Microscopic segmentation and classification of COVID-19 infection with ensemble convolutional neural network.
Javeria AminMuhammad Almas AnjumMuhammad SharifAmjad RehmanTanzila SabaRida ZahraPublished in: Microscopy research and technique (2021)
The detection of biological RNA from sputum has a comparatively poor positive rate in the initial/early stages of discovering COVID-19, as per the World Health Organization. It has a different morphological structure as compared to healthy images, manifested by computer tomography (CT). COVID-19 diagnosis at an early stage can aid in the timely cure of patients, lowering the mortality rate. In this reported research, three-phase model is proposed for COVID-19 detection. In Phase I, noise is removed from CT images using a denoise convolutional neural network (DnCNN). In the Phase II, the actual lesion region is segmented from the enhanced CT images by using deeplabv3 and ResNet-18. In Phase III, segmented images are passed to the stack sparse autoencoder (SSAE) deep learning model having two stack auto-encoders (SAE) with the selected hidden layers. The designed SSAE model is based on both SAE and softmax layers for COVID19 classification. The proposed method is evaluated on actual patient data of Pakistan Ordinance Factories and other public benchmark data sets with different scanners/mediums. The proposed method achieved global segmentation accuracy of 0.96 and 0.97 for classification.
Keyphrases
- deep learning
- convolutional neural network
- coronavirus disease
- sars cov
- phase ii
- phase iii
- artificial intelligence
- early stage
- clinical trial
- open label
- machine learning
- computed tomography
- image quality
- big data
- dual energy
- contrast enhanced
- ejection fraction
- loop mediated isothermal amplification
- positron emission tomography
- electronic health record
- cystic fibrosis
- respiratory syndrome coronavirus
- type diabetes
- label free
- squamous cell carcinoma
- prognostic factors
- mental health
- placebo controlled
- air pollution
- coronary artery disease
- neural network
- data analysis
- patient reported