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An Ensemble of Global and Local-Attention Based Convolutional Neural Networks for COVID-19 Diagnosis on Chest X-ray Images

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The recent Coronavirus Disease 2019 (COVID-19) pandemic has put a tremendous burden on global health systems Medical practitioners are under great pressure for reliable screening of suspected cases employing adjunct… Click to show full abstract

The recent Coronavirus Disease 2019 (COVID-19) pandemic has put a tremendous burden on global health systems Medical practitioners are under great pressure for reliable screening of suspected cases employing adjunct diagnostic tools to standard point-of-care testing methodology Chest X-rays (CXRs) are appearing as a prospective diagnostic tool with easy-to-acquire, low-cost and less cross-contamination risk features Artificial intelligence (AI)-attributed CXR evaluation has shown great potential for distinguishing COVID-19-induced pneumonia from other associated clinical instances However, one of the associated challenges with diagnostic imaging-based modeling is incorrect feature attribution, which leads the model to learn misguiding disease patterns, causing wrong predictions Here, we demonstrate an effective deep learning-based methodology to mitigate the problem, thereby allowing the classification algorithm to learn from relevant features The proposed deep-learning framework consists of an ensemble of convolutional neural network (CNN) models focusing on both global and local pathological features from CXR lung images, while the latter is extracted using a multi-instance learning scheme and a local attention mechanism An inspection of a series of backbone CNN models using global and local features, and an ensemble of both features, trained from high-quality CXR images of 1311 patients, further augmented for achieving the symmetry in class distribution, to localize lung pathological features followed by the classification of COVID-19 and other related pneumonia, shows that a DenseNet161 architecture outperforms all other models, as evaluated on an independent test set of 159 patients with confirmed cases Specifically, an ensemble of DenseNet161 models with global and local attention-based features achieve an average balanced accuracy of 91 2%, average precision of 92 4%, and F1-score of 91 9% in a multi-label classification framework comprising COVID-19, pneumonia, and control classes The DenseNet161 ensembles were also found to be statistically significant from all other models in a comprehensive statistical analysis The current study demonstrated that the proposed deep learning-based algorithm can accurately identify the COVID-19-related pneumonia in CXR images, along with differentiating non-COVID-19-associated pneumonia with high specificity, by effectively alleviating the incorrect feature attribution problem, and exploiting an enhanced feature descriptor

Keywords: methodology; convolutional neural; covid; local attention; global local

Journal Title: Symmetry
Year Published: 2021

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