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A Classification-Based Segmentation of cDNA Microarray Images using Support Vector Machines

机译:使用支持向量机的CDNA微阵列图像的基于分类的分割

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Microarray technology provides a tool for the simultaneous analysis of the expression level for an amount of genes. Microarray studies have been shown that image processing techniques can significantly influence microarray data precision. In this paper we propose a supervised method for the segmentation of microarray images based on classification techniques. Support Vector machine is employed to classify each pixel of the image into signal, background or artefacts. In addition, a preprocessing step is applied in order to filter the initial image. The proposed method is applied both to real and simulated images. The pixels of the image are classified in two classes for the real images and three classes for the simulated one. For this task, an informative set of features is used from both green and red channels. The results obtained indicate high accuracy (~99%).
机译:微阵列技术为同时分析了基因量的表达水平提供了一种工具。已经显示微阵列研究,图像处理技术可以显着影响微阵列数据精度。本文提出了一种基于分类技术的微阵列图像分割的监督方法。支持向量机用于将图像的每个像素分类为信号,背景或人工制品。另外,应用预处理步骤以滤波初始图像。所提出的方法应用于真实和模拟图像。图像的像素被分类为用于真实图像的两个类和用于模拟的类的三个类。对于此任务,从绿色和红色通道使用信息集。得到的结果表明高精度(〜99%)。

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