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dc.contributor.authorHadjallah Hedjalla, Riadh-
dc.contributor.authorMaallemi, Abdelmadjid-
dc.contributor.authorFareh, M. (Promotrice)-
dc.date.accessioned2025-10-06T12:42:05Z-
dc.date.available2025-10-06T12:42:05Z-
dc.date.issued2025-06-
dc.identifier.urihttps://di.univ-blida.dz/jspui/handle/123456789/40597-
dc.descriptionill.,Bibliogr.cote:MA-004-1037fr_FR
dc.description.abstractKnowledge graphs are graph-based structures that represent entities and relationships as triples, enabling machines to perform semantic reasoning. They are widely used in fields such as healthcare. This project aims to build a medical diagnostic system based on a knowledge graph. The system integrates explainable deep learning models and leverages knowledge graph embeddings to enhance interpretability. The design follows multiple stages: collecting and preprocessing data, transforming it into RDF format, and constructing a knowledge graph that captures patients, symptoms, risk factors, and diseases. Embeddings are generated using Node2Vec, converting graph nodes into numerical vectors suitable for deep learning models. A Graph Attention Network (GAT) is trained for diagnosis, and SHAP (SHapley Additive explanations) and LIME (Local Interpretable Model-agnostic Explanations) are used to interpret model results both globally and locally, identifying important features. The study is conducted on lung cancer diagnosis, and the obtained results are interpreted using explainable AI techniques. The embeddings and model are evaluated using accuracy, F1-score, precision, and recall. The combination of GAT with Node2Vec outperforms all other configurations and is selected for final deployment. The proposed solution demonstrates strong predictive performance and high interpretability, aligning AI decisions with medical reasoning. Key words: Knowledge Graph, Node2Vec, Graph Embedding, GAT (Graph Attention Network), Ex- plainable AI (XAI), SHAP, LIMEfr_FR
dc.language.isoenfr_FR
dc.publisherUniversité Blida 1fr_FR
dc.subjectKnowledge Graphfr_FR
dc.subjectGAT (Graph Attention Network)fr_FR
dc.subjectNode2Vecfr_FR
dc.subjectGraph Embeddingfr_FR
dc.subjectEx- plainable AI (XAI)fr_FR
dc.subjectSHAPfr_FR
dc.subjectLIMEfr_FR
dc.titleLeveraging Knowledge Graphs and Advanced Al for Medical Interpretationfr_FR
dc.typeThesisfr_FR
Appears in Collections:Mémoires de Master

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