2020
DOI: 10.1101/2020.06.15.150698
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Discovery of molecular features underlying morphological landscape by integrating spatial transcriptomic data with deep features of tissue image

Abstract: Profiling molecular features associated with the morphological landscape of tissue is crucial to interrogate structural and spatial patterns that underlie biological function of tissues.Here, we present a new method, SPADE, to identify important genes associated with morphological contexts by combining spatial transcriptomic data with co-registered images.SPADE incorporates deep learning-derived image patterns with spatially resolved gene expression data to extract morphological context markers. Morphological … Show more

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