Su Chang, Tong Jie, Zhu Yongjun, Cui Peng, Wang Fei
Department of Healthcare Policy and Research, Weill Cornell Medicine at Cornell University, New York, NY, USA.
Department of Mechanical and Aerospace Engineering at New York University, New York, NY, USA.
Brief Bioinform. 2020 Jan 17;21(1):182-197. doi: 10.1093/bib/bby117.
Owning to the rapid development of computer technologies, an increasing number of relational data have been emerging in modern biomedical research. Many network-based learning methods have been proposed to perform analysis on such data, which provide people a deep understanding of topology and knowledge behind the biomedical networks and benefit a lot of applications for human healthcare. However, most network-based methods suffer from high computational and space cost. There remain challenges on handling high dimensionality and sparsity of the biomedical networks. The latest advances in network embedding technologies provide new effective paradigms to solve the network analysis problem. It converts network into a low-dimensional space while maximally preserves structural properties. In this way, downstream tasks such as link prediction and node classification can be done by traditional machine learning methods. In this survey, we conduct a comprehensive review of the literature on applying network embedding to advance the biomedical domain. We first briefly introduce the widely used network embedding models. After that, we carefully discuss how the network embedding approaches were performed on biomedical networks as well as how they accelerated the downstream tasks in biomedical science. Finally, we discuss challenges the existing network embedding applications in biomedical domains are faced with and suggest several promising future directions for a better improvement in human healthcare.
由于计算机技术的快速发展,现代生物医学研究中出现了越来越多的关系数据。已经提出了许多基于网络的学习方法来对此类数据进行分析,这使人们能够深入了解生物医学网络背后的拓扑结构和知识,并有益于人类医疗保健的许多应用。然而,大多数基于网络的方法都存在高计算成本和空间成本的问题。在处理生物医学网络的高维度和稀疏性方面仍然存在挑战。网络嵌入技术的最新进展为解决网络分析问题提供了新的有效范式。它将网络转换到低维空间,同时最大程度地保留结构属性。通过这种方式,诸如链接预测和节点分类等下游任务可以通过传统机器学习方法来完成。在本次综述中,我们对应用网络嵌入推进生物医学领域的文献进行了全面回顾。我们首先简要介绍广泛使用的网络嵌入模型。之后,我们仔细讨论网络嵌入方法在生物医学网络上是如何执行的,以及它们如何加速生物医学科学中的下游任务。最后,我们讨论生物医学领域现有网络嵌入应用面临的挑战,并提出几个有前景的未来方向,以便在人类医疗保健方面实现更好的改进。