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首页> 外文期刊>Computers in Biology and Medicine >Segmentation of microarray images using pixel classification-Comparison with clustering-based methods
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Segmentation of microarray images using pixel classification-Comparison with clustering-based methods

机译:使用像素分类比较和基于聚类的方法对微阵列图像进行分割

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摘要

Objective: DNA microarray technology yields expression profiles for thousands of genes, in a single hybridization experiment. The quantification of the expression level is performed using image analysis. In this paper we introduce a supervised method for the segmentation of microarray images using classification techniques. The method is able to characterize the pixels of the image as signal, background and artefact. Methods and material: The proposed method includes five steps: (a) an automated gridding method which provides a cell of the image for each spot. (b) Three multichannel vector filters are employed to preprocess the raw image. (c) Features are extracted from each pixel of the image. (d) The dimension of the feature set is reduced. (e) Support vector machines are used for the classification of pixels as signal, background, artefacts. The proposed method is evaluated using both real images from the Stanford microarray database and simulated images generated by a microarray data simulator. The signal and the background pixels, which are responsible for the quantification of the expression levels, are efficiently detected. Results: A quality measure (qindex) and the pixel-by-pixel accuracy are used for the evaluation of the proposed method. The obtained qindex varies from 0.742 to 0.836. The obtained accuracy for the real images is about 98%, while the accuracies for the good, normal and bad quality simulated images are 96, 93 and 71%, respectively. The proposed classification method is compared to clustering-based techniques, which have been proposed for microarray image segmentation. This comparison shows that the classification-based method reports better results, improving the performance by up to 20%. Conclusions: The proposed method can be used for segmentation of microarray images with high accuracy, indicating that segmentation can be improved using classification instead of clustering. The proposed method is supervised and it can only be used when training data are available.
机译:目的:DNA芯片技术可在单个杂交实验中产生数千个基因的表达谱。表达水平的定量使用图像分析进行。在本文中,我们介绍了一种使用分类技术对微阵列图像进行分割的监督方法。该方法能够将图像的像素表征为信号,背景和伪像。方法和材料:所提出的方法包括五个步骤:(a)自动网格化方法,该方法为每个点提供图像单元。 (b)采用三个多通道矢量滤波器对原始图像进行预处理。 (c)从图像的每个像素中提取特征。 (d)缩小功能集的尺寸。 (e)支持向量机用于将像素分类为信号,背景,伪像。既可以使用斯坦福大学微阵列数据库中的真实图像,也可以使用微阵列数据模拟器生成的模拟图像对所提出的方法进行评估。有效地检测了负责表达水平定量的信号和背景像素。结果:使用质量度量(qindex)和逐像素精度来评估所提出的方法。获得的qindex在0.742至0.836之间变化。所获得的真实图像准确度约为98%,而良好,正常和不良质量的模拟图像的准确度分别为96%,93%和71%。将所提出的分类方法与已提出用于微阵列图像分割的基于聚类的技术进行比较。这种比较表明,基于分类的方法报告了更好的结果,将性能提高了20%。结论:所提出的方法可用于高精度的微阵列图像分割,表明使用分类代替聚类可以改善分割效果。该方法受到监督,只能在有训练数据的情况下使用。

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