Zhao Yanping, Wang Kui, Hu Gang
School of Statistics and Data Science, LPMC and KLMDASR, Nankai University, Tianjin, China.
Brief Bioinform. 2023 Mar 19;24(2). doi: 10.1093/bib/bbad013.
Spatially resolved transcriptomics technologies enable comprehensive measurement of gene expression patterns in the context of intact tissues. However, existing technologies suffer from either low resolution or shallow sequencing depth. Here, we present DIST, a deep learning-based method that imputes the gene expression profiles on unmeasured locations and enhances the gene expression for both original measured spots and imputed spots by self-supervised learning and transfer learning. We evaluate the performance of DIST for imputation, clustering, differential expression analysis and functional enrichment analysis. The results show that DIST can impute the gene expression accurately, enhance the gene expression for low-quality data, help detect more biological meaningful differentially expressed genes and pathways, therefore allow for deeper insights into the biological processes.
空间分辨转录组学技术能够在完整组织的背景下全面测量基因表达模式。然而,现有技术存在分辨率低或测序深度浅的问题。在此,我们提出了DIST,一种基于深度学习的方法,该方法可在未测量位置估算基因表达谱,并通过自监督学习和迁移学习增强原始测量点和估算点的基因表达。我们评估了DIST在估算、聚类、差异表达分析和功能富集分析方面的性能。结果表明,DIST能够准确估算基因表达,增强低质量数据的基因表达,有助于检测更多具有生物学意义的差异表达基因和通路,从而更深入地洞察生物学过程。