基于注意力的深度神经网络模型在单细胞水平上从多组学数据中检测顺式调控元件

IF 1.3 4区 生物学 Q4 CELL BIOLOGY
Genes to Cells Pub Date : 2025-02-04 DOI:10.1111/gtc.70000
Ken Murakami, Keita Iida, Mariko Okada
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引用次数: 0

摘要

顺式调控元件(cre)在调控基因表达、决定细胞分化和状态转变中起着至关重要的作用。为了捕捉与这些过程相关的细胞状态的异质性转变,在单细胞水平上检测cRE活性是必不可少的。然而,目前的分析方法只能捕获细胞群体中cre的平均行为,从而模糊了细胞特异性变异。为了解决这一限制,我们提出了一个基于注意力的深度神经网络框架,该框架集成了DNA序列、基因组距离和单细胞多组学数据,以检测cre及其在单个细胞中的活性。我们的模型显示,在健康人外周血单核细胞的单细胞多组学数据中识别cre的准确性高于其他现有方法。此外,它根据预测的cRE活动更精确地聚集细胞,从而实现细胞状态的更精细分化。当应用于胶质瘤患者的公开单细胞数据时,该模型成功地识别出肿瘤特异性SOX2活性。此外,它还揭示了ZEB1转录因子的异质活化,ZEB1转录因子是上皮细胞向间质过渡相关基因的调节因子,这是传统方法难以检测到的。总之,我们的模型是在单细胞水平检测cRE调控的有力工具,这可能有助于揭示细胞亚群中的耐药机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An Attention-Based Deep Neural Network Model to Detect Cis-Regulatory Elements at the Single-Cell Level From Multi-Omics Data

An Attention-Based Deep Neural Network Model to Detect Cis-Regulatory Elements at the Single-Cell Level From Multi-Omics Data

Cis-regulatory elements (cREs) play a crucial role in regulating gene expression and determining cell differentiation and state transitions. To capture the heterogeneous transitions of cell states associated with these processes, detecting cRE activity at the single-cell level is essential. However, current analytical methods can only capture the average behavior of cREs in cell populations, thereby obscuring cell-specific variations. To address this limitation, we proposed an attention-based deep neural network framework that integrates DNA sequences, genomic distances, and single-cell multi-omics data to detect cREs and their activities in individual cells. Our model shows higher accuracy in identifying cREs within single-cell multi-omics data from healthy human peripheral blood mononuclear cells than other existing methods. Furthermore, it clusters cells more precisely based on predicted cRE activities, enabling a finer differentiation of cell states. When applied to publicly available single-cell data from patients with glioma, the model successfully identified tumor-specific SOX2 activity. Additionally, it revealed the heterogeneous activation of the ZEB1 transcription factor, a regulator of epithelial-to-mesenchymal transition-related genes, which conventional methods struggle to detect. Overall, our model is a powerful tool for detecting cRE regulation at the single-cell level, which may contribute to revealing drug resistance mechanisms in cell sub-populations.

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来源期刊
Genes to Cells
Genes to Cells 生物-细胞生物学
CiteScore
3.40
自引率
0.00%
发文量
71
审稿时长
3 months
期刊介绍: Genes to Cells provides an international forum for the publication of papers describing important aspects of molecular and cellular biology. The journal aims to present papers that provide conceptual advance in the relevant field. Particular emphasis will be placed on work aimed at understanding the basic mechanisms underlying biological events.
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