Analysis of Drug repurposing Knowledge graphs for Covid-19
- URL: http://arxiv.org/abs/2212.03911v1
- Date: Wed, 7 Dec 2022 19:14:17 GMT
- Title: Analysis of Drug repurposing Knowledge graphs for Covid-19
- Authors: Ajay Kumar Gogineni
- Abstract summary: This study proposes a set of candidate drugs for COVID-19 using Drug repurposing knowledge graph (DRKG)
DRKG is a biological knowledge graph constructed using a vast amount of open source biomedical knowledge.
nodes and relation embeddings are learned using knowledge graph embedding models and neural network and attention related models.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Knowledge graph (KG) is used to represent data in terms of entities and
structural relations between the entities. This representation can be used to
solve complex problems such as recommendation systems and question answering.
In this study, a set of candidate drugs for COVID-19 are proposed by using Drug
repurposing knowledge graph (DRKG). DRKG is a biological knowledge graph
constructed using a vast amount of open source biomedical knowledge to
understand the mechanism of compounds and the related biological functions.
Node and relation embeddings are learned using knowledge graph embedding models
and neural network and attention related models. Different models are used to
get the node embedding by changing the objective of the model. These embeddings
are later used to predict if a candidate drug is effective to treat a disease
or how likely it is for a drug to bind to a protein associated to a disease
which can be modelled as a link prediction task between two nodes. RESCAL
performed the best on the test dataset in terms of MR, MRR and Hits@3.
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