Resolving tissue complexity by multimodal spatial omics modeling with MISO

利用MISO的多模态空间组学建模解析组织复杂性

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作者:Kyle Coleman ,Amelia Schroeder ,Melanie Loth ,Daiwei Zhang ,Jeong Hwan Park ,Ji-Youn Sung ,Niklas Blank ,Alexis J Cowan ,Xuyu Qian ,Jianfeng Chen ,Jiahui Jiang ,Hanying Yan ,Laith Z Samarah ,Jean R Clemenceau ,Inyeop Jang ,Minji Kim ,Isabel Barnfather ,Joshua D Rabinowitz ,Yanxiang Deng ,Edward B Lee ,Alexander Lazar ,Jianjun Gao ,Emma E Furth ,Tae Hyun Hwang ,Linghua Wang ,Christoph A Thaiss ,Jian Hu ,Mingyao Li

Abstract

Spatial molecular profiling has provided biomedical researchers valuable opportunities to better understand the relationship between cellular localization and tissue function. Effectively modeling multimodal spatial omics data is crucial for understanding tissue complexity and underlying biology. Furthermore, improvements in spatial resolution have led to the advent of technologies that can generate spatial molecular data with subcellular resolution, requiring the development of computationally efficient methods that can handle the resulting large-scale datasets. MISO (MultI-modal Spatial Omics) is a versatile algorithm for feature extraction and clustering, capable of integrating multiple modalities from diverse spatial omics experiments with high spatial resolution. Its effectiveness is demonstrated across various datasets, encompassing gene expression, protein expression, epigenetics, metabolomics and tissue histology modalities. MISO outperforms existing methods in identifying biologically relevant spatial domains, representing a substantial advancement in multimodal spatial omics analysis. Moreover, MISO's computational efficiency ensures its scalability to handle large-scale datasets generated by subcellular resolution spatial omics technologies.

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