Department of Computer Science, City University of Hong Kong, Kowloon 999077, Hong Kong.
School of Computer Science and Engineering, South China University of Technology, Guangdong 510006, China.
Brief Bioinform. 2024 Sep 23;25(6). doi: 10.1093/bib/bbae523.
The spatial reconstruction of single-cell RNA sequencing (scRNA-seq) data into spatial transcriptomics (ST) is a rapidly evolving field that addresses the significant challenge of aligning gene expression profiles to their spatial origins within tissues. This task is complicated by the inherent batch effects and the need for precise gene expression characterization to accurately reflect spatial information. To address these challenges, we developed SELF-Former, a transformer-based framework that utilizes multi-scale structures to learn gene representations, while designing spatial correlation constraints for the reconstruction of corresponding ST data. SELF-Former excels in recovering the spatial information of ST data and effectively mitigates batch effects between scRNA-seq and ST data. A novel aspect of SELF-Former is the introduction of a gene filtration module, which significantly enhances the spatial reconstruction task by selecting genes that are crucial for accurate spatial positioning and reconstruction. The superior performance and effectiveness of SELF-Former's modules have been validated across four benchmark datasets, establishing it as a robust and effective method for spatial reconstruction tasks. SELF-Former demonstrates its capability to extract meaningful gene expression information from scRNA-seq data and accurately map it to the spatial context of real ST data. Our method represents a significant advancement in the field, offering a reliable approach for spatial reconstruction.
单细胞 RNA 测序(scRNA-seq)数据的空间重构为空间转录组学(ST)是一个快速发展的领域,解决了将基因表达谱与其在组织内的空间起源进行对齐的重大挑战。这个任务很复杂,因为存在固有批次效应,需要精确的基因表达特征来准确反映空间信息。为了解决这些挑战,我们开发了基于转换器的框架 SELF-Former,它利用多尺度结构来学习基因表示,同时设计空间相关约束来重建相应的 ST 数据。SELF-Former 擅长恢复 ST 数据的空间信息,并有效地减轻 scRNA-seq 和 ST 数据之间的批次效应。SELF-Former 的一个新颖特点是引入了基因过滤模块,通过选择对准确空间定位和重建至关重要的基因,显著提高了空间重建任务的性能。SELF-Former 的模块在四个基准数据集上的表现和有效性得到了验证,证明它是一种用于空间重建任务的强大而有效的方法。SELF-Former 展示了从 scRNA-seq 数据中提取有意义的基因表达信息并准确映射到真实 ST 数据的空间背景的能力。我们的方法代表了该领域的重大进展,为空间重建提供了一种可靠的方法。