计算机科学
可扩展性
图像拼接
过程(计算)
注释
组学
数据挖掘
分割
计算生物学
构造(python库)
空间分析
人工智能
成对比较
机器学习
可视化
数据集成
模式识别(心理学)
基因组学
作者
Ying Zhang,Huanlin Liu,Haoxiu Wang,Zirong Li,Yumei Li,Jidong Chen,Jinghong Fan,Yi Ji,Can Shi,Xinyu Ren,Qiang Kang,Yinqi Bai,Shuangsang Fang,Jing Guo,Heng Yang,Dongmei Jia,Sha Liao,Ao Chen,Haojing Shao,Mei Li
出处
期刊:
[Cold Spring Harbor Laboratory]
日期:2025-10-25
被引量:1
标识
DOI:10.1101/2025.10.23.683357
摘要
Abstract Spatial omics has rapidly expanded with increasingly diverse imaging modalities, molecular targets, and chip sizes. However, no general framework currently exists to construct cell level matrices that are robust across platforms and omics types. Here we present CellBin, a universal and scalable frame-work that unifies image stitching, cell segmentation, and spot-to-cell mapping for multiple spatial omics technologies. CellBin integrates a multi-field weighted stitching algorithm for large-area images, a family of U-Net–based models trained across diverse staining modalities, and an optimized computational architecture for high-throughput processing. Across five technological platforms and three omics data types, CellBin achieves robust segmentation and accurate single-cell matrix construction, consistently outperforming seven state-of-the-art methods in F1-score, cell size precision, and annotation accuracy. By providing a generalizable, cross-platform solution, CellBin bridges multiple spatial omics, enabling unified, high-resolution cell level analyses across technologies.
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