RECAP-KG: Mining Knowledge Graphs from Raw GP Notes for Remote COVID-19 Assessment in Primary Care
Rakhilya Lee Mekhtieva, Brandon Forbes, Dalal Alrajeh, Brendan, Delaney, Alessandra Russo

TL;DR
This paper introduces a framework that constructs knowledge graphs from raw GP consultation notes, capturing symptoms and details to improve COVID-19 patient assessment in primary care.
Contribution
The novel framework extracts structured knowledge graphs from unstructured GP notes using support phrases and ontology, enhancing decision-making beyond simple regression models.
Findings
Outperforms traditional NLP in patient question answering accuracy
Successfully extracts symptoms, duration, and severity from unstructured notes
Demonstrates applicability to COVID-19 patient data in UK primary care
Abstract
Clinical decision-making is a fundamental stage in delivering appropriate care to patients. In recent years several decision-making systems designed to aid the clinician in this process have been developed. However, technical solutions currently in use are based on simple regression models and are only able to take into account simple pre-defined multiple-choice features, such as patient age, pre-existing conditions, smoker status, etc. One particular source of patient data, that available decision-making systems are incapable of processing is the collection of patient consultation GP notes. These contain crucial signs and symptoms - the information used by clinicians in order to make a final decision and direct the patient to the appropriate care. Extracting information from GP notes is a technically challenging problem, as they tend to include abbreviations, typos, and incomplete…
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Taxonomy
TopicsMachine Learning in Healthcare · Topic Modeling · Biomedical Text Mining and Ontologies
