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首页> 外文期刊>Cytometry: The Journal of the Society for Analytical Cytology >Automated recognition of patterns characteristic of subcellular structures in fluorescence microscopy images
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Automated recognition of patterns characteristic of subcellular structures in fluorescence microscopy images

机译:在荧光显微镜图像中自动识别亚细胞结构特征模式

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摘要

Methods for numerical description and subsequent classification of cellular protein localization patterns are described. Images representing the localization patterns of 4 proteins and DNA were obtained using fluorescence microscopy and divided into distinct training and test sets. The images were processed to remove out-of-focus and background fluorescence and 2 sets of numeric features were generated: Zernike moments and Haralick texture features, These feature sets were used as inputs to either a classification tree or a neural network. Classifier performance (the average percent of each type of image correctly classified) on previously unseen images ranged from 63% for a classification tree using Zernike moments to 88% for a backpropagation neural network using a combination of features from the 2 feature sets, These results demonstrate the feasibility of applying pattern recognition methods to subcellular localization patterns, enabling sets of previously unseen images from a single class to be classified with an expected accuracy greater than 99%, This will provide not: only a new automated way to describe proteins, based on localization rather than sequence, but also has potential application in the automation of microscope functions and in the field of gene discovery. (C) 1998 Wiley-Liss, Inc. [References: 30]
机译:描述了用于数值描述和随后分类细胞蛋白定位模式的方法。使用荧光显微镜获得代表4种蛋白质和DNA定位模式的图像,并将其分为不同的训练集和测试集。对图像进行处理以消除散焦和背景荧光,并生成2组数字特征:Zernike矩和Haralick纹理特征。这些特征集用作分类树或神经网络的输入。在先前看不见的图像上,分类器性能(正确分类的每种图像的平均百分比)从使用Zernike矩的分类树的63%到使用2个特征集的特征组合的反向传播神经网络的88%不等,这些结果演示了将模式识别方法应用于亚细胞定位模式的可行性,从而能够以期望的准确度大于99%的方式对来自单个类别的先前看不见的图像进行分类,这将不会:仅提供一种基于蛋白质的新型自动描述方法定位而不是序列,但在显微镜功能的自动化和基因发现领域也有潜在的应用。 (C)1998 Wiley-Liss,Inc. [参考:30]

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