Segmentation of fluorescence microscopy cell images using unsupervised mining.

Xian Du, Sumeet Dua
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引用次数: 41

Abstract

The accurate measurement of cell and nuclei contours are critical for the sensitive and specific detection of changes in normal cells in several medical informatics disciplines. Within microscopy, this task is facilitated using fluorescence cell stains, and segmentation is often the first step in such approaches. Due to the complex nature of cell issues and problems inherent to microscopy, unsupervised mining approaches of clustering can be incorporated in the segmentation of cells. In this study, we have developed and evaluated the performance of multiple unsupervised data mining techniques in cell image segmentation. We adapt four distinctive, yet complementary, methods for unsupervised learning, including those based on k-means clustering, EM, Otsu's threshold, and GMAC. Validation measures are defined, and the performance of the techniques is evaluated both quantitatively and qualitatively using synthetic and recently published real data. Experimental results demonstrate that k-means, Otsu's threshold, and GMAC perform similarly, and have more precise segmentation results than EM. We report that EM has higher recall values and lower precision results from under-segmentation due to its Gaussian model assumption. We also demonstrate that these methods need spatial information to segment complex real cell images with a high degree of efficacy, as expected in many medical informatics applications.

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使用无监督挖掘的荧光显微镜细胞图像分割。
在一些医学信息学学科中,细胞和细胞核轮廓的精确测量对于正常细胞变化的敏感和特异性检测至关重要。在显微镜中,使用荧光细胞染色促进了这项任务,分割通常是这种方法的第一步。由于细胞问题的复杂性和显微镜固有的问题,聚类的无监督挖掘方法可以纳入细胞分割。在本研究中,我们开发并评估了多种无监督数据挖掘技术在细胞图像分割中的性能。我们采用了四种独特而又互补的无监督学习方法,包括基于k-means聚类、EM、Otsu阈值和GMAC的方法。定义了验证措施,并使用合成的和最近发表的实际数据定量和定性地评估了技术的性能。实验结果表明,k-means、Otsu’s threshold和GMAC的分割效果与EM相似,并且比EM具有更精确的分割结果。我们报告说,EM由于其高斯模型假设而具有更高的召回值和更低的分割精度结果。我们还证明,这些方法需要空间信息来分割复杂的真实细胞图像,具有很高的效率,正如许多医学信息学应用所期望的那样。
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