Gao Yi, Liang Jianwen, Tian Mu, Deng Wenjiang, Wang Lei, Tao Siyuan, Mou Tian
School of Biomedical Engineering, Shenzhen University Medical School, Shenzhen University, Shenzhen, 518060, China.
Guangdong Provincial Key Laboratory of Mathematical and Neural Dynamical Systems, Dongguan, 523000, China.
Sci Rep. 2025 Jul 23;15(1):26812. doi: 10.1038/s41598-025-11853-7.
Gene expression is an important process in which genes guide the synthesis of proteins, and molecular-level differences often lead to individual phenotypic variations. Combining molecular information at the nano-level with phenotypic information at the micron level can allow for the identification of a series of gene-level biomarkers related to image phenotypes and provide a more comprehensive way to understand the impact of genes on cell morphology. Currently, most studies in imaging genomics focus on tumors. However, tumor heterogeneity mitigates the reproducibility of gene-micro-correlations. Furthermore, research on the association between imaging features and gene expression patterns in multiple tissues is still lacking. This study aims to explore the correlations between the nuclear features of healthy tissue cells and RNA expression patterns. Based on 4306 samples of 13 organs from the largest human healthy tissue database, the Genotype-Tissue Expression (GTEx) project, a deep learning-based automatic analysis framework was constructed to investigate the geno-micro-correlations across tissues. The proposed framework was used to quantitatively evaluate the nuclear morphological features of each healthy organ and identify gene sets specific to nuclear features in functionally similar organs. It revealed the biological significance of these gene sets through a pathway analysis, including cell growth, development, metabolism, and immunity. The results show that differences in nuclear morphological features of healthy organs are associated with differential RNA expression. By analyzing the correlation of differential patterns in multiple healthy organs, this study revealed the associations between gene expressions and phenotypes in multiple organs.
基因表达是一个重要过程,在此过程中基因指导蛋白质的合成,而分子水平的差异往往导致个体表型变异。将纳米级的分子信息与微米级的表型信息相结合,可以识别一系列与图像表型相关的基因水平生物标志物,并提供一种更全面的方式来理解基因对细胞形态的影响。目前,成像基因组学的大多数研究都集中在肿瘤上。然而,肿瘤异质性降低了基因 - 微观相关性的可重复性。此外,关于多种组织中成像特征与基因表达模式之间关联的研究仍然缺乏。本研究旨在探索健康组织细胞的核特征与RNA表达模式之间的相关性。基于来自最大的人类健康组织数据库——基因型 - 组织表达(GTEx)项目的13个器官的4306个样本,构建了一个基于深度学习的自动分析框架,以研究跨组织的基因 - 微观相关性。所提出的框架用于定量评估每个健康器官的核形态特征,并识别功能相似器官中特定于核特征的基因集。通过通路分析揭示了这些基因集的生物学意义,包括细胞生长、发育、代谢和免疫。结果表明,健康器官的核形态特征差异与RNA表达差异相关。通过分析多个健康器官中差异模式的相关性,本研究揭示了多个器官中基因表达与表型之间的关联。