| Literature DB >> 34068796 |
Mohammed S Alqahtani1,2, Mohamed Abbas3,4, Ali Alqahtani5, Mohammad Alshahrani6, Abdulhadi Alkulib5, Magbool Alelyani1, Awad Almarhaby2, Abdullah Alsabaani7.
Abstract
Since late 2019, Coronavirus Disease 2019 (COVID-19) has spread all over the world. The disease is highly contagious, and it may lead to acute respiratory distress (ARD). Medical imaging can play an important role in classifying, detecting, and measuring the severity of the virus. This study aims to provide a novel auto-detection tool that can detect abnormal changes in conventional X-ray images for confirmed COVID-19 cases. X-ray images from patients diagnosed with COVID-19 were converted into 19 different colored layers. Each layer represented objects with similar contrast that could be defined as a specific color. The objects with similar contrasts were formed in a single layer. All the objects from all the layers were extracted as a single-color image. Based on the differentiation of colors, the prototype model was able to recognize a wide spectrum of abnormal changes in the image texture. This was true even if there was minimal variation of the contrast values of the detected uncleared abnormalities. The results indicate that the proposed novel method can detect and determine the degree of lung infection from COVID-19 with an accuracy of 91%, compared to the opinions of three experienced radiologists. The method can also efficiently determine the sites of infection and the severity of the disease by classifying the X-rays into five levels of severity. Thus, the proposed COVID-19 autodetection method can identify locations and indicate the degree of severity of the disease by comparing affected tissue with healthy tissue, and it can predict where the disease may spread.Entities:
Keywords: SARS-COV-2; auto-detection; chest X-ray images; disease severity; lung infection
Year: 2021 PMID: 34068796 PMCID: PMC8151385 DOI: 10.3390/diagnostics11050855
Source DB: PubMed Journal: Diagnostics (Basel) ISSN: 2075-4418
Figure 1Schematic for the prototyped color-thresholding auto-detection method.
Figure 2Chest X-ray images for five confirmed SARS-COV2 cases. These images show the levels of severity of inflammation in three different modes: original image mode (first row), multi-color thresholding mode (second row), and segmentation mode (third row).
Figure 3Evaluation data provided by three radiologists compared to the prototype color-thresholding auto-detection method.
Figure 4Classifications of severity by the prototype color-thresholding auto-detection method. The distribution of the data shows the ratio of cumulative black pixels to total pixels in the ROI.
Figure 5Box plot represents the severity levels of the disease based on the data retrieved from the X-ray images and the cumulative black pixels to total pixels in the ROI.
Quantitative statistical evaluation for the outcome of the proposed model against radiologists’ readings.
| Statistical Parameters | Value | Conclusion |
|---|---|---|
| Standard deviations | 1.1428 | This value is tiny, indicating that the data are clustered in the center. |
| 0.9319 | Test values < 1 mean that the outputs of the proposed technique and the radiologists are not substantially different. | |
| 0.2738 | A | |
| Cohen’s Kappa | 0.9141 | This value varies from 0.81 to 1.00. This ensures that the findings of the proposed technique and the radiologists are perfectly compatible. |
Accuracy comparison for the proposed model and other published models for a similar purpose.
| Study | Year | Accuracy |
|---|---|---|
| Cohen et al. [ | 2020 | 80% |
| Amer et al. [ | 2020 | 94% |
| Afshar et al. [ | 2020 | 96.24% |
| Borkowski et al. [ | 2020 | 89% |
| Harmon et al. [ | 2020 | 90.8% |
| Snider et al. [ | 2020 | 90.56% |
| Proposed method | 2021 | 91% |