An integrated feature frame work for automated segmentation of COVID-19 infection from lung CT images.
Deepika SelvarajArunachalam VenkatesanVijayalakshmi G V MaheshAlex Noel Joseph RajPublished in: International journal of imaging systems and technology (2020)
The novel coronavirus disease (SARS-CoV-2 or COVID-19) is spreading across the world and is affecting public health and the world economy. Artificial Intelligence (AI) can play a key role in enhancing COVID-19 detection. However, lung infection by COVID-19 is not quantifiable due to a lack of studies and the difficulty involved in the collection of large datasets. Segmentation is a preferred technique to quantify and contour the COVID-19 region on the lungs using computed tomography (CT) scan images. To address the dataset problem, we propose a deep neural network (DNN) model trained on a limited dataset where features are selected using a region-specific approach. Specifically, we apply the Zernike moment (ZM) and gray level co-occurrence matrix (GLCM) to extract the unique shape and texture features. The feature vectors computed from these techniques enable segmentation that illustrates the severity of the COVID-19 infection. The proposed algorithm was compared with other existing state-of-the-art deep neural networks using the Radiopedia and COVID-19 CT Segmentation datasets presented specificity, sensitivity, sensitivity, mean absolute error (MAE), enhance-alignment measure (EMφ), and structure measure (S m) of 0.942, 0.701, 0.082, 0.867, and 0.783, respectively. The metrics demonstrate the performance of the model in quantifying the COVID-19 infection with limited datasets.
Keyphrases
- deep learning
- coronavirus disease
- artificial intelligence
- sars cov
- neural network
- computed tomography
- convolutional neural network
- machine learning
- respiratory syndrome coronavirus
- dual energy
- public health
- big data
- contrast enhanced
- image quality
- positron emission tomography
- magnetic resonance imaging
- optical coherence tomography
- high intensity
- global health