Rueda Luis, Vidyadharan Vidya
Department of Computer Science, University of Concepcion, Edmundo Larenas 215, Concepcion, VIII Region, Chile.
IEEE/ACM Trans Comput Biol Bioinform. 2006 Jan-Mar;3(1):72-83. doi: 10.1109/TCBB.2006.3.
Image and statistical analysis are two important stages of cDNA microarrays. Of these, gridding is necessary to accurately identify the location of each spot while extracting spot intensities from the microarray images and automating this procedure permits high-throughput analysis. Due to the deficiencies of the equipment used to print the arrays, rotations, misalignments, high contamination with noise and artifacts, and the enormous amount of data generated, solving the gridding problem by means of an automatic system is not trivial. Existing techniques to solve the automatic grid segmentation problem cover only limited aspects of this challenging problem and require the user to specify the size of the spots, the number of rows and columns in the grid, and boundary conditions. In this paper, a hill-climbing automatic gridding and spot quantification technique is proposed which takes a microarray image (or a subgrid) as input and makes no assumptions about the size of the spots, rows, and columns in the grid. The proposed method is based on a hill-climbing approach that utilizes different objective functions. The method has been found to effectively detect the grids on microarray images drawn from databases from GEO and the Stanford genomic laboratories.
图像分析和统计分析是cDNA微阵列的两个重要阶段。其中,在从微阵列图像中提取斑点强度时,网格化对于准确识别每个斑点的位置是必要的,并且使这个过程自动化可以实现高通量分析。由于用于打印阵列的设备存在缺陷,如旋转、错位、高噪声和伪影污染以及产生的大量数据,通过自动系统解决网格化问题并非易事。现有的解决自动网格分割问题的技术仅涵盖了这个具有挑战性问题的有限方面,并且需要用户指定斑点的大小、网格中的行数和列数以及边界条件。本文提出了一种爬山自动网格化和斑点量化技术,该技术以微阵列图像(或子网格)作为输入,并且不对网格中斑点的大小、行数和列数做任何假设。所提出的方法基于一种利用不同目标函数的爬山方法。已发现该方法能有效地检测从GEO数据库和斯坦福基因组实验室获取的微阵列图像上的网格。