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 multiplexed error-robust FISH (MERFISH), sequential fluorescence in situ hybridization (seqFISH), or in situ RNA sequencing (ISS) experiments. Polaris is available through the DeepCell software library (https://github.com/vanvalenlab/deepcell-spots) and https://www.deepcell.org.
Accurate single-molecule spot detection for image-based spatial transcriptomics with weakly supervised deep learning.
利用弱监督深度学习实现基于图像的空间转录组学的精确单分子斑点检测
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作者:Laubscher Emily, Wang Xuefei, Razin Nitzan, Dougherty Tom, Xu Rosalind J, Ombelets Lincoln, Pao Edward, Graf William, Moffitt Jeffrey R, Yue Yisong, Van Valen David
| 期刊: | Cell Systems | 影响因子: | 7.700 |
| 时间: | 2024 | 起止号: | 2024 May 15; 15(5):475-482 |
| doi: | 10.1016/j.cels.2024.04.006 | ||
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