Hosted by Sydney Precision Data Science Centre Speaker: Dr Lulu Shang (MD Anderson Cancer Center) Abstract: Spatial transcriptomics is a collection of genomic technologies that enable transcriptomic profiling of tissues with spatial localization information. An essential task in spatial transcriptomics involves identifying genes with spatial expression patterns, known as spatially variable genes (SVGs). Importantly, a subset of SVGs displays diverse spatial expression patterns within a given cell type, thus representing key transcriptomic signatures underlying cellular heterogeneity. Here, we present Celina, a statistical method for systematically detecting this subset of cell type-specific SVGs (ct-SVGs). Celina utilizes a spatially varying coefficient model to accurately capture each gene’s spatial expression pattern in relation to the distribution of cell types across tissue locations, ensuring effective type I error control and high statistical power. We evaluated the performance of Celina through comprehensive simulations and applications to five real datasets, where we also adapted and examined existing methods originated from other analytic settings to detect ct-SVGs. Celina proves powerful compared to these ad hoc method adaptations in single cell resolution spatial transcriptomics and stands as the only effective solution for spot resolution spatial transcriptomics. The ct-SVGs detected by Celina also enable novel biologically informed downstream analyses, unveiling functional cellular heterogeneity at an unprecedented scale. About the speaker: Dr Shang is a tenure-track Assistant Professor in the Department of Biostatistics at MD Anderson Cancer Center. She obtained her PhD degree from the Department of Biostatistics at the University of Michigan. She is primarily interested in developing effective and efficient statistical and computational methods for analyzing large-scale genetic and genomic datasets. Specifically, her focus is on integrating multi-omics data in single-cell and spatial transcriptomics, ultimately connecting molecular insights with clinical applications. This event will be online. Zoom: https://uni-sydney.zoom.us/j/84087321707