. We introduce a new method based on Latent Dirichlet Allocation (LDA) for detecting genes that change as a result of interaction. We apply our method to synthetic datasets to demonstrate its ability to detect genes that change in an interacting population compared to a reference population. Next, we apply our approach to two datasets of physically interacting cells to identify the genes that change as a result of interaction, examples include adhesion and co-stimulatory molecules which confirm physical interaction between cells. For each dataset we produce a ranking of genes that are changing in subpopulations of the interacting cells. In addition to the genes discussed in the original publications, we highlight further candidates for interaction in the top 100 and 300 ranked genes. Lastly, we apply our method to a dataset generated by a standard droplet-based protocol not designed to capture interacting cells, and discuss its suitability for analysing interactions. We present a method that streamlines detection of interactions and does not require prior clustering and generation of synthetic reference profiles to detect changes in expression. Author summaryWhile scRNA-seq research is a dynamic area, progress is lacking when it comes to developing methods that allow analysis of interaction independent of curated resources of known interacting pairs. Recent advances of sequencing protocols have allowed for interacting cells to be captured. We propose a novel method based on LDA that captures changes in gene expression as a result of interaction. Our method does not require prior information in the form of clustering or generation of synthetic reference profiles. We demonstrate the suitability of our approach by applying it to synthetic and real datasets and use it to capture biologically interesting interaction candidates.
机译:细胞间相互作用对于许多生物过程至关重要,包括发育、分化和对炎症的反应。目前,大多数在scRNA-seq水平上研究相互作用的方法都是基于配体和受体的精选数据库。虽然这些方法很有用,但它们仅限于我们目前的生物学知识。单细胞方案的最新进展允许捕获物理相互作用的细胞,因此我们有可能在不依赖先验知识的情况下以互补的方式研究相互作用。我们介绍了一种基于潜在狄利克雷分配(LDA)的新方法,用于检测因相互作用而变化的基因。我们将我们的方法应用于合成数据集,以证明其检测与参考群体相比在相互作用群体中发生变化的基因的能力。接下来,我们将我们的方法应用于两个物理相互作用细胞数据集,以识别由于相互作用而发生变化的基因,例如确认细胞之间物理相互作用的粘附和共刺激分子。对于每个数据集,我们都会生成在相互作用细胞亚群中发生变化的基因排名。除了原始出版物中讨论的基因外,我们还强调了排名前 100 和 300 位的基因中相互作用的更多候选基因。最后,我们将我们的方法应用于由基于液滴的标准协议生成的数据集,该协议并非旨在捕获相互作用的细胞,并讨论其对分析相互作用的适用性。我们提出了一种方法,该方法简化了相互作用的检测,并且不需要事先聚类和生成合成参考图谱来检测表达的变化。作者摘要虽然scRNA-seq研究是一个动态领域,但在开发允许独立于已知相互作用对的精选资源分析相互作用的方法方面缺乏进展。测序方案的最新进展允许捕获相互作用的细胞。我们提出了一种基于LDA的新方法,该方法可以捕获相互作用导致的基因表达变化。我们的方法不需要聚类或生成合成参考配置文件形式的先验信息。我们通过将我们的方法应用于合成和真实数据集来证明我们方法的适用性,并使用它来捕捉生物学上有趣的相互作用候选者。

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