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Phenotype Recognition with Combined Features and Random Subspace Classifier Ensemble

机译:具有组合特征和随机子空间分类器集合的表型识别

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摘要

BackgroundAutomated, image based high-content screening is a fundamental tool for discovery in biological science. Modern robotic fluorescence microscopes are able to capture thousands of images from massively parallel experiments such as RNA interference (RNAi) or small-molecule screens. As such, efficient computational methods are required for automatic cellular phenotype identification capable of dealing with large image data sets. In this paper we investigated an efficient method for the extraction of quantitative features from images by combining second order statistics, or Haralick features, with curvelet transform. A random subspace based classifier ensemble with multiple layer perceptron (MLP) as the base classifier was then exploited for classification. Haralick features estimate image properties related to second-order statistics based on the grey level co-occurrence matrix (GLCM), which has been extensively used for various image processing applications. The curvelet transform has a more sparse representation of the image than wavelet, thus offering a description with higher time frequency resolution and high degree of directionality and anisotropy, which is particularly appropriate for many images rich with edges and curves. A combined feature description from Haralick feature and curvelet transform can further increase the accuracy of classification by taking their complementary information. We then investigate the applicability of the random subspace (RS) ensemble method for phenotype classification based on microscopy images. A base classifier is trained with a RS sampled subset of the original feature set and the ensemble assigns a class label by majority voting.
机译:背景技术基于图像的自动高内涵筛选是生物科学发现的基本工具。现代机器人荧光显微镜能够从大规模平行实验(例如RNA干扰(RNAi)或小分子屏幕)捕获数千张图像。这样,对于能够处理大图像数据集的自动细胞表型识别,需要有效的计算方法。在本文中,我们研究了通过结合二阶统计量或Haralick特征与Curvelet变换从图像中提取定量特征的有效方法。然后,利用多层感知器(MLP)作为基础分类器的基于随机子空间的分类器集合进行分类。 Haralick的功能基于灰度共现矩阵(GLCM)估计与二阶统计量有关的图像属性,该矩阵已广泛用于各种图像处理应用程序。与小波相比,curvelet变换对图像的表示更为稀疏,因此提供了具有更高时频分辨率和高度方向性和各向异性的描述,这尤其适用于许多具有边缘和曲线的图像。 Haralick特征和Curvelet变换的组合特征描述可以通过获取互补信息来进一步提高分类的准确性。然后,我们调查基于显微镜图像的表型分类的随机子空间(RS)集成方法的适用性。基本分类器使用原始特征集的RS采样子集进行训练,并且集合通过多数投票分配类别标签。

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