Quantitative Evaluation of COVID-19 Pneumonia CT Using AI Analysis-Feasibility and Differentiation from Other Common Pneumonia Forms.
Una EbongSusanne Martina BüttnerStefan Andreas SchmidtFranziska FlackPatrick KorfLynn PetersBeate GrünerSteffen StengerThomas StammingerHans Armin KestlerMeinrad BeerChristopher KlothPublished in: Diagnostics (Basel, Switzerland) (2023)
PURPOSE: To implement the technical feasibility of an AI-based software prototype optimized for the detection of COVID-19 pneumonia in CT datasets of the lung and the differentiation between other etiologies of pneumonia. METHODS: This single-center retrospective case-control-study consecutively yielded 144 patients (58 female, mean age 57.72 ± 18.25 y) with CT datasets of the lung. Subgroups including confirmed bacterial ( n = 24, 16.6%), viral ( n = 52, 36.1%), or fungal ( n = 25, 16.6%) pneumonia and ( n = 43, 30.7%) patients without detected pneumonia (comparison group) were evaluated using the AI-based Pneumonia Analysis prototype . Scoring (extent, etiology) was compared to reader assessment. RESULTS: The software achieved an optimal sensitivity of 80.8% with a specificity of 50% for the detection of COVID-19; however, the human radiologist achieved optimal sensitivity of 80.8% and a specificity of 97.2%. The mean postprocessing time was 7.61 ± 4.22 min. The use of a contrast agent did not influence the results of the software ( p = 0.81). The mean evaluated COVID-19 probability is 0.80 ± 0.36 significantly higher in COVID-19 patients than in patients with fungal pneumonia ( p < 0.05) and bacterial pneumonia ( p < 0.001). The mean percentage of opacity (PO) and percentage of high opacity (PHO ≥ -200 HU) were significantly higher in COVID-19 patients than in healthy patients. However, the total mean HU in COVID-19 patients was -679.57 ± 112.72, which is significantly higher than in the healthy control group ( p < 0.001). CONCLUSION: The detection and quantification of pneumonia beyond the primarily trained COVID-19 datasets is possible and shows comparable results for COVID-19 pneumonia to an experienced reader. The advantages are the fast, automated segmentation and quantification of the pneumonia foci.
Keyphrases
- sars cov
- coronavirus disease
- end stage renal disease
- respiratory failure
- newly diagnosed
- chronic kidney disease
- ejection fraction
- community acquired pneumonia
- machine learning
- endothelial cells
- magnetic resonance imaging
- intensive care unit
- peritoneal dialysis
- rna seq
- body composition
- image quality
- cross sectional
- extracorporeal membrane oxygenation
- convolutional neural network
- contrast enhanced
- positron emission tomography
- pet ct
- single cell
- high intensity
- quantum dots