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识别微阵列图像中的斑点。

Identifying spots in microarray images.

作者信息

Nagarajan Radhakrishnan, Peterson Charlotte A

机构信息

Center on Aging, University of Arkansas for Medical Sciences, Little Rock, AR 72205, USA.

出版信息

IEEE Trans Nanobioscience. 2002 Jun;1(2):78-84. doi: 10.1109/tnb.2002.806936.

Abstract

Microarray technology has provided a way to quantitate the simultaneous expression of a large number of genes. This approach is dependent on reproducible, accurate identification and quantitation of spot intensities. In this paper, clustering-based image segmentation is described to extract the target intensity of the microarray spots. While the technique is generic, its effectiveness on extracting spot intensities on arrays obtained from a two-color (Cy3/Cy5) experiment is discussed. The approximate boundaries of the spots are determined initially by manual alignment of rectangular grids. The pixel intensities of the image (I) inside a grid, is mapped onto a one-dimensional vector (v). The k-means clustering technique is applied to generate a binary partition of v. The median value of the pixel intensities inside each of the clusters for a given spot determines its foreground and the local background intensity. The difference in the median value of the foreground and the background intensity is the desired target intensity of the spot. The results are compared against those obtained using a region growing approach.

摘要

微阵列技术提供了一种对大量基因的同时表达进行定量的方法。这种方法依赖于对斑点强度进行可重复、准确的识别和定量。本文描述了基于聚类的图像分割方法,用于提取微阵列斑点的目标强度。虽然该技术具有通用性,但本文讨论了其在从双色(Cy3/Cy5)实验获得的阵列上提取斑点强度的有效性。斑点的近似边界最初通过手动对齐矩形网格来确定。网格内图像(I)的像素强度被映射到一维向量(v)上。应用k均值聚类技术生成v的二元划分。给定斑点的每个聚类内像素强度的中值确定其前景和局部背景强度。前景和背景强度中值的差异就是该斑点所需的目标强度。将结果与使用区域生长方法获得的结果进行比较。

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