利用分层多特征协同模型从多组学数据预测驱动基因。

Zhipeng Hu, Xiaoyan Kui, Canwei Liu, Shen Jiang, Min Zhang, Ziwei Zou, Beiji Zou
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引用次数: 0

摘要

癌症是一种极其复杂的疾病,其发生发展受多种因素的影响,其中肿瘤驱动基因的异常活动在病理过程中起着至关重要的作用。识别这些基因可以使研究人员了解癌症的致病机制和生物学功能,促进靶向治疗的发展。现有的驱动基因识别方法往往忽略了基因间的协同作用和特征的重要性,从而影响了识别的准确性。本文提出了一种基于层次多特征协同模型的肿瘤驱动基因识别方法HMFS。首先,利用Node2vec和K-means算法构造超图;通过分析每个超边缘中基因的拓扑特征和互斥程度,提取突变聚集系数。然后,根据基因的功能表达机制,利用miRNA和mRNA的表达数据进行差异表达分析。最后,通过分析特征之间的重要性,提出了分层多特征协同的特征融合方法。本文在三个真实的癌症数据集上进行了实验。与7种代表性方法相比,HMFS在所有评价指标上表现最佳。HMFS源代码可以从https://github.com/DriverGene/HMFS.git获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Driver Genes from Multi-Omics Data Using Hierarchical Multi-Feature Synergy Model.

Cancer is an extremely complex disease, whose occurrence and development are influenced by a multitude of factors, among which the abnormal activity of cancer driver genes plays a crucial role in the pathological process. Identifying these genes allows researchers to understand pathogenic mechanisms and biological functions of cancer, facilitating the development of targeted therapies. Current methods for identifying driver genes often ignore the synergism among genes and the importance of features, thereby affecting identification accuracy. In this paper, we propose a cancer driver genes identification method called HMFS, which is based on the hierarchical multi-feature synergy model. Firstly, a hypergraph is constructed using Node2vec and K-means algorithm. By analyzing the topological feature and mutual exclusion degree of genes in each hyperedge, the Mutation Aggregation Coefficient is extracted. Then, based on the functional expression mechanism of genes, differential expression analysis is performed using miRNA and mRNA expression data. Finally, by analyzing the importance among features, the Hierarchical Multi-Feature Synergy is proposed for features fusion. In this paper, experiments are conducted on three real cancer datasets. Compared with seven representative methods, HMFS has the best performance on all evaluation indicators. HMFS source code can be obtained from https://github.com/DriverGene/HMFS.git.

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