首页> 外文期刊>Journal of biomolecular screening: The official journal of the Society for Biomolecular Screening >Machine learning improves the precision and robustness of high-content screens: Using nonlinear multiparametric methods to analyze screening results
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Machine learning improves the precision and robustness of high-content screens: Using nonlinear multiparametric methods to analyze screening results

机译:机器学习提高了高内涵屏幕的准确性和鲁棒性:使用非线性多参数方法分析筛选结果

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Imaging-based high-content screens often rely on single cell-based evaluation of phenotypes in large data sets of microscopic images. Traditionally, these screens are analyzed by extracting a few image-related parameters and use their ratios (linear single or multiparametric separation) to classify the cells into various phenotypic classes. In this study, the authors show how machine learning-based classification of individual cells outperforms those classical ratio-based techniques. Using fluorescent intensity and morphological and texture features, they evaluated how the performance of data analysis increases with increasing feature numbers. Their findings are based on a case study involving an siRNA screen monitoring nucleoplasmic and nucleolar accumulation of a fluorescently tagged reporter protein. For the analysis, they developed a complete analysis workflow incorporating image segmentation, feature extraction, cell classification, hit detection, and visualization of the results. For the classification task, the authors have established a new graphical framework, the Advanced Cell Classifier, which provides a very accurate high-content screen analysis with minimal user interaction, offering access to a variety of advanced machine learning methods.
机译:基于影像的高内涵屏幕通常依赖于大型图像图像数据集中基于单细胞的表型评估。传统上,这些屏幕是通过提取一些与图像相关的参数来分析的,并使用它们的比率(线性单参数或多参数分离)将细胞分类为各种表型。在这项研究中,作者展示了基于机器学习的单个细胞分类如何胜过那些传统的基于比率的技术。他们使用荧光强度以及形态和纹理特征,评估了数据分析的性能如何随特征数量的增加而增加。他们的发现基于一个案例研究,该案例涉及一个siRNA筛查,该筛查监测荧光标记的报告蛋白的核质和核仁积累。为了进行分析,他们开发了一个完整的分析工作流程,其中包括图像分割,特征提取,单元格分类,命中检测和结果可视化。对于分类任务,作者建立了一个新的图形框架Advanced Cell Classifier,该框架可在用户交互最少的情况下提供非常准确的高内容屏幕分析,并提供对各种高级机器学习方法的访问。

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