工作流程
计算机科学
数据挖掘
聚类分析
限制
分割
质量(理念)
人工智能
一致性(知识库)
稳健性(进化)
控制(管理)
空间分析
连贯性(哲学赌博策略)
数据质量
图像分割
自动化
图像质量
模式识别(心理学)
机器学习
可视化
合成数据
质量控制
灵活性(工程)
空间相干性
噪音(视频)
作者
Benedetta Banzi,Dario Righelli,Matteo Marchionni,Oriana Romano,Mattia Forcato,Davide Risso,Silvio Bicciato
标识
DOI:10.64898/2025.12.24.696336
摘要
ABSTRACT Quality control (QC) is a critical step in the analysis of imaging-based single-cell spatial omics data, yet standardized metrics tailored to these technologies are still lacking. Most existing QC approaches are adapted from single-cell sequencing workflows and rely on fixed thresholds, limiting their ability to capture complex artifacts arising from image processing, tissue morphology, and platform-specific effects. Here, we present SpaceTrooper, a data-driven QC framework that computes an integrated per-cell quality score by combining expression-derived and morphological features. Without relying on fixed thresholds, SpaceTrooper systematically identifies low-quality cells caused by segmentation errors, signal loss, elevated background, spatial distortions, and tissue-derived artifacts. Across diverse tissues, technologies, and modalities, SpaceTrooper robustly detects technical failures and substantially improves clustering and cell-type coherence relative to conventional QC strategies.
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