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首页> 外文期刊>Journal of biomolecular screening: The official journal of the Society for Biomolecular Screening >An automated high-content screening image analysis pipeline for the identification of selective autophagic inducers in human cancer cell lines
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An automated high-content screening image analysis pipeline for the identification of selective autophagic inducers in human cancer cell lines

机译:用于识别人类癌细胞系中选择性自噬诱导物的自动化高内涵筛选图像分析管线

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摘要

Automated image processing is a critical and often rate-limiting step in high-content screening (HCS) workflows. The authors describe an open-source imaging-statistical framework with emphasis on segmentation to identify novel selective pharmacological inducers of autophagy. They screened a human alveolar cancer cell line and evaluated images by both local adaptive and global segmentation. At an individual cell level, region-growing segmentation was compared with histogram-derived segmentation. The histogram approach allowed segmentation of a sporadic-pattern foreground and hence the attainment of pixel-level precision. Single-cell phenotypic features were measured and reduced after assessing assay quality control. Hit compounds selected by machine learning corresponded well to the subjective threshold-based hits determined by expert analysis. Histogram-derived segmentation displayed robustness against image noise, a factor adversely affecting region growing segmentation.
机译:在高内涵筛选(HCS)工作流程中,自动图像处理是关键且通常是速率限制的步骤。作者描述了一个开放源代码的影像统计框架,重点是进行细分以识别新型的自噬选择性药理诱导剂。他们筛选了人类肺泡癌细胞系,并通过局部适应性和整体性分割来评估图像。在单个细胞水平上,将区域增长分割与直方图衍生分割进行了比较。直方图方法允许对偶发图案前景进行分割,从而实现像素级精度。在评估分析质量控制后,测量并减少了单细胞表型特征。通过机器学习选择的命中化合物与通过专家分析确定的基于主观阈值的命中非常吻合。直方图得出的分割显示出对图像噪声的鲁棒性,这是对区域增长分割产生不利影响的因素。

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