School of Computer Science and Technology, Xidian University, Xi'an 710100, China.
Brief Bioinform. 2024 Jan 22;25(2). doi: 10.1093/bib/bbae063.
Most sequencing-based spatial transcriptomics (ST) technologies do not achieve single-cell resolution where each captured location (spot) may contain a mixture of cells from heterogeneous cell types, and several cell-type decomposition methods have been proposed to estimate cell type proportions of each spot by integrating with single-cell RNA sequencing (scRNA-seq) data. However, these existing methods did not fully consider the effect of distribution difference between scRNA-seq and ST data for decomposition, leading to biased cell-type-specific genes derived from scRNA-seq for ST data. To address this issue, we develop an instance-based transfer learning framework to adjust scRNA-seq data by ST data to correctly match cell-type-specific gene expression. We evaluate the effect of raw and adjusted scRNA-seq data on cell-type decomposition by eight leading decomposition methods using both simulated and real datasets. Experimental results show that data adjustment can effectively reduce distribution difference and improve decomposition, thus enabling for a more precise depiction on spatial organization of cell types. We highlight the importance of data adjustment in integrative analysis of scRNA-seq with ST data and provide guidance for improved cell-type decomposition.
大多数基于测序的空间转录组学(ST)技术无法实现单细胞分辨率,因为每个捕获位置(斑点)可能包含来自异质细胞类型的混合细胞,并且已经提出了几种细胞类型分解方法,通过整合单细胞 RNA 测序(scRNA-seq)数据来估计每个斑点的细胞类型比例。然而,这些现有方法并没有充分考虑 scRNA-seq 和 ST 数据之间分布差异对分解的影响,导致从 ST 数据的 scRNA-seq 中得出的细胞类型特异性基因存在偏差。为了解决这个问题,我们开发了一种基于实例的迁移学习框架,通过 ST 数据来调整 scRNA-seq 数据,以正确匹配细胞类型特异性基因表达。我们使用模拟和真实数据集,通过八种领先的分解方法评估原始和调整后的 scRNA-seq 数据对细胞类型分解的影响。实验结果表明,数据调整可以有效地减少分布差异并改善分解,从而能够更准确地描绘细胞类型的空间组织。我们强调了在 scRNA-seq 与 ST 数据的综合分析中进行数据调整的重要性,并为改进的细胞类型分解提供了指导。