AIQMSep 27, 2023

Clinical Trial Recommendations Using Semantics-Based Inductive Inference and Knowledge Graph Embeddings

arXiv:2309.15979v17 citationsh-index: 21
Originality Incremental advance
AI Analysis

This addresses the challenge of designing clinical trials for researchers, but it is incremental as it builds on existing knowledge graph embedding methods.

The authors tackled the problem of designing clinical trials by proposing a recommendation methodology based on neural embeddings trained on a knowledge graph of clinical trials, achieving relevance scores of 70%-83% for recommendations.

Designing a new clinical trial entails many decisions, such as defining a cohort and setting the study objectives to name a few, and therefore can benefit from recommendations based on exhaustive mining of past clinical trial records. Here, we propose a novel recommendation methodology, based on neural embeddings trained on a first-of-a-kind knowledge graph of clinical trials. We addressed several important research questions in this context, including designing a knowledge graph (KG) for clinical trial data, effectiveness of various KG embedding (KGE) methods for it, a novel inductive inference using KGE, and its use in generating recommendations for clinical trial design. We used publicly available data from clinicaltrials.gov for the study. Results show that our recommendations approach achieves relevance scores of 70%-83%, measured as the text similarity to actual clinical trial elements, and the most relevant recommendation can be found near the top of list. Our study also suggests potential improvement in training KGE using node semantics.

Foundations

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