ISSN: 2332-0877

Jornal de doenças infecciosas e terapia

Acesso livre

Nosso grupo organiza mais de 3.000 Séries de conferências Eventos todos os anos nos EUA, Europa e outros países. Ásia com o apoio de mais 1.000 Sociedades e publica mais de 700 Acesso aberto Periódicos que contém mais de 50.000 personalidades eminentes, cientistas de renome como membros do conselho editorial.

Periódicos de acesso aberto ganhando mais leitores e citações
700 periódicos e 15 milhões de leitores Cada periódico está obtendo mais de 25.000 leitores

Abstrato

Advanced Medical Image Recognition and Diagnosis of Respiratory System Viruses

Mazhar B Tayel, Adel El Fahaar, AM Fahmy

Respiratory infections are a confusing and time-consuming task of constantly looking at clinical pictures of patients. Therefore, there is a need to develop and improve the respiratory case prediction model as soon as possible to control the spread of disease. Deep learning makes it possible to discover a virus such as COVID-19 can be effectively detected using classification tools as CNN (Convolutional Neural Network). MFCC (Mel Frequency Cepstral Coefficients) is a common and effective classification tool. MFCC-CNN’s the proposed learning model is used to speed up the prediction process that assists medical professionals. MFCC is used to extract image features that are related to presence of COVID-19 or not. Prediction is based on convolutional neural network. This makes time-consuming process easier, faster with more accurate results reducing the spread of the virus and saves lives. Experimental results show that using a CT image converted to Mel-frequency cepstral spectrogram as an input to CNN can perform better results; with the validation data that include 99.08% accuracy for appropriate COVID categories and images with the non-COVID labels. Thus, it can probably be used to detect in CT images the presence of COVID-19. The work here provides evidence of the idea that high accuracy can be achieved with a trusted dataset, which can have a significant impact on this area.

Isenção de responsabilidade: Este resumo foi traduzido usando ferramentas de inteligência artificial e ainda não foi revisado ou verificado.