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Review of dimensionality reduction techniques using clustering algorithm in reconstruction of gene regulatory networks

机译:利用聚类算法重构基因调控网络的降维技术综述

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Reconstruction of gene regulatory networks or `reverse-engineering' is a process of identifying gene interaction networks from experimental microarray gene expression profile through computation techniques. However, there are some issues and challenges remain in gene regulatory network construction. One of them is the inference complexity due to the high dimensionality of gene expression data. The suggestions for addressing this problem is dimensionality reduction will be applied to the data to reduce the large search space. Many studies have been proposed clustering algorithm to handle the large dimensionality of the data, aiming to improve the accuracy of the inferred network while reducing time complexity. Thus, this paper presents a review of clustering algorithm as dimensionality reduction techniques in the reconstruction of Gene Regulatory Networks. In addition, several new trends were noted to improve the efficiency of clustering algorithms, dimensionality reduction techniques will be employed as clustering algorithm often does not work well for high dimensional data.
机译:基因调控网络的重建或“逆向工程”是通过计算技术从实验性微阵列基因表达谱中鉴定基因相互作用网络的过程。但是,基因调控网络的建设仍然存在一些问题和挑战。其中之一是由于基因表达数据的高维度而导致的推理复杂性。解决此问题的建议是将降维应用于数据以减少大的搜索空间。已经提出了许多研究来处理数据的大维度的聚类算法,目的是在减少时间复杂度的同时提高推断网络的准确性。因此,本文对基因调控网络的重构中作为降维技术的聚类算法进行了综述。另外,注意到了一些新的趋势来提高聚类算法的效率,降维技术将被采用,因为聚类算法通常不适用于高维数据。

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