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100 _aJyoti Singhai
245 _aImproved Multiclass Lung Disease Classification Using Segmentation and Deep Learning from Chest X-Ray Images
300 _aPages 318-331
520 _aChest X-Ray (CXR) imaging has developed as an important technique for identifying lung diseases, especially in low- and middle-income nations where tuberculosis and pneumonia are serious health problems. With the onset of the COVID-19 pandemic, the need for early and accurate diagnosis has become even more pressing. This research presents a hybrid segmentation and classification for the multiclass lung disease classification using CXR images. The authors use Deep Atrous Attention U-Net (DAA-UNet), specifically designed for lung segmentation, enhancing the Region of Interest (RoI) for classification. The segmented lung regions are then classified using fine-tuned transfer learning on pre-trained models (ResNet101, ChexNet, DenseNet201, and InceptionV3). This hybrid segmentation and classification method achieves an average accuracy of 96.87%, significantly outperforming other classification models, as evidenced by metrics such as precision, sensitivity, specificity, and F1-score. This method exemplifies the potential for integrating deep learning classifiers with image segmentation to improve the diagnosis of lung disease, enabling early intervention and improved patient outcomes.
654 _aASPP U-Net
_aAttention U-Net
_aChest X-Ray
_aLung segmentation
_aLung disease classifications
_aU-Net
700 _a Vivek Kumar Yadav
773 0 _080270
_9114207
_dNew Delhi IETE
_tIETE Technical Review
_x0256-4602
942 _cJA
999 _c133181
_d133181