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图深度学习实现了空间转录组学的空间域识别。

Graph deep learning enabled spatial domains identification for spatial transcriptomics.

机构信息

Clinical Research Center (CRC), Clinical Pathology Center (CPC), Chongqing University Three Gorges Hospital, Chongqing University, Wanzhou, Chongqing, P.R. China.

Hunan Provincial Key Lab on Bioinformatics, School of Computer Science and Engineering at Central South University, Hunan, P.R. China.

出版信息

Brief Bioinform. 2023 May 19;24(3). doi: 10.1093/bib/bbad146.

Abstract

Advancing spatially resolved transcriptomics (ST) technologies help biologists comprehensively understand organ function and tissue microenvironment. Accurate spatial domain identification is the foundation for delineating genome heterogeneity and cellular interaction. Motivated by this perspective, a graph deep learning (GDL) based spatial clustering approach is constructed in this paper. First, the deep graph infomax module embedded with residual gated graph convolutional neural network is leveraged to address the gene expression profiles and spatial positions in ST. Then, the Bayesian Gaussian mixture model is applied to handle the latent embeddings to generate spatial domains. Designed experiments certify that the presented method is superior to other state-of-the-art GDL-enabled techniques on multiple ST datasets. The codes and dataset used in this manuscript are summarized at https://github.com/narutoten520/SCGDL.

摘要

推进空间分辨转录组学(ST)技术有助于生物学家全面了解器官功能和组织微环境。准确的空间域识别是描绘基因组异质性和细胞相互作用的基础。受此观点的启发,本文构建了一种基于图深度学习(GDL)的空间聚类方法。首先,利用嵌入残差门控图卷积神经网络的深度图信息最大化模块来解决 ST 中的基因表达谱和空间位置问题。然后,应用贝叶斯高斯混合模型来处理潜在的嵌入以生成空间域。设计的实验证明,该方法在多个 ST 数据集上优于其他最先进的基于 GDL 的技术。本文使用的代码和数据集总结在 https://github.com/narutoten520/SCGDL 上。

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