4.5 Article

Automatic COVID-19 detection from X-ray images using ensemble learning with convolutional neural network

期刊

PATTERN ANALYSIS AND APPLICATIONS
卷 24, 期 3, 页码 1111-1124

出版社

SPRINGER
DOI: 10.1007/s10044-021-00970-4

关键词

Coronavirus; COVID-19; Ensemble learning; Deep learning; Convolutional neural network

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This study introduces a solution based on deep convolutional neural networks to detect COVID-19 positive patients using chest X-ray images. Multiple CNN models are utilized and combined through a weighted average ensembling technique for prediction.
COVID-19 continues to have catastrophic effects on the lives of human beings throughout the world. To combat this disease it is necessary to screen the affected patients in a fast and inexpensive way. One of the most viable steps towards achieving this goal is through radiological examination, Chest X-Ray being the most easily available and least expensive option. In this paper, we have proposed a Deep Convolutional Neural Network-based solution which can detect the COVID-19 +ve patients using chest X-Ray images. Multiple state-of-the-art CNN models-DenseNet201, Resnet50V2 and Inceptionv3, have been adopted in the proposed work. They have been trained individually to make independent predictions. Then the models are combined, using a new method of weighted average ensembling technique, to predict a class value. To test the efficacy of the solution we have used publicly available chest X-ray images of COVID +ve and -ve cases. 538 images of COVID +ve patients and 468 images of COVID -ve patients have been divided into training, test and validation sets. The proposed approach gave a classification accuracy of 91.62% which is higher than the state-of-the-art CNN models as well the compared benchmark algorithm. We have developed a GUI-based application for public use. This application can be used on any computer by any medical personnel to detect COVID +ve patients using Chest X-Ray images within a few seconds.

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