TL;DR
This study presents a neural network-based literature discovery approach using knowledge graph completion to identify potential COVID-19 drug repurposing candidates from scientific literature, achieving promising results and mechanistic insights.
Contribution
The paper introduces a novel integrative method combining semantic triple filtering, knowledge graph completion, and discovery patterns for drug repurposing in COVID-19.
Findings
Best classifier (PubMedBERT) achieved F1=0.854.
TransE model outperformed others with MR=0.923.
Identified known and novel candidate drugs for COVID-19.
Abstract
Objective: To discover candidate drugs to repurpose for COVID-19 using literature-derived knowledge and knowledge graph completion methods. Methods: We propose a novel, integrative, and neural network-based literature-based discovery (LBD) approach to identify drug candidates from both PubMed and COVID-19-focused research literature. Our approach relies on semantic triples extracted using SemRep (via SemMedDB). We identified an informative subset of semantic triples using filtering rules and an accuracy classifier developed on a BERT variant, and used this subset to construct a knowledge graph. Five SOTA, neural knowledge graph completion algorithms were used to predict drug repurposing candidates. The models were trained and assessed using a time slicing approach and the predicted drugs were compared with a list of drugs reported in the literature and evaluated in clinical trials.…
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Taxonomy
MethodsLinear Layer · WordPiece · Adam · Softmax · Layer Normalization · Dense Connections · Multi-Head Attention · Refunds@Expedia|||How do I get a full refund from Expedia? · Dropout · Linear Warmup With Linear Decay
