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Grow-Cut Based Automatic cDNA Microarray Image Segmentation

机译:基于Grow-Cut的自动cDNA微阵列图像分割

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摘要

Complementary DNA (cDNA) microarray is a well-established tool for simultaneously studying the expression level of thousands of genes. Segmentation of microarray images is one of the main stages in a microarray experiment. However, it remains an arduous and challenging task due to the poor quality of images. Images suffer from noise, artifacts, and uneven background, while spots depicted on images can be poorly contrasted and deformed. In this paper, an original approach for the segmentation of cDNA microarray images is proposed. First, a preprocessing stage is applied in order to reduce the noise levels of the microarray image. Then, the grow-cut algorithm is applied separately to each spot location, employing an automated seed selection procedure, in order to locate the pixels belonging to spots. Application on datasets containing synthetic and real microarray images shows that the proposed algorithm performs better than other previously proposed methods. Moreover, in order to exploit the independence of the segmentation task for each separate spot location, both a multithreaded CPU and a graphics processing unit (GPU) implementation were evaluated.
机译:互补DNA(cDNA)微阵列是一种成熟的工具,可以同时研究数千种基因的表达水平。微阵列图像的分割是微阵列实验的主要阶段之一。但是,由于图像质量差,这仍然是一项艰巨而艰巨的任务。图像会受到噪音,伪影和背景不均匀的影响,而图像上显示的斑点可能对比度很差且变形。本文提出了一种用于cDNA微阵列图像分割的原始方法。首先,应用预处理阶段以降低微阵列图像的噪声水平。然后,采用自动种子选择程序将长割算法分别应用于每个光斑位置,以定位属于光斑的像素。在包含合成和真实微阵列图像的数据集上的应用表明,所提出的算法比其他先前提出的方法表现更好。而且,为了利用分割任务针对每个单独的斑点位置的独立性,评估了多线程CPU和图形处理单元(GPU)的实现。

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