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Random walk with restart: A powerful network propagation algorithm in Bioinformatics field

机译:随机游走并重启:生物信息学领域强大的网络传播算法

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Various problems in biomedicine can be formulated as a ranking problem, where a set of candidate components is ranked relatively based on a set of known components. The most popular problem in biomedicine is identification of disease-associated cellular components, where cellular components can be genes, proteins, microRNAs or other molecules. Besides that, a number of problems in pharmacology is also similar such as identification of drug-target interactions and prediction of novel drug-disease associations. They are all considered as ranking problems. Many computational methods have been proposed to these problems including machine learning-based and network-based ones. In which, machine learning-based methods usually approach those as binary classification problems, where an unknown association/interaction is predicted as “associate/interact” or “not associate/interact”. However, as abovementioned, those problems should be formulated as ranking problems since it is often in biomedicine and pharmacology that not observed association/interaction does not mean it does not exist. Meanwhile, network-based methods have been naturally approached those problems by ranking candidate associations/interactions relatively to a set of known ones. Among network-based methods, random walk with restart (RWR), a network propagation algorithm, has shown to be state-of-the-art one for those problems. Therefore, in this study, we are going to review usage of this algorithm for a number of problems in biomedicine and pharmacology.
机译:可以将生物医学中的各种问题表述为排名问题,其中基于一组已知组件对一组候选组件进行相对排名。生物医学中最普遍的问题是疾病相关细胞成分的鉴定,其中细胞成分可以是基因,蛋白质,microRNA或其他分子。除此之外,药理学中的许多问题也很相似,例如识别药物-靶标相互作用和预测新型药物-疾病关联。它们都被认为是排名问题。已经针对这些问题提出了许多计算方法,包括基于机器学习的方法和基于网络的方法。其中,基于机器学习的方法通常将其作为二进制分类问题,其中未知的关联/互动被预测为“关联/互动”或“不关联/互动”。但是,如上所述,由于在生物医学和药理学中经常没有观察到缔合/相互作用并不意味着不存在关联/相互作用,因此这些问题应被列为排序问题。同时,通过将候选关联/交互相对于一组已知关联/交互进行排名,自然已经解决了基于网络的方法的问题。在基于网络的方法中,具有网络传播算法的随机重启重启(RWR)已被证明是解决这些问题的最新技术。因此,在这项研究中,我们将针对生物医学和药理学中的许多问题,回顾该算法的使用。

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