“…The major obstacles in integrating data from multiple modalities are the existence of batch effects and the distinct feature spaces of different omics data. , Integrating MS-based and imaging-based spatial proteomics approaches allows simultaneous analyses of multiple organelles at different time points, which can help understand disease processes. Advanced data analysis pipelines for such spatiotemporal analyses are desired to better integrate spatial and temporal maps of proteome changes during disease progression. , Since the occurrence of disease changes multiple interacting components of biological systems (such as RNA, proteins, lipids, and metabolites), multiomics integration incorporating spatial proteomics can give unprecedented insights into cell functionality. , Combining spatial proteomics and other omics data enables comprehensive studies of the heterogeneity in various diseases, and numerous related investigations have been conducted. ,− The development of analytical tools that provide workflows for multimodal data integration is currently a big challenge . Moreover, the lack of unified and systematic data analysis tools hampers the comparative analyses of changes in protein spatial patterns under different conditions .…”