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Reliability analysis of microarray data using fuzzy c-means and normal mixture modeling based classification methods

机译:基于模糊c均值和基于常规混合模型的分类方法对微阵列数据的可靠性分析

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Motivation: A serious limitation in microarray analysis is the unreliability of the data generated from low signal intensities. Such data may produce erroneous gene expression ratios and cause unnecessary validation or post-analysis follow-up tasks. Therefore, the elimination of unreliable signal intensities will enhance reproducibility and reliability of gene expression ratios produced from microarray data. In this study, we applied fuzzy c-means (FCM) and normal mixture modeling (NMM) based classification methods to separate microarray data into reliable and unreliable signal intensity populations.Results: We compared the results of FCM classification with those of classification based on NMM. Both approaches were validated against reference sets of biological data consisting of only true positives and true negatives. We observed that both methods performed equally well in terms of sensitivity and specificity. Although a comparison of the computation times indicated that the fuzzy approach is computationally more efficient, other considerations support the use of NMM for the reliability analysis of microarray data.
机译:动机:微阵列分析中的一个严重局限性是低信号强度产生的数据不可靠。此类数据可能会产生错误的基因表达比例,并导致不必要的验证或分析后的后续任务。因此,消除不可靠的信号强度将增强从微阵列数据产生的基因表达比例的可重复性和可靠性。在这项研究中,我们使用基于模糊c均值(FCM)和正态混合建模(NMM)的分类方法将微阵列数据分为可靠和不可靠的信号强度总体。结果:我们将FCM分类的结果与基于NMM。两种方法均针对仅由真阳性和真阴性组成的生物学数据参考集进行了验证。我们观察到两种方法在敏感性和特异性方面均表现良好。尽管比较计算时间表明模糊方法在计算上更有效,但其他考虑因素支持使用NMM进行微阵列数据的可靠性分析。

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