CVD-HNet: Classifying Pneumonia and COVID-19 in Chest X-ray Images Using Deep Network.
Suganyadevi SV SeethalakshmiPublished in: Wireless personal communications (2022)
The use of computer-assisted analysis to improve image interpretation has been a long-standing challenge in the medical imaging industry. In terms of image comprehension, Continuous advances in AI (Artificial Intelligence), predominantly in DL (Deep Learning) techniques, are supporting in the classification, Detection, and quantification of anomalies in medical images. DL techniques are the most rapidly evolving branch of AI, and it's recently been successfully pragmatic in a variety of fields, including medicine. This paper provides a classification method for COVID 19 infected X-ray images based on new novel deep CNN model. For COVID19 specified pneumonia analysis, two new customized CNN architectures, CVD-HNet1 (COVID-HybridNetwork1) and CVD-HNet2 (COVID-HybridNetwork2), have been designed. The suggested method utilizes operations based on boundaries and regions, as well as convolution processes, in a systematic manner. In comparison to existing CNNs, the suggested classification method achieves excellent Accuracy 98 percent, F Score 0.99 and MCC 0.97. These results indicate impressive classification accuracy on a limited dataset, with more training examples, much better results can be achieved. Overall, our CVD-HNet model could be a useful tool for radiologists in diagnosing and detecting COVID 19 instances early.
Keyphrases
- deep learning
- artificial intelligence
- coronavirus disease
- convolutional neural network
- sars cov
- machine learning
- big data
- high resolution
- respiratory syndrome coronavirus
- healthcare
- magnetic resonance imaging
- randomized controlled trial
- optical coherence tomography
- magnetic resonance
- fluorescence imaging
- virtual reality
- clinical trial
- double blind