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首页> 外文期刊>Methods: A Companion to Methods in Enzymology >An open-source solution for advanced imaging flow cytometry data analysis using machine learning
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An open-source solution for advanced imaging flow cytometry data analysis using machine learning

机译:使用机器学习的高级成像流量细胞仪数据分析的开源解决方案

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Imaging flow cytometry (IFC) enables the high throughput collection of morphological and spatial information from hundreds of thousands of single cells. This high content, information rich image data can in theory resolve important biological differences among complex, often heterogeneous biological samples. However, data analysis is often performed in a highly manual and subjective manner using very limited image analysis techniques in combination with conventional flow cytometry gating strategies. This approach is not scalable to the hundreds of available image-based features per cell and thus makes use of only a fraction of the spatial and morphometric information. As a result, the quality, reproducibility and rigour of results are limited by the skill, experience and ingenuity of the data analyst. Here, we describe a pipeline using open-source software that leverages the rich information in digital imagery using machine learning algorithms. Compensated and corrected raw image files (.rif) data files from an imaging flow cytometer (the proprietary .cif file format) are imported into the open-source software CellProfiler, where an image processing pipeline identifies cells and subcellular compartments allowing hundreds of morphological features to be measured. This high-dimensional data can then be analysed using cutting-edge machine learning and clustering approaches using "user-friendly" platforms such as CellProfiler Analyst. Researchers can train an automated cell classifier to recognize different cell types, cell cycle phases, drug treatment/control conditions, etc., using supervised machine learning. This work-flow should enable the scientific community to leverage the full analytical power of IFC-derived data sets. It will help to reveal otherwise unappreciated populations of cells based on features that may be hidden to the human eye that include subtle measured differences in label free detection channels such as bright-field and dark-field imagery. (C) 2016 The Authors. Published by Elsevier Inc.
机译:成像流式细胞仪(IFC)使得能够来自数十万个单个细胞的高吞吐量集合的形态和空间信息。这种高含量,信息丰富的图像数据可以理论上可以解决复杂的复杂性的重要生物差异,通常是异质的生物样本。然而,使用非常有限的图像分析技术与常规流式细胞术门控策略结合使用非常有限的图像分析技术,通常以高度手动和主观的方式进行数据分析。该方法不可扩展到每个单元的数百种基于图像的特征,因此使用仅使用空间和形态学信息的一部分。结果,结果的质量,再现性和严谨性受到数据分析师的技能,经验和聪明才智的限制。在这里,我们描述了一种使用机器学习算法利用数字图像中丰富的信息的开源软件的管道。来自成像流动缩细仪(专有的.cif文件格式)的补偿和纠正的原始图像文件(.RIF)数据文件(专有的.cif文件格式)被导入开源软件细胞预防器,其中图像处理管道识别允许数百个形态特征的细胞和亚细胞室被测量。然后可以使用诸如CellProfiler分析师等“用户友好的”平台的尖端机器学习和聚类方法来分析该高维数据。研究人员可以使用受监管机器学习训练自动细胞分类器以识别不同的细胞类型,细胞周期阶段,药物治疗/控制条件等。此工作流程应使科学界能够利用IFC派生数据集的完整分析力。它将有助于揭示基于可能隐藏于人眼的特征的另外未被覆盖的细胞群,其中包括标签自由检测通道(如亮场和暗场图像)的微妙测量差异。 (c)2016年作者。 elsevier公司发布

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