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SEAL:基于链接成像数据的空间分辨嵌入分析

SEAL: Spatially-resolved Embedding Analysis with Linked Imaging Data.

作者信息

Warchol Simon, Guo Grace, Knittel Johannes, Freeman Dan, Bhalla Usha, Muhlich Jeremy L, Sorger Peter K, Pfister Hanspeter

出版信息

bioRxiv. 2025 Jul 28:2025.07.19.665696. doi: 10.1101/2025.07.19.665696.

Abstract

Dimensionality reduction techniques help analysts make sense of complex, high-dimensional spatial datasets, such as multiplexed tissue imaging, satellite imagery, and astronomical observations, by projecting data attributes into a two-dimensional space. However, these techniques typically abstract away crucial spatial, positional, and morphological contexts, complicating interpretation and limiting insights. To address these limitations, we present SEAL, an interactive visual analytics system designed to bridge the gap between abstract 2D embeddings and their rich spatial imaging context. SEAL introduces a novel hybrid-embedding visualization that preserves image and morphological information while integrating critical high-dimensional feature data. By adapting set visualization methods, SEAL allows analysts to identify, visualize, and compare selections-defined manually or algorithmically-in both the embedding and original spatial views, facilitating a deeper understanding of the spatial arrangement and morphological characteristics of entities of interest. To elucidate differences between selected sets of items, SEAL employs a scalable surrogate model to calculate feature importance scores, identifying the most influential features governing the position of objects within embeddings. These importance scores are visually summarized across selections, with mathematical set operations enabling detailed comparative analyses. We demonstrate SEAL's effectiveness and versatility through three case studies: colorectal cancer tissue analysis with a pharmacologist, melanoma investigation with a cell biologist, and exploration of sky survey data with an astronomer. These studies underscore the importance of integrating image context into embedding spaces when interpreting complex imaging datasets. Implemented as a standalone tool while also integrating seamlessly with computational notebooks, SEAL provides an interactive platform for spatially informed exploration of high-dimensional datasets, significantly enhancing interpretability and insight generation.

摘要

降维技术通过将数据属性投影到二维空间,帮助分析师理解复杂的高维空间数据集,如多重组织成像、卫星图像和天文观测数据。然而,这些技术通常会忽略关键的空间、位置和形态背景,使解释变得复杂并限制了洞察力。为了解决这些限制,我们提出了SEAL,这是一个交互式视觉分析系统,旨在弥合抽象的二维嵌入与其丰富的空间成像背景之间的差距。SEAL引入了一种新颖的混合嵌入可视化方法,在集成关键的高维特征数据时保留图像和形态信息。通过采用集合可视化方法,SEAL允许分析师在嵌入视图和原始空间视图中识别、可视化和比较手动或算法定义的选择,有助于更深入地理解感兴趣实体的空间排列和形态特征。为了阐明所选项目集之间的差异,SEAL采用了一种可扩展的替代模型来计算特征重要性得分,识别控制嵌入中对象位置的最具影响力的特征。这些重要性得分在各个选择中进行可视化汇总,通过数学集合运算实现详细的比较分析。我们通过三个案例研究展示了SEAL的有效性和多功能性:与药理学家一起进行结直肠癌组织分析、与细胞生物学家一起进行黑色素瘤研究以及与天文学家一起探索巡天数据。这些研究强调了在解释复杂成像数据集时将图像背景集成到嵌入空间中的重要性。SEAL既作为一个独立工具实现,又能与计算笔记本无缝集成,为高维数据集的空间信息探索提供了一个交互式平台,显著增强了可解释性并促进了洞察力的生成。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6f4e/12360347/ff9fa7eaba6f/nihpp-2025.07.19.665696v4-f0001.jpg

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