Optimizing Xenium In Situ data utility by quality assessment and best-practice analysis workflows.

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作者:Marco Salas Sergio, Kuemmerle Louis B, Mattsson-Langseth Christoffer, Tismeyer Sebastian, Avenel Christophe, Hu Taobo, Rehman Habib, Grillo Marco, Czarnewski Paulo, Helgadottir Saga, Tiklova Katarina, Andersson Axel, Rafati Nima, Chatzinikolaou Maria, Theis Fabian J, Luecken Malte D, Wählby Carolina, Ishaque Naveed, Nilsson Mats
The Xenium In Situ platform is a new spatial transcriptomics product commercialized by 10x Genomics, capable of mapping hundreds of genes in situ at subcellular resolution. Given the multitude of commercially available spatial transcriptomics technologies, recommendations in choice of platform and analysis guidelines are increasingly important. Herein, we explore 25 Xenium datasets generated from multiple tissues and species, comparing scalability, resolution, data quality, capacities and limitations with eight other spatially resolved transcriptomics technologies and commercial platforms. In addition, we benchmark the performance of multiple open-source computational tools, when applied to Xenium datasets, in tasks including preprocessing, cell segmentation, selection of spatially variable features and domain identification. This study serves as an independent analysis of the performance of Xenium, and provides best practices and recommendations for analysis of such datasets.

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