Accurate single-molecule spot detection for image-based spatial transcriptomics with weakly supervised deep learning.

Emily Laubscher, Xuefei Julie Wang, Nitzan Razin, Tom Dougherty,Rosalind J Xu, Lincoln Ombelets,Edward Pao,William Graf, Jeffrey R Moffitt,Yisong Yue,David Van Valen

bioRxiv : the preprint server for biology(2024)

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摘要
Image-based spatial transcriptomics methods enable transcriptome-scale gene expression measurements with spatial information but require complex, manually-tuned analysis pipelines. We present Polaris, an analysis pipeline for image-based spatial transcriptomics that combines deep learning models for cell segmentation and spot detection with a probabilistic gene decoder to quantify single-cell gene expression accurately. Polaris offers a unifying, turnkey solution for analyzing spatial transcriptomics data from MERFSIH, seqFISH, or ISS experiments. Polaris is available through the DeepCell software library (https://github.com/vanvalenlab/deepcell-spots) and https://www.deepcell.org.
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关键词
spatial transcriptomics,deep learning,single-molecule,image-based
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