Chest Radiographs Classification Using Multi-model Deep Learning: A Comparative Study

04/21/2022
by   Dulani Meedeniya, et al.
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Respiratory diseases have been a main reason for death in many countries worldwide. This study considers Pneumonia which is a common lung infection condition and COVID-19 which was declared a pandemic in 2020. Since both diseases can lead to life-threatening conditions, detecting these conditions at an early stage is crucial to properly treat the patients. While chest X-rays are widely used for diagnosing these diseases, it requires expert knowledge. This study focuses on introducing a deep learning based approach for analysing chest X-ray images to detect normal, Pneumonia and COVID-19 conditions. Experiments were conducted with multi-model deep learning models including MobileNetV2, Resnet50, InceptionV3, and Xception architectures with added layers, and 5-fold cross-validation was used. The top average accuracy of 98.87% and the top average recall of 98.54% were both obtained from the ResNet model.

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