About this Research Topic
The emerging spatial transcriptomics data will undoubtedly lead to an explosion of innovations in spatial statistics, an area fueled by breakthrough technologies in data collection and rooted in model-driven statistical research. To fully understand the diversity and potential impacts of spatial distributions of gene expression, customized statistical models are urgently needed. Our goal is to trigger new methodological developments in statistics via collecting advanced Bayesian and frequentist statistical methods for analyzing spatial transcriptomics data. Besides, we foresee the new computation methods will deepen our knowledge of biological mechanisms.
Areas of interest for this Research Topic include, but not limited to: spatial transcriptomics data curation, global and local spatially variable gene identification, spatial clustering, cell type deconvolution, generation of super-resolution gene expression, expression and histology integrated tissue annotation, gene expression prediction from histology, spatial location recovery of single cells, etc. All types of manuscripts, including survey, theoretical, methodological, application, and software, are welcomed.
Keywords: Spatial statistics, spatial molecular profiling, spatial pattern, spatial clustering, cell deconvolution, super-resolution
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