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ScAGCN:用于单细胞RNA测序数据降维的具有自适应聚合机制的图卷积网络

ScAGCN: Graph Convolutional Network with Adaptive Aggregation Mechanism for scRNA-seq Data Dimensionality Reduction.

作者信息

Zhu Xiaoshu, Zhao Liquan, Teng Fei, Meng Shuang, Xie Miao

机构信息

School of Computer and Information Security, Guangxi Key Laboratory of Trusted Software, Guilin University of Electronic Technology, Guilin, 541004, China.

School of Computer Science and Engineering, Guangxi Normal University, Guilin, 541006, China.

出版信息

Interdiscip Sci. 2025 Apr 25. doi: 10.1007/s12539-025-00702-w.

Abstract

With the development of single-cell RNA-sequencing (scRNA-seq) technology, scRNA-seq data analysis suffers huge challenges due to large scale, high dimensionality, high noise, and high sparsity. To achieve accurately embedded representation in the large-scale scRNA-seq data, we try to design a novel graph convolutional network with an adaptive aggregation mechanism. Based on the assumption that the aggregation order of different cells would be different, a graph convolutional network with an adaptive aggregation-based dimensionality reduction algorithm for scRNA-seq data is developed, named scAGCN. In scAGCN, a preprocessing consisting of quality control and feature selection is implemented. Then, an approximate nearest neighbor graph is rapidly constructed. Finally, a graph convolutional network with an adaptive aggregation mechanism is constructed, in which the neighborhood selection strategy based on node distribution and similarity boxplots is designed, and the aggregation function is optimized by defining a similarity measurement between neighborhood nodes and the central node. The results show that scAGCN outperforms existing dimensionality reduction methods on 15 real scRNA-seq datasets, especially in 10 large-scale scRNA-seq datasets.

摘要

随着单细胞RNA测序(scRNA-seq)技术的发展,scRNA-seq数据分析由于其规模大、维度高、噪声大以及稀疏性高而面临巨大挑战。为了在大规模scRNA-seq数据中实现准确的嵌入表示,我们尝试设计一种具有自适应聚合机制的新型图卷积网络。基于不同细胞的聚合顺序会有所不同这一假设,开发了一种用于scRNA-seq数据的基于自适应聚合的降维算法的图卷积网络,名为scAGCN。在scAGCN中,实施了由质量控制和特征选择组成的预处理。然后,快速构建近似最近邻图。最后,构建具有自适应聚合机制的图卷积网络,其中设计了基于节点分布和相似性箱线图的邻域选择策略,并通过定义邻域节点与中心节点之间的相似性度量来优化聚合函数。结果表明,scAGCN在15个真实的scRNA-seq数据集上优于现有的降维方法,尤其是在10个大规模scRNA-seq数据集上。

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