A Gene Expression Clustering Method to Extraction of Cell-to-Cell Biological Communication

Hui Wang, Yan Sha, Dan Wang, Hamed Nazari
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Abstract

Graph-based clustering identification is a practical method to detect the communication between nodes in complex networks that has obtained considerable comments. Since identifying different communities in large-scale data is a challenging task, by understanding the communication between the behaviors of the elements in a community (a cluster), the general characteristics of clusters can be predicted. Graph-based clustering methods have played an important role in clustering gene expression data because of their ability to show the relations between the data. In order to be able to identify genes that lead to the development of diseases, the communication between the cells must be established. The communication between different cells can be indicated by the expression of different genes within them. In this study, the problem of cell-to-cell communication is expressed as a graph and the communication are extracted by recognizing the communities. The FANTOM5 dataset is used to simulate and calculate the similarity between cells. After preprocessing and normalizing the data, to convert this data into graphs, the expression of genes in different cells was examined and by considering a threshold and Wilcoxon test, the communication between them were identified through using clustering.
一种基因表达聚类方法提取细胞间生物通讯
基于图的聚类识别是一种实用的检测复杂网络中节点间通信的方法,已经得到了相当多的评价。由于在大规模数据中识别不同的社区是一项具有挑战性的任务,因此通过了解社区(集群)中元素的行为之间的通信,可以预测集群的一般特征。基于图的聚类方法由于能够显示数据之间的关系,在聚类基因表达数据方面发挥了重要作用。为了能够识别导致疾病发展的基因,必须建立细胞之间的通信。不同细胞之间的交流可以通过细胞内不同基因的表达来指示。在本研究中,将细胞间的通信问题用图形表示,并通过识别群落提取通信信息。FANTOM5数据集用于模拟和计算单元之间的相似性。在对数据进行预处理和归一化后,将数据转换成图形,检测不同细胞中基因的表达,并考虑阈值和Wilcoxon检验,通过聚类识别它们之间的通信。
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