Katzer Mathias, Kummert Franz, Sagerer Gerhard
Faculty of Technology, Applied Computer Science, Bielefeld University, 33594 Bielefeld, Germany.
IEEE Trans Nanobioscience. 2003 Dec;2(4):202-14. doi: 10.1109/tnb.2003.817023.
This paper describes image processing methods for automatic spotted microarray image analysis. Automatic gridding is important to achieve constant data quality and is, therefore, especially interesting for large-scale experiments as well as for integration of microarray expression data from different sources. We propose a Markov random field (MRF) based approach to high-level grid segmentation, which is robust to common problems encountered with array images and does not require calibration. We also propose an active contour method for single-spot segmentation. Active contour models describe objects in images by properties of their boundaries. Both MRFs and active contour models have been used in various other computer vision applications. The traditional active contour model must be generalized for successful application to microarray spot segmentation. Our active contour model is employed for spot detection in the MRF score functions as well as for spot signal segmentation in quantitative array image analysis. An evaluation using several image series from different sources shows the robustness of our methods.
本文描述了用于自动斑点微阵列图像分析的图像处理方法。自动网格化对于实现恒定的数据质量很重要,因此,对于大规模实验以及来自不同来源的微阵列表达数据的整合尤其有意义。我们提出了一种基于马尔可夫随机场(MRF)的高级网格分割方法,该方法对阵列图像中常见的问题具有鲁棒性,并且不需要校准。我们还提出了一种用于单斑点分割的活动轮廓方法。活动轮廓模型通过其边界的属性来描述图像中的对象。MRF和活动轮廓模型都已在各种其他计算机视觉应用中使用。传统的活动轮廓模型必须进行推广才能成功应用于微阵列斑点分割。我们的活动轮廓模型用于MRF评分函数中的斑点检测以及定量阵列图像分析中的斑点信号分割。使用来自不同来源的几个图像系列进行的评估表明了我们方法的鲁棒性。