Smoothie:从去噪的空间转录组学数据有效推断空间共表达网络。

Chase Holdener, Iwijn De Vlaminck
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引用次数: 0

摘要

发现空间基因表达的相关性是空间转录组学的基础,因为组织内的共表达基因通过调控、功能、途径或细胞类型联系在一起。然而,空间转录组学数据的稀疏性和噪声给分析带来了重大挑战。在这里,我们介绍了Smoothie,这是一种使用高斯平滑对空间转录组学数据进行降噪并构建和整合全基因组共表达网络的方法。利用隐式和显式并行化,Smoothie扩展到超过1亿个空间分辨点的数据集,具有快速的运行时间和低内存使用。我们展示了Smoothie测量的共表达网络如何实现精确的基因模块检测、未表征基因的功能注释、基因表达与基因组结构的联系以及多样本比较,以评估跨组织、条件和时间点的稳定或动态基因表达模式。总体而言,Smoothie提供了一个可扩展和通用的框架,用于从高分辨率空间转录组学数据中提取深入的生物学见解。
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Smoothie: Efficient Inference of Spatial Co-expression Networks from Denoised Spatial Transcriptomics Data.

Finding correlations in spatial gene expression is fundamental in spatial transcriptomics, as co-expressed genes within a tissue are linked by regulation, function, pathway, or cell type. Yet, sparsity and noise in spatial transcriptomics data pose significant analytical challenges. Here, we introduce Smoothie, a method that denoises spatial transcriptomics data with Gaussian smoothing and constructs and integrates genome-wide co-expression networks. Utilizing implicit and explicit parallelization, Smoothie scales to datasets exceeding 100 million spatially resolved spots with fast run times and low memory usage. We demonstrate how co-expression networks measured by Smoothie enable precise gene module detection, functional annotation of uncharacterized genes, linkage of gene expression to genome architecture, and multi-sample comparisons to assess stable or dynamic gene expression patterns across tissues, conditions, and time points. Overall, Smoothie provides a scalable and versatile framework for extracting deep biological insights from high-resolution spatial transcriptomics data.

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