Applying network link prediction in drug discovery: an overview of the literature

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IntroductionNetwork representation can give a holistic view of relationships for biomedical entities through network topology. Link prediction estimates the probability of link formation between the pair of unconnected nodes. In the drug discovery process, the link prediction method not only enables the detection of connectivity patterns but also predicts the effects of one biomedical entity to multiple entities simultaneously and vice versa, which is useful for many applications.Areas coveredThe authors provide a comprehensive overview of network link prediction in drug discovery. Link prediction methodologies such as similarity-based approaches, embedding-based approaches, probabilistic model-based approaches, and preprocessing methods are summarized with examples. In addition to describing their properties and limitations, the authors discuss the applications of link prediction in drug discovery based on the relationship between biomedical concepts.Expert opinionLink prediction is a powerful method to infer the existence of novel relationships in drug discovery. However, link prediction has been hampered by the sparsity of data and the lack of negative links in biomedical networks. With preprocessing to balance positive and negative samples and the collection of more data, the authors believe it is possible to develop more reliable link prediction methods that can become invaluable tools for successful drug discovery.
Publisher
TAYLOR & FRANCIS LTD
Issue Date
2024-01
Language
English
Article Type
Review
Citation

EXPERT OPINION ON DRUG DISCOVERY, v.19, no.1, pp.43 - 56

ISSN
1746-0441
DOI
10.1080/17460441.2023.2267020
URI
http://hdl.handle.net/10203/317903
Appears in Collection
BiS-Journal Papers(저널논문)
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