SPEX: A modular end-to-end platform for high-plex tissue spatial omics analysis.

SPEX:用于高通量组织空间组学分析的模块化端到端平台

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作者:Li Xiao, Pechuan-Jorge Ximo, Risom Tyler, Foo Conrad, Prilipko Alexander, Zubkov Artem, Chan Caleb, Chang Patrick, Peale Frank, Ziai James, Rost Sandra, Hibar Derrek, McGinnis Lisa, Tabatsky Evgeniy, Ye Xin, Bravo Hector Corrada, Shi Zhen, Nowicka Malgorzata, Scherdin Jon, Cowan James, Giltnane Jennifer, Orlova Darya, Jesudason Rajiv
Recent advancements in transcriptomics and proteomics have opened the possibility for spatially resolved molecular characterization of tissue architecture with the promise of enabling a deeper understanding of tissue biology in either homeostasis or disease. The wealth of data generated by these technologies has recently driven the development of a wide range of computational methods. These methods have the requirement of advanced coding fluency to be applied and integrated across the full spatial omics analysis process, thus presenting a hurdle for widespread adoption by the biology research community. To address this, we introduce SPEX (Spatial Expression Explorer), a web-based analysis platform that employs modular analysis pipeline design, accessible through a user-friendly interface. SPEX's infrastructure allows for streamlined access to open-source image data management systems, analysis modules, and fully integrated data visualization solutions. Analysis modules include essential steps covering image processing, single-cell analysis, and spatial analysis. We demonstrate SPEX's ability to facilitate the discovery of biological insights in spatially resolved omics datasets from healthy tissue to tumor samples.

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