Narrative Approaches and Machine Learning for Health Knowledge Management: Themes Extraction and Texts Classification
Date
2025
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
university of bordj bou arreridj
Abstract
The healthcare sector generates a massive volume of heterogeneous information every day,
a large portion of which takes a narrative form, such as medical records, hospitalisation
reports, and patient testimonies. In the context of exponential growth in textual medical
data, it has become essential to transform this information into machine-readable knowledge
to support personalised diagnoses, therapeutic monitoring, and the practice of precision
medicine. This thesis proposes an interdisciplinary approach that combines symbolic arti
f
icial intelligence, machine learning—including deep learning techniques—and medical on
tologies to enhance the representation, organisation, and utilisation of healthcare knowledge.
Ontologies structure and provide meaning to specific terms, abbreviations, and contextual
dependencies present in medical texts, while advanced machine learning techniques facilitate
their automatic classification into disease categories, treatment plans, or predefined diag
nostic groups. The integration of these methods provides a robust framework for managing
narrative knowledge in healthcare, optimising the retrieval of relevant information, support
ing clinical decision-making, and enabling treatment planning tailored to individual patient
needs. Thus, combining narrative formalisms, statistical methods, and ontological resources
offers a powerful means to fully exploit the potential of textual medical data.
Description
Keywords
Medical unstructured text, text mining, ontology, classification, embedding, machine learning, natural language processing.
Citation
MD/40