Título
[en] Q-NAS APPLIED TO THE CLASSIFICATION OF MEDICAL IMAGES
Autor
[pt] MARINA MORAES DA SILVEIRA
Vocabulário
[en] NEURAL NETWORKS
Vocabulário
[en] NEURAL ARCHITECTURE SEARCH
Vocabulário
[en] POST-COVID
Vocabulário
[en] MEDICAL IMAGES CLASSIFICATION
Vocabulário
[en] ARTIFICIAL INTELLIGENCE
Resumo
[en] This undergraduate thesis consists in classifying images obtained from chest computed tomography (CT) scans from patients who have had COVID-19 before by using Neural Networks.
The Q-NAS model is a quantum inspired algorithm to search for deep networks by assembling substructures. The basic premise of a NAS model (Neural Architecture Search) is the capability of automatically generating and searching the best neural network architectures, without requiring advanced machine learning knowledge from the user. The Q-NAS has the same premise but using quantum physics paradigms which improves the accuracy and the convergence time.
Because of these advantages, the Q-NAS model was applied to the CT images and classified them in six different classes according to the post-covid lung pattern found. The purpose of this undergraduate project is to generate new neural networks capable of classifying the post-covid patterns with a new database and test those models by using new inputs that were obtained from Pedro Ernesto University Hospital s patients.
Orientador(es)
MARLEY MARIA BERNARDES REBUZZI VELLASCO
Coorientador(es)
KARLA TEREZA FIGUEIREDO LEITE
Catalogação
2022-12-20
Tipo
[pt] TEXTO
Formato
application/pdf
Idioma(s)
INGLÊS
Referência [en]
https://www.maxwell.vrac.puc-rio.br/colecao.php?strSecao=resultado&nrSeq=61591@2
Referência DOI
https://doi.org/10.17771/PUCRio.acad.61591
Arquivos do conteúdo
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