Learning sequence-based regulatory dynamics in single-cell genomics

bioRxiv Pub Date : 2024-08-08 DOI:10.1101/2024.08.07.605876
Ignacio L Ibarra, Johanna Schneeberger, Ege Erdogan, Lennart Redl, Laura Martens, Dominik Klein, H. Aliee, Fabian J. Theis
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Abstract

Epigenomics assays, such as chromatin accessibility, can identify DNA-sequence-specific regulatory factors. Models that predict read counts from sequence features can explain cell-based readouts using specific DNA patterns (genomic motifs) but do not encode the changes in genomic regulation over time, which is crucial for understanding biological events during cell transitions. To bridge this gap, we present muBind, a deep learning model that accurately predicts genomic counts of single-cell datasets based on DNA sequence features, their cell-based activities, and cell relationships (graphs) in a single architecture, enhancing the interpretability of cell transitions due to the possibility of inspecting motif activities weighted by nearest neighbors. MuBind shows competitive performance in bulk and single-cell genomics. When complemented with graphs learned from RNA-based dynamical models used as injected priors in our model, muBind enhances through motif-graph interactions the identification of transcriptional regulators explaining cell transition events, including Sox9 in pancreatic endocrinogenesis scATAC-seq, and Gli3/Prdm16 in mouse neurogenesis and human organoids scRNA-seq, both supported by independent evidence, including associations between chromatin and motif activities over pseudotime, TF-gene expression patterns, and biological knowledge of these regulators. muBind advances our understanding of cell transitions by revealing regulatory motifs and their interactions, providing valuable insights for genomic research and gene regulatory network dynamics. It is available at https://github.com/theislab/mubind.
学习单细胞基因组学中基于序列的调控动态
染色质可及性等表观基因组学检测可以识别 DNA 序列特异性调控因子。根据序列特征预测读数的模型可以利用特定的DNA模式(基因组图案)解释基于细胞的读数,但不能编码基因组调控随时间的变化,而这对于理解细胞转换过程中的生物事件至关重要。为了弥合这一差距,我们提出了一种深度学习模型--muBind,它能在单一架构中根据 DNA 序列特征、基于细胞的活动和细胞关系(图谱)准确预测单细胞数据集的基因组计数,由于可以通过近邻加权检查图案活动,从而提高了细胞转换的可解释性。MuBind 在大块基因组学和单细胞基因组学中表现出极具竞争力的性能。在我们的模型中,muBind 将基于 RNA 的动力学模型作为注入先验,与从这些模型中学习到的图互补,通过主题图与主题图之间的相互作用,提高了对解释细胞转换事件的转录调控因子的识别能力,包括胰腺内分泌发生 scATAC-seq 中的 Sox9 和小鼠神经发生及人类器官组织 scRNA-seq 中的 Gli3/Prdm16,两者都得到了独立证据的支持,包括染色质与主题活动在伪时间上的关联、TF 基因表达模式以及这些调控因子的生物学知识。muBind 通过揭示调控基团及其相互作用,为基因组研究和基因调控网络动态提供有价值的见解,从而推进我们对细胞转换的理解。它可在 https://github.com/theislab/mubind 上获取。
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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