Fatemi Michael Y, Lu Yunrui, Sharma Cyril, Feng Eric, Azher Zarif L, Diallo Alos B, Srinivasan Gokul, Rosner Grace M, Pointer Kelli B, Christensen Brock C, Salas Lucas A, Tsongalis Gregory J, Palisoul Scott M, Perreard Laurent, Kolling Fred W, Vaickus Louis J, Levy Joshua J
medRxiv. 2023 Oct 9:2023.10.09.23296701. doi: 10.1101/2023.10.09.23296701.
Spatial transcriptomics involves studying the spatial organization of gene expression within tissues, offering insights into the molecular diversity of tumors. While spatial gene expression is commonly amalgamated from 1-10 cells across 50-micron spots, recent methods have demonstrated the capability to disaggregate this information at subspot resolution by leveraging both expression and histological patterns. However, elucidating such information from histology alone presents a significant challenge but if solved can better permit spatial molecular analysis at cellular resolution for instances where Visium data is not available, reducing study costs. This study explores integrating single-cell histological and transcriptomic data to infer spatial mRNA expression patterns in whole slide images collected from a cohort of stage pT3 colorectal cancer patients. A cell graph neural network algorithm was developed to align histological information extracted from detected cells with single cell RNA patterns through optimal transport methods, facilitating the analysis of cellular groupings and gene relationships. This approach leveraged spot-level expression as an intermediary to co-map histological and transcriptomic information at the single-cell level.
Our study demonstrated that single-cell transcriptional heterogeneity within a spot could be predicted from histological markers extracted from cells detected within a spot. Furthermore, our model exhibited proficiency in delineating overarching gene expression patterns across whole-slide images. This approach compared favorably to traditional patch-based computer vision methods as well as other methods which did not incorporate single cell expression during the model fitting procedures. Topological nuances of single-cell expression within a Visium spot were preserved using the developed methodology.
This innovative approach augments the resolution of spatial molecular assays utilizing histology as a sole input through synergistic co-mapping of histological and transcriptomic datasets at the single-cell level, anchored by spatial transcriptomics. While initial results are promising, they warrant rigorous validation. This includes collaborating with pathologists for precise spatial identification of distinct cell types and utilizing sophisticated assays, such as Xenium, to attain deeper subcellular insights.
空间转录组学涉及研究组织内基因表达的空间组织,为肿瘤的分子多样性提供见解。虽然空间基因表达通常是从跨越50微米斑点的1至10个细胞中合并而来,但最近的方法已证明能够通过利用表达和组织学模式在亚斑点分辨率下分解这些信息。然而,仅从组织学中阐明此类信息面临重大挑战,但如果解决,对于没有Visium数据的情况,可以更好地在细胞分辨率下进行空间分子分析,从而降低研究成本。本研究探索整合单细胞组织学和转录组数据,以推断从一组pT3期结直肠癌患者收集的全切片图像中的空间mRNA表达模式。开发了一种细胞图神经网络算法,通过最优传输方法将从检测到的细胞中提取的组织学信息与单细胞RNA模式进行比对,便于分析细胞分组和基因关系。这种方法利用斑点水平的表达作为中介,在单细胞水平上共同映射组织学和转录组信息。
我们的研究表明,可以从斑点内检测到的细胞中提取的组织学标记预测斑点内的单细胞转录异质性。此外,我们的模型在描绘全切片图像上的总体基因表达模式方面表现出熟练程度。与传统的基于补丁的计算机视觉方法以及在模型拟合过程中未纳入单细胞表达的其他方法相比,这种方法具有优势。使用所开发的方法保留了Visium斑点内单细胞表达的拓扑细微差别。
这种创新方法通过在单细胞水平上对组织学和转录组数据集进行协同共映射,以空间转录组学为基础,利用组织学作为唯一输入,提高了空间分子检测的分辨率。虽然初步结果很有希望,但仍需严格验证。这包括与病理学家合作,对不同细胞类型进行精确的空间识别,并利用复杂的检测方法,如Xenium,以获得更深入的亚细胞见解。