Biological Network Mining

Zongliang Yue, Da Yan, Guimu Guo, Jake Chen
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Abstract

In this survey, we explore the latest methods and trends in constructing and mining biological networks. We delve into cutting-edge techniques such as weighted gene co-expression network analysis (WGCNA), step-level differential response (SLDR), Biomedical Entity Expansion, Ranking and Explorations (BEERE), Weighted In-Network Node Expansion and Ranking (WINNER), and Weighted In-Path Edge Ranking (WIPER) from the Bioinformatics community, as well as breakthroughs in graph mining methods like parallel subgraph mining systems, temporal graph algorithms, and deep learning. To ensure a solid foundation, we provide an introductory-level overview of six well-established network types in systems biology. In addition, we offer a concise and accessible overview of strategies for network construction, including gene co-expression networks (GCNs), gene regulatory networks (GRNs), and literature-mined biomedical networks. We explain biological network mining in interdisciplinary domains, catering to both biomedical researchers and data mining experts. Our goal is to provide a comprehensive guide that doesn't require a significant time investment. We believe that these current trends will help readers become familiar with the topic and the practical applications of these tools in real-world studies.
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生物网络挖掘
在这一调查中,我们探讨了构建和挖掘生物网络的最新方法和趋势。我们深入研究了生物信息学领域的前沿技术,如加权基因共表达网络分析(WGCNA)、阶梯级差分响应(SLDR)、生物医学实体扩展、排名和探索(BEERE)、加权网络内节点扩展和排名(WINNER)和加权路径内边缘排名(WIPER),以及图挖掘方法的突破,如并行子图挖掘系统、时间图算法和深度学习。为了确保打下坚实的基础,我们提供了系统生物学中六种成熟网络类型的入门级概述。此外,我们还提供了一个简明易懂的网络构建策略概述,包括基因共表达网络(GCNs)、基因调控网络(GRNs)和文献挖掘的生物医学网络。我们解释跨学科领域的生物网络挖掘,迎合生物医学研究人员和数据挖掘专家。我们的目标是提供一个不需要大量时间投入的综合指南。我们相信这些当前的趋势将帮助读者熟悉这个主题以及这些工具在现实世界研究中的实际应用。
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