CoCo-ST: Comparing and Contrasting Spatial Transcriptomics data sets using graph contrastive learning.

Muhammad Aminu,Bo Zhu,Natalie Vokes, Hong Chen,Lingzhi Hong, Jianrong Li,Junya Fujimoto, Yuqui Yang, Tao Wang,Bo Wang, Alissa Poteete,Monique B Nilsson, Xiuning Le, Cascone Tina,David Jaffray, Nick Navin, Lauren A Byers,Don Gibbons,John Heymach, Ken Chen,Chao Cheng, Jianjun Zhang,Jia Wu

Research square(2024)

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摘要
Traditional feature dimension reduction methods have been widely used to uncover biological patterns or structures within individual spatial transcriptomics data. However, these methods are designed to yield feature representations that emphasize patterns or structures with dominant high variance, such as the normal tissue spatial pattern in a precancer setting. Consequently, they may inadvertently overlook patterns of interest that are potentially masked by these high-variance structures. Herein we present our graph contrastive feature representation method called CoCo-ST (Comparing and Contrasting Spatial Transcriptomics) to overcome this limitation. By incorporating a background data set representing normal tissue, this approach enhances the identification of interesting patterns in a target data set representing precancerous tissue. Simultaneously, it mitigates the influence of dominant common patterns shared by the background and target data sets. This enables discerning biologically relevant features crucial for capturing tissue-specific patterns, a capability we showcased through the analysis of serial mouse precancerous lung tissue samples.
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