Integrating gene expression and imaging data across Visium capture areas with visiumStitched

Nicholas J. Eagles, Svitlana V. Bach, Madhavi Tippani, Prashanti Ravichandran, Yufeng Du, Ryan A. Miller, Thomas Hyde, Stephanie C. Page, Keri Martinowich, Leonardo Collado-Torres
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Abstract

Background Visium is a widely-used spatially-resolved transcriptomics assay available from 10x Genomics. Standard Visium capture areas (6.5mm by 6.5mm) limit the survey of larger tissue structures, but combining overlapping images and associated gene expression data allow for more complex study designs. Current software can handle nested or partial image overlaps, but is designed for merging up to two capture areas, and cannot account for some technical scenarios related to capture area alignment. Results We generated Visium data from a postmortem human tissue sample such that two capture areas were partially overlapping and a third one was adjacent. We developed the R/Bioconductor package visiumStitched, which facilitates stitching the images together with Fiji (ImageJ), and constructing SpatialExperiment R objects with the stitched images and gene expression data. visiumStitched constructs an artificial hexagonal array grid which allows seamless downstream analyses such as spatially-aware clustering without discarding data from overlapping spots. Data stitched with visiumStitched can then be interactively visualized with spatialLIBD. Conclusions visiumStitched provides a simple, but flexible framework to handle various multi-capture area study design scenarios. Specifically, it resolves a data processing step without disrupting analysis workflows and without discarding data from overlapping spots. visiumStiched relies on affine transformations by Fiji, which have limitations and are less accurate when aligning against an atlas or other situations. visiumStiched provides an easy-to-use solution which expands possibilities for designing multi-capture area study designs.
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利用 visiumStitched 整合 Visium 捕获区域的基因表达和成像数据
背景 Visium 是一种广泛使用的空间分辨转录组学检测方法,可从 10x Genomics 购买。标准的 Visium 捕获区域(6.5 毫米乘 6.5 毫米)限制了对较大组织结构的调查,但将重叠图像和相关基因表达数据结合起来可实现更复杂的研究设计。目前的软件可以处理嵌套或部分图像重叠,但最多只能合并两个捕获区域,而且不能考虑与捕获区域对齐相关的一些技术方案。结果我们从死后人体组织样本中生成了 Visium 数据,其中两个捕获区域部分重叠,第三个捕获区域相邻。我们开发了R/Bioconductor软件包visiumStitched,它有助于用Fiji(ImageJ)将图像拼接在一起,并用拼接后的图像和基因表达数据构建SpatialExperiment R对象。visiumStitched构建了一个人工六边形阵列网格,可以进行无缝的下游分析,如空间感知聚类,而不会丢弃重叠点的数据。用 visiumStitched 拼接的数据可以用 spatialLIBD 进行交互式可视化。结论 visiumStitched 为处理各种多捕获区研究设计方案提供了一个简单而灵活的框架。visiumStiched 依赖于 Fiji 的仿射变换,但这种方法有其局限性,在与地图集或其他情况对齐时准确性较低。
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