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SUPERVISED NEURAL NETWORKS FOR CLUSTERING CONDITIONS IN DNA ARRAY DATA AFTER REDUCING NOISE BY CLUSTERING GENE EXPRESSION PROFILES

机译:通过聚类基因表达轮廓减少噪声后DNA阵列数据中的用于聚类条件的监督神经网络

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In this paper we compare various applications of supervised and unsupervised neural networks to the analysis of the gene expression profiles produced using DNA microarrays. In particular we are interested in the classification of samples or conditions. We have found that if gene expression profiles are clustered at the optimal level, the classification of conditions obtained using the average gene expression profile of each cluster is better than that obtained directly using all the gene expression profiles. If a supervised method (a back propagation neural network) is used instead of an unsupervised method, the efficiency of the classification of conditions increases. We studied the relative efficiencies of different clustering methods for reducing the dimensionality of the gene expression profile data set and found that the Self-Organising Tree Algorithm (SOTA) is a good choice for this task.
机译:在本文中,我们将监督和无监督的神经网络的各种应用与使用DNA微阵列产生的基因表达谱进行比较。特别是我们对样本或条件的分类感兴趣。我们发现,如果在最佳水平下聚集基因表达谱,则使用每个簇的平均基因表达谱获得的条件的分类优于直接使用所有基因表达谱获得的条件。如果使用监督方法(反向传播神经网络)而不是无监督的方法,则条件分类的效率增加。我们研究了不同聚类方法的相对效率,用于减少基因表达谱数据集的维度,发现自组织树算法(SOTA)是该任务的良好选择。

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