AttCDCNet: Attention-enhanced Chest Disease Classification using X-Ray Images
Chest X-rays (X-ray images) have been proven to be effective for the diagnosis of chest diseases, including Pneumonia, Lung Opacity, and COVID-19. However, relying on traditional medical methods for diagnosis from X-ray images is prone to delays and inaccuracies because the medical personnel who eva...
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Zusammenfassung: | Chest X-rays (X-ray images) have been proven to be effective for the
diagnosis of chest diseases, including Pneumonia, Lung Opacity, and COVID-19.
However, relying on traditional medical methods for diagnosis from X-ray images
is prone to delays and inaccuracies because the medical personnel who evaluate
the X-ray images may have preconceived biases. For this reason, researchers
have proposed the use of deep learning-based techniques to facilitate the
diagnosis process. The preeminent method is the use of sophisticated
Convolutional Neural Networks (CNNs). In this paper, we propose a novel
detection model named \textbf{AttCDCNet} for the task of X-ray image diagnosis,
enhancing the popular DenseNet121 model by adding an attention block to help
the model focus on the most relevant regions, using focal loss as a loss
function to overcome the imbalance of the dataset problem, and utilizing
depth-wise convolution to reduce the parameters to make the model lighter.
Through extensive experimental evaluations, the proposed model demonstrates
exceptional performance, showing better results than the original DenseNet121.
The proposed model achieved an accuracy, precision and recall of 94.94%, 95.14%
and 94.53%, respectively, on the COVID-19 Radiography Dataset. |
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DOI: | 10.48550/arxiv.2410.15437 |