Wang Xujing, Jiang Nan, Feng Xin, Xie Yizhou, Tonellato Peter J, Ghosh Soumitra, Hessner Martin J
Max McGee National Research Center for Juvenile Diabetes, Department of Pediatrics, Medical College of Wisconsin, Milwaukee, WI 53226, USA.
IEEE Trans Nanobioscience. 2003 Dec;2(4):193-201. doi: 10.1109/tnb.2003.816233.
Historically, microarray image processing has been technically challenging in obtaining quality gene expression data. After hybridization of Cy3- and Cy5-labeled samples, images are collected and processed to obtain gene expression ratio measurements for each of the elements on the array. The hybridization process often brings in contaminating noise, which can make correct identification of the signal difficult. In addition, spot intensity levels are highly variable due to the expression differences of different genes, and weak spots are often difficult to detect. These conditions are further complicated by inherent irregularities in spot position, shape, and size commonly found on high-density microarrays, making image processing an often labor-intensive task that is difficult to reliably automate. We previously reported a novel third-dye array visualization (TDAV) technology that allows prehybridization visualization and quality control of printed arrays. Here, we present a new microarray image processing approach utilizing TDAV. By incorporating the third-dye image, we show that overall quality of the microarray data is significantly improved, and automation of processing is feasible and reliable. Furthermore, we demonstrate use of the third-dye image to better quality control microarray image analysis. Both the principle and implementation of the approach are presented in detail, with experimental results.
从历史上看,微阵列图像处理在获取高质量基因表达数据方面一直面临技术挑战。在Cy3和Cy5标记的样本杂交后,收集并处理图像以获得阵列上每个元素的基因表达比率测量值。杂交过程常常引入污染噪声,这会使信号的正确识别变得困难。此外,由于不同基因的表达差异,斑点强度水平高度可变,并且弱斑点通常难以检测。高密度微阵列上常见的斑点位置、形状和大小的固有不规则性进一步使这些情况变得复杂,使得图像处理成为一项通常劳动强度大且难以可靠自动化的任务。我们之前报道了一种新颖的第三染料阵列可视化(TDAV)技术,该技术允许对打印阵列进行预杂交可视化和质量控制。在此,我们提出一种利用TDAV的新微阵列图像处理方法。通过纳入第三染料图像,我们表明微阵列数据的整体质量得到显著提高,并且处理的自动化是可行且可靠的。此外,我们展示了使用第三染料图像来更好地进行微阵列图像分析的质量控制。详细介绍了该方法的原理和实现,并给出了实验结果。