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MAEST:利用图掩码自动编码器在空间转录组学中进行精确的空间域检测。

MAEST: accurately spatial domain detection in spatial transcriptomics with graph masked autoencoder.

作者信息

Zhu Pengfei, Shu Han, Wang Yongtian, Wang Xiaofeng, Zhao Yuan, Hu Jialu, Peng Jiajie, Shang Xuequn, Tian Zhen, Chen Jing, Wang Tao

机构信息

School of Computer Science, Northwestern Polytechnical University, 1 Dongxiang Road, Xi'an 710072, China.

Key Laboratory of Big Data Storage and Management, Ministry of Industry and Information Technology, Northwestern Polytechnical University, 1 Dongxiang Road, Xi'an 710072, China.

出版信息

Brief Bioinform. 2025 Mar 4;26(2). doi: 10.1093/bib/bbaf086.

Abstract

Spatial transcriptomics (ST) technology provides gene expression profiles with spatial context, offering critical insights into cellular interactions and tissue architecture. A core task in ST is spatial domain identification, which involves detecting coherent regions with similar spatial expression patterns. However, existing methods often fail to fully exploit spatial information, leading to limited representational capacity and suboptimal clustering accuracy. Here, we introduce MAEST, a novel graph neural network model designed to address these limitations in ST data. MAEST leverages graph masked autoencoders to denoise and refine representations while incorporating graph contrastive learning to prevent feature collapse and enhance model robustness. By integrating one-hop and multi-hop representations, MAEST effectively captures both local and global spatial relationships, improving clustering precision. Extensive experiments across diverse datasets, including the human brain, mouse hippocampus, olfactory bulb, brain, and embryo, demonstrate that MAEST outperforms seven state-of-the-art methods in spatial domain identification. Furthermore, MAEST showcases its ability to integrate multi-slice data, identifying joint domains across horizontal tissue sections with high accuracy. These results highlight MAEST's versatility and effectiveness in unraveling the spatial organization of complex tissues. The source code of MAEST can be obtained at https://github.com/clearlove2333/MAEST.

摘要

空间转录组学(ST)技术可提供具有空间背景的基因表达谱,为细胞间相互作用和组织结构提供关键见解。ST中的一项核心任务是空间域识别,即检测具有相似空间表达模式的连贯区域。然而,现有方法往往无法充分利用空间信息,导致表征能力有限且聚类精度欠佳。在此,我们介绍MAEST,这是一种新颖的图神经网络模型,旨在解决ST数据中的这些局限性。MAEST利用图掩码自动编码器进行去噪和细化表征,同时纳入图对比学习以防止特征坍缩并增强模型鲁棒性。通过整合一跳和多跳表征,MAEST有效地捕捉局部和全局空间关系,提高聚类精度。在包括人类大脑、小鼠海马体、嗅球、大脑和胚胎在内的各种数据集上进行的广泛实验表明,MAEST在空间域识别方面优于七种先进方法。此外,MAEST展示了其整合多层数据的能力,能够高精度地识别水平组织切片中的联合域。这些结果突出了MAEST在揭示复杂组织空间组织方面的通用性和有效性。MAEST的源代码可在https://github.com/clearlove2333/MAEST获取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9ad6/11886571/dce9c076879d/bbaf086f1.jpg

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