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To Embed or Not: Network Embedding as a Paradigm in Computational Biology

机译:嵌入或不嵌入:网络嵌入作为计算生物学的范例

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摘要

Current technology is producing high throughput biomedical data at an ever-growing rate. A common approach to interpreting such data is through network-based analyses. Since biological networks are notoriously complex and hard to decipher, a growing body of work applies graph embedding techniques to simplify, visualize, and facilitate the analysis of the resulting networks. In this review, we survey traditional and new approaches for graph embedding and compare their application to fundamental problems in network biology with using the networks directly. We consider a broad variety of applications including protein network alignment, community detection, and protein function prediction. We find that in all of these domains both types of approaches are of value and their performance depends on the evaluation measures being used and the goal of the project. In particular, network embedding methods outshine direct methods according to some of those measures and are, thus, an essential tool in bioinformatics research.
机译:当前的技术正在以不断增长的速度产生高通量生物医学数据。解释此类数据的常用方法是通过基于网络的分析。由于众所周知,生物网络非常复杂且难以破解,因此越来越多的工作采用图嵌入技术来简化,可视化和促进对所得网络的分析。在这篇综述中,我们调查了图嵌入的传统方法和新方法,并通过直接使用网络将其应用于网络生物学中的基本问题进行了比较。我们考虑了各种各样的应用,包括蛋白质网络比对,社区检测和蛋白质功能预测。我们发现,在所有这些领域中,两种方法都是有价值的,其性能取决于所使用的评估方法和项目目标。特别是,网络嵌入方法根据其中的某些措施胜过直接方法,因此是生物信息学研究中必不可少的工具。

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