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Titre: New CNN stacking model for classification of medical imaging modalities and anatomical organs on medical images
Auteur(s): Khaled, Mamar
Gaceb, Djamel
Touazi, Fayçal
Aouchiche, Chakib Ammar
Bellouche, Youcef
Titoun, Ayoub
Mots-clés: Anatomy organs
Computer-aided diagnosis
Deep transfer learning
Ensemble deep learning
Medical image processing
Medical imaging modalities
Date de publication: 2023
Editeur: CEUR Workshop Proceedings
Collection/Numéro: DDM’2023: 6th International Conference on Informatics & Data-Driven Medicine,( November 17 - 19) 2023, Bratislava, Slovakia / Vol. 3609 (2023);pp. 174 - 188
Résumé: Decision making in medical diagnosis is tedious and very rigorous task, hence the requirement to use more advanced and intelligent medical imaging diagnostic support systems. The automation of the recognition of medical imaging modalities and human anatomical organs gives these systems the possibility of processing, in an automatic and adapted manner, different types of images in consideration of different medical imaging modalities. It also offers better support to clinicians and patients allowing them to access to more effective image analysis and diagnostic tools. In this context, three deep learning approaches were developed and tested on six different CNN models (VGG16, VGG19, ResNet-50, Xcpetion, Inception and NASNet). Two deep transfer learning modes and an ensemble deep learning algorithm based on stacking were used. The experiments carried out on two datasets of medium and high challenges show very interesting results with F-score reaching 99% for the classification of image modalities and 98% for the classification of anatomical organs.
URI/URL: https://ceur-ws.org/Vol-3609/paper14.pdf
https://www.researchgate.net/publication/377404273_New_CNN_Stacking_Model_for_Classification_of_Medical_Imaging_Modalities_and_Anatomical_Organs_on_Medical_Images
http://dlibrary.univ-boumerdes.dz:8080/handle/123456789/13435
ISSN: 16130073
Collection(s) :Communications Internationales

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