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Feature Normalization via Expectation Maximization and Unsupervised Nonparametric Classification For M-FISH Chromosome Images

机译:通过期望最大化和无监督非参数分类对M-FISH染色体图像进行特征归一化

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摘要

Multicolor fluorescence in situ hybridization (M-FISH) techniques provide color karyotyping that allows simultaneous analysis of numerical and structural abnormalities of whole human chromosomes. Chromosomes are stained combinatorially in M-FISH. By analyzing the intensity combinations of each pixel, all chromosome pixels in an image are classified. Often, the intensity distributions between different images are found to be considerably different and the difference becomes the source of misclassifications of the pixels. Improved pixel classification accuracy is the most important task to ensure the success of the M-FISH technique. In this paper, we introduce a new feature normalization method for M-FISH images that reduces the difference in the feature distributions among different images using the expectation maximization (EM) algorithm. We also introduce a new unsupervised, nonparametric classification method for M-FISH images. The performance of the classifier is as accurate as the maximum-likelihood classifier, whose accuracy also significantly improved after the EM normalization. We would expect that any classifier will likely produce an improved classification accuracy following the EM normalization. Since the developed classification method does not require training data, it is highly convenient when ground truth does not exist. A significant improvement was achieved on the pixel classification accuracy after the new feature normalization. Indeed, the overall pixel classification accuracy improved by 20% after EM normalization.
机译:多色荧光原位杂交(M-FISH)技术提供了彩色核型分析,可以同时分析整个人类染色体的数字和结构异常。染色体在M-FISH中进行组合染色。通过分析每个像素的强度组合,可以对图像中的所有染色体像素进行分类。通常,发现不同图像之间的强度分布存在很大差异,并且差异成为像素分类错误的根源。像素分类精度的提高是确保M-FISH技术成功的最重要任务。在本文中,我们为M-FISH图像引入了一种新的特征归一化方法,该方法使用期望最大化(EM)算法减少了不同图像之间的特征分布差异。我们还为M-FISH图像引入了一种新的无监督,非参数分类方法。分类器的性能与最大似然分类器一样准确,在EM归一化之后,其准确性也得到了显着提高。我们期望在EM归一化之后,任何分类器都可能会提高分类精度。由于开发的分类方法不需要训练数据,因此在不存在基本事实的情况下非常方便。在新特征归一化之后,像素分类精度得到了显着改善。实际上,EM归一化后,整体像素分类精度提高了20%。

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