4.5 Article

Pulmonary Diseases Decision Support System Using Deep Learning Approach

Journal

CMC-COMPUTERS MATERIALS & CONTINUA
Volume 73, Issue 1, Pages 311-326

Publisher

TECH SCIENCE PRESS
DOI: 10.32604/cmc.2022.025750

Keywords

Pulmonary diseases; deep learning; lung opacity; classification; majority voting; ensemble features

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Pulmonary diseases are common worldwide, and distinguishing them on chest radiographs is challenging. Image processing techniques and AI models have been developed to accurately diagnose lung diseases. This study analyzed the performance of four popular pretrained models in distinguishing different pulmonary diseases, and suggested that an efficient decision support system can be developed using these approaches.
Pulmonary diseases are common throughout the world, especially in developing countries. These diseases include chronic obstructive pulmonary diseases, pneumonia, asthma, tuberculosis, fibrosis, and recently COVID-19. In general, pulmonary diseases have a similar footprint on chest radiographs which makes them difficult to discriminate even for expert radiologists. In recent years, many image processing techniques and artificial intelligence models have been developed to quickly and accurately diagnose lung diseases. In this paper, the performance of four popular pretrained models (namely VGG16, DenseNet201, DarkNet19, and XceptionNet) in distinguishing between different pulmonary diseases was analyzed. To the best of our knowledge, this is the first published study to ever attempt to distinguish all four cases normal, pneumonia, COVID-19 and lung opacity from ChestX-Ray (CXR) images. All models were trained using Chest-X-Ray (CXR) images, and statistically tested using 5-fold cross validation. Using individual models, XceptionNet outperformed all other models with a 94.775% accuracy and Area Under the Curve (AUC) of Receiver Operating Characteristic (ROC) of 99.84%. On the other hand, DarkNet19 represents a good compromise between accuracy, fast convergence, resource utilization, and near real time detection (0.33 s). Using a collection of models, the 97.79% accuracy achieved by Ensemble Features was the highest among all surveyed methods, but it takes the longest time to predict an image (5.68 s). An efficient effective decision support system can be developed using one of those approaches to assist radiologists in the field make the right assessment in terms of accuracy and prediction time, such a dependable system can be used in rural areas and various healthcare sectors.

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