Department of Developmental Neurobiology, St. Jude Children's Research Hospital, Memphis, Tennessee, USA.
Center for Spatial Omics, St. Jude Children's Research Hospital, Memphis, Tennessee, USA; email:
Annu Rev Biomed Data Sci. 2024 Aug;7(1):131-153. doi: 10.1146/annurev-biodatasci-102523-103640. Epub 2024 Jul 24.
Overlaying omics data onto spatial biological dimensions has been a promising technology to provide high-resolution insights into the interactome and cellular heterogeneity relative to the organization of the molecular microenvironment of tissue samples in normal and disease states. Spatial omics can be categorized into three major modalities: () next-generation sequencing-based assays, () imaging-based spatially resolved transcriptomics approaches including in situ hybridization/in situ sequencing, and () imaging-based spatial proteomics. These modalities allow assessment of transcripts and proteins at a cellular level, generating large and computationally challenging datasets. The lack of standardized computational pipelines to analyze and integrate these nonuniform structured data has made it necessary to apply artificial intelligence and machine learning strategies to best visualize and translate their complexity. In this review, we summarize the currently available techniques and computational strategies, highlight their advantages and limitations, and discuss their future prospects in the scientific field.
将组学数据叠加到空间生物学维度上,是一种很有前途的技术,可以提供高分辨率的见解,了解组织样本中分子微环境的相互作用和细胞异质性,无论是在正常状态还是疾病状态下。空间组学可以分为三大类:()基于下一代测序的检测方法,()包括原位杂交/原位测序在内的基于成像的空间转录组学方法,以及()基于成像的空间蛋白质组学。这些方法允许在细胞水平上评估转录本和蛋白质,生成庞大且具有计算挑战性的数据集。由于缺乏分析和整合这些非均匀结构化数据的标准化计算流程,因此有必要应用人工智能和机器学习策略来最好地可视化和转化它们的复杂性。在这篇综述中,我们总结了目前可用的技术和计算策略,强调了它们的优点和局限性,并讨论了它们在科学领域的未来前景。