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Application of K-Means and MLP in the Automation of Matching of 2DE Gel Images

机译:K-Means和MLP在2DE凝胶图像匹配自动化中的应用。

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Critical information that is related to vital processes of the cell can be revealed comparing several two-dimensional electrophore-sis (2DE) gel images. Through up to 10 000 protein spots may appear in inevitably noisy gel thus 2DE gel image comparison and analysis protocols usually involve the work of experts. In this paper we demonstrate how the problem of automation of 2DE gel image matching can be gradually solved by the use of artificial neural networks. We report on the development of feature set, built from various distance measures, selected and grounded by the application of self-organizing feature map and confirmed by expert decisions. We suggest and experimentally confirm the use of k-means clustering for the pre-classification of 2DE gel image into segments of interest that about twice speed-up the comparison procedure. We develop original Multilayer Perceptron based classifier for 2DE gel image matching that employs the selected feature set. By experimentation with the synthetic, semi-synthetic and natural 2DE images we show its superiority against the single distance metric based classifiers.
机译:通过比较几个二维电泳(2DE)凝胶图像,可以揭示与细胞生命过程有关的重要信息。不可避免地,在嘈杂的凝胶中可能会出现多达1万个蛋白质斑点,因此2DE凝胶图像比较和分析方案通常需要专家的工作。在本文中,我们演示了如何通过使用人工神经网络逐步解决2DE凝胶图像匹配的自动化问题。我们报告了通过各种距离测量构建的特征集的发展情况,这些特征集是通过应用自组织特征图进行选择和确定基础并经过专家决策确认的。我们建议并实验性地确认了将k-means聚类用于将2DE凝胶图像预分类为感兴趣的片段的目的,该片段大约两倍地加快了比较过程。我们为2DE凝胶图像匹配开发了基于多层感知器的原始分类器,该分类器采用了选定的功能集。通过对合成的,半合成的和自然的2DE图像进行实验,我们展示了其相对于基于单距离度量的分类器的优越性。

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