Impartially Validated Multiple Deep-Chain Models to Detect COVID-19 in Chest X-ray Using Latent Space Radiomics.
Bardia YousefiSatoru KawakitaArya AminiHamed AkbariShailesh M AdvaniMoulay A AkhloufiXavier P V MaldgueSamad AhadianPublished in: Journal of clinical medicine (2021)
The COVID-19 pandemic continues to spread globally at a rapid pace, and its rapid detection remains a challenge due to its rapid infectivity and limited testing availability. One of the simply available imaging modalities in clinical routine involves chest X-ray (CXR), which is often used for diagnostic purposes. Here, we proposed a computer-aided detection of COVID-19 in CXR imaging using deep and conventional radiomic features. First, we used a 2D U-Net model to segment the lung lobes. Then, we extracted deep latent space radiomics by applying deep convolutional autoencoder (ConvAE) with internal dense layers to extract low-dimensional deep radiomics. We used Johnson-Lindenstrauss (JL) lemma, Laplacian scoring (LS), and principal component analysis (PCA) to reduce dimensionality in conventional radiomics. The generated low-dimensional deep and conventional radiomics were integrated to classify COVID-19 from pneumonia and healthy patients. We used 704 CXR images for training the entire model (i.e., U-Net, ConvAE, and feature selection in conventional radiomics). Afterward, we independently validated the whole system using a study cohort of 1597 cases. We trained and tested a random forest model for detecting COVID-19 cases through multivariate binary-class and multiclass classification. The maximal (full multivariate) model using a combination of the two radiomic groups yields performance in classification cross-validated accuracy of 72.6% (69.4-74.4%) for multiclass and 89.6% (88.4-90.7%) for binary-class classification.
Keyphrases
- coronavirus disease
- sars cov
- deep learning
- loop mediated isothermal amplification
- lymph node metastasis
- machine learning
- high resolution
- end stage renal disease
- respiratory syndrome coronavirus
- chronic kidney disease
- climate change
- ejection fraction
- intensive care unit
- resistance training
- ionic liquid
- blood pressure
- mass spectrometry
- heart rate
- sensitive detection
- computed tomography
- photodynamic therapy
- patient reported outcomes
- clinical practice
- quantum dots
- label free