An approach to the classification of COVID-19 based on CT scans using convolutional features and genetic algorithms.

Journal: Computers in biology and medicine
Published Date:

Abstract

COVID-19 is a respiratory disease that, as of July 15th, 2021, has infected more than 187 million people worldwide and is responsible for more than 4 million deaths. An accurate diagnosis of COVID-19 is essential for the treatment and control of the disease. The use of computed tomography (CT) has shown to be promising for evaluating patients suspected of COVID-19 infection. The analysis of a CT examination is complex, and requires attention from a specialist. This paper presents a methodology for detecting COVID-19 from CT images. We first propose a convolutional neural network architecture to extract features from CT images, and then optimize the hyperparameters of the network using a tree Parzen estimator to choose the best parameters. Following this, we apply a selection of features using a genetic algorithm. Finally, classification is performed using four classifiers with different approaches. The proposed methodology achieved an accuracy of 0.997, a kappa index of 0.995, an AUROC of 0.997, and an AUPRC of 0.997 on the SARS-CoV-2 CT-Scan dataset, and an accuracy of 0.987, a kappa index of 0.975, an AUROC of 0.989, and an AUPRC of 0.987 on the COVID-CT dataset, using our CNN after optimization of the hyperparameters, the selection of features and the multi-layer perceptron classifier. Compared with pretrained CNNs and related state-of-the-art works, the results achieved by the proposed methodology were superior. Our results show that the proposed method can assist specialists in screening and can aid in diagnosing patients with suspected COVID-19.

Authors

  • Edson D Carvalho
    Electrical Engineering, Federal University of Piauí - UFPI, Teresina, PI, Brazil. Electronic address: edsondamasceno@ufpi.edu.br.
  • Romuere R V Silva
    Federal University of Piauí, Brazil; Federal University of Ceará, Brazil. Electronic address: romuere@ufpi.edu.br.
  • Flávio H D Araújo
    Campus Senador Helvídio Nunes de Barros, Federal University of Piauí, Picos, Piauí, Brazil. Electronic address: flavio86@ufpi.edu.br.
  • Ricardo de A L Rabelo
    Electrical Engineering, Federal University of Piauí - UFPI, Teresina, PI, Brazil; Computer Science, Federal University of Piauí - UFPI, Teresina, PI, Brazil. Electronic address: ricardoalr@ufpi.edu.br.
  • Antonio Oseas de Carvalho Filho