MH-COVIDNet: Diagnosis of COVID-19 using deep neural networks and meta-heuristic-based feature selection on X-ray images

•The study shows the effect of feature extraction on classification results after using the image contrast enhancement technique in X-ray images.•Assessment of classification performances with a small number of features selected over X-ray images with the help of meta-heuristic algorithms.•It offers...

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Veröffentlicht in:Biomedical signal processing and control 2021-02, Vol.64, p.102257-102257, Article 102257
1. Verfasser: Canayaz, Murat
Format: Artikel
Sprache:eng
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Zusammenfassung:•The study shows the effect of feature extraction on classification results after using the image contrast enhancement technique in X-ray images.•Assessment of classification performances with a small number of features selected over X-ray images with the help of meta-heuristic algorithms.•It offers an approach that helps the diagnosis of covid-19 on X-ray images. COVID-19 is a disease that causes symptoms in the lungs and causes deaths around the world. Studies are ongoing for the diagnosis and treatment of this disease, which is defined as a pandemic. Early diagnosis of this disease is important for human life. This process is progressing rapidly with diagnostic studies based on deep learning. Therefore, to contribute to this field, a deep learning-based approach that can be used for early diagnosis of the disease is proposed in our study. In this approach, a data set consisting of 3 classes of COVID19, normal and pneumonia lung X-ray images was created, with each class containing 364 images. Pre-processing was performed using the image contrast enhancement algorithm on the prepared data set and a new data set was obtained. Feature extraction was completed from this data set with deep learning models such as AlexNet, VGG19, GoogleNet, and ResNet. For the selection of the best potential features, two metaheuristic algorithms of binary particle swarm optimization and binary gray wolf optimization were used. After combining the features obtained in the feature selection of the enhancement data set, they were classified using SVM. The overall accuracy of the proposed approach was obtained as 99.38%. The results obtained by verification with two different metaheuristic algorithms proved that the approach we propose can help experts during COVID-19 diagnostic studies.
ISSN:1746-8094
1746-8108
1746-8094
DOI:10.1016/j.bspc.2020.102257