Veuillez utiliser cette adresse pour citer ce document : http://dspace1.univ-tlemcen.dz/handle/112/16332
Titre: Medical images indexation and annotation
Auteur(s): NEDJAR, Imane
Mots-clés: Medical images; Computer-Aided Diagnosis; Image Retrieval; Liver annotation; BEMD; Gabor wavelet; Mammography; Breast tissue classification; SMOTE; Image classification; Histology images; Deep learning
Date de publication: 1-jan-2020
Editeur: 11-04-2021
Référence bibliographique: salle des thèses
Collection/Numéro: BFSTR2712;
Résumé: Computer aided detection and diagnosis CADe/CADx systems, are an essential tools used by physicians to assist them in their daily clinical diagnosis. In cancers diseases, these systems have an important role to perform the early detection and diagnosis, this allows to provide early treatment before it will be too late. In this thesis, we present several methods to be uses in a computer aided diagnosis system in order to generate structured reports of liver lesions including cancer using Computed Tomography (CT) images. In addition, we propose different methods for computer aided detection of breast cancer, by treating breast density classification using mammography and breast lesion classification using histopathology images. At this context we present three distingue contributions, the first one is related to the annotation of liver CT images by using a medical ontology, in which we propose three methods. The second contribution is about breast density classification according to the standard Breast Imaging Reporting and Data System (BI-RADS). In addition to that, we propose an improved version of Synthetic Minority Over-Sampling Technique Algorithm (SMOTE) used to equilibrate the dataset. The last contribution is about breast lesions classification in the histopathology images. Precisely, we propose a method to distinct benignant and malignant lesions, as well to classify the normal cases, benign cases, in situ and invasive cancer cases
Description: Images médicales; Diagnostic assisté par ordinateur; Récupération des images; Les annotations hépatique; BEMD; Ondelettes de Gabor; Mammographie; Classification des tissus mammaires; SMOTE; BI-RADS; Les images histopathologiques; Apprentissage profond.
URI/URL: http://dspace.univ-tlemcen.dz/handle/112/16332
ISSN: DOC-000-01-01
Collection(s) :Doctorat en Sciences de la matière

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