scholarly journals Technique, radiation safety and image quality for chest X-ray imaging through glass and in mobile settings during the COVID-19 pandemic

2020 ◽  
Vol 43 (3) ◽  
pp. 765-779
Author(s):  
Zoe Brady ◽  
Heather Scoullar ◽  
Ben Grinsted ◽  
Kyle Ewert ◽  
Helen Kavnoudias ◽  
...  
2021 ◽  
Vol 29 (1) ◽  
pp. 19-36
Author(s):  
Çağín Polat ◽  
Onur Karaman ◽  
Ceren Karaman ◽  
Güney Korkmaz ◽  
Mehmet Can Balcı ◽  
...  

BACKGROUND: Chest X-ray imaging has been proved as a powerful diagnostic method to detect and diagnose COVID-19 cases due to its easy accessibility, lower cost and rapid imaging time. OBJECTIVE: This study aims to improve efficacy of screening COVID-19 infected patients using chest X-ray images with the help of a developed deep convolutional neural network model (CNN) entitled nCoV-NET. METHODS: To train and to evaluate the performance of the developed model, three datasets were collected from resources of “ChestX-ray14”, “COVID-19 image data collection”, and “Chest X-ray collection from Indiana University,” respectively. Overall, 299 COVID-19 pneumonia cases and 1,522 non-COVID 19 cases are involved in this study. To overcome the probable bias due to the unbalanced cases in two classes of the datasets, ResNet, DenseNet, and VGG architectures were re-trained in the fine-tuning stage of the process to distinguish COVID-19 classes using a transfer learning method. Lastly, the optimized final nCoV-NET model was applied to the testing dataset to verify the performance of the proposed model. RESULTS: Although the performance parameters of all re-trained architectures were determined close to each other, the final nCOV-NET model optimized by using DenseNet-161 architecture in the transfer learning stage exhibits the highest performance for classification of COVID-19 cases with the accuracy of 97.1 %. The Activation Mapping method was used to create activation maps that highlights the crucial areas of the radiograph to improve causality and intelligibility. CONCLUSION: This study demonstrated that the proposed CNN model called nCoV-NET can be utilized for reliably detecting COVID-19 cases using chest X-ray images to accelerate the triaging and save critical time for disease control as well as assisting the radiologist to validate their initial diagnosis.


2021 ◽  
Vol 11 (2) ◽  
pp. 411-424 ◽  
Author(s):  
José Daniel López-Cabrera ◽  
Rubén Orozco-Morales ◽  
Jorge Armando Portal-Diaz ◽  
Orlando Lovelle-Enríquez ◽  
Marlén Pérez-Díaz

2021 ◽  
Author(s):  
Ali Mohammad Alqudah ◽  
Shoroq Qazan ◽  
Ihssan S. Masad

Abstract BackgroundChest diseases are serious health problems that threaten the lives of people. The early and accurate diagnosis of such diseases is very crucial in the success of their treatment and cure. Pneumonia is one of the most widely occurred chest diseases responsible for a high percentage of deaths especially among children. So, detection and classification of pneumonia using the non-invasive chest x-ray imaging would have a great advantage of reducing the mortality rates.ResultsThe results showed that the best input image size in this framework was 64 64 based on comparison between different sizes. Using CNN as a deep features extractor and utilizing the 10-fold methodology the propose artificial intelligence framework achieved an accuracy of 94% for SVM and 93.9% for KNN, a sensitivity of 93.33% for SVM and 93.19% for KNN and a specificity of 96.68% for SVM and 96.60% for KNN.ConclusionsIn this study, an artificial intelligence framework has been proposed for the detection and classification of pneumonia based on chest x-ray imaging with different sizes of input images. The proposed methodology used CNN for features extraction that were fed to two different types of classifiers, namely, SVM and KNN; in addition to the SoftMax classifier which is the default CNN classifier. The proposed CNN has been trained, validated, and tested using a large dataset of chest x-ray images contains in total 5852 images.


Author(s):  
José Daniel López-Cabrera ◽  
Rubén Orozco-Morales ◽  
Jorge Armando Portal-Díaz ◽  
Orlando Lovelle-Enríquez ◽  
Marlén Pérez-Díaz

Stroke ◽  
2021 ◽  
Vol 52 (Suppl_1) ◽  
Author(s):  
Jin EUN ◽  
Hae-Kwan Park

Introduction: The difficulty neurointernvetionists face in keeping “Time is brain” in the middle of the COVID-19 pandemic are inevitable. Our health system began shutting down entire hospital for two weeks after a transport agent was diagnosed with COVID-19. It took an additional two weeks to establish the process of emergency treatment. We intend to introduce our protocols and report on their progress so far. Post-COVID-19 Protocol (Figure 1) Methods: A total of 52 patients underwent mechanical thrombectomy at Eunpyeong St. Mary’s Hospital before the Covid-19 outbreak. For 18 patients who underwent mechanical thrombectomy through a new process after COVID-19, door-to-image time, door-to-puncture time, and TICI grade were compared. Results: For the treatment of all patients, portable chest x-ray imaging was performed, but the door-to-initial-brain-image time (min) was 15.5 vs. 15 (before COVID-19 vs. after COVID-19) (p=0.265). Door-to-needle-time (min) showed a delay of 9 minutes, from 144.5 to 153.5, but it was not statistically significant (p=0.299). Up to 95.2% of patients before COVID-19 achieved TICI grade 2b or higher, and 100% of patients after COVID-19 have achieved TICI grade 2b or 3. (Table 1) Conclusions: Overall, there was a slight increase in the door-to-needle time, but clear protocols and guidelines for management and collaboration with the clinical workforce have been able to reduce delays and ensure timely and adequate management. When referring to the protocol implemented while preparing for infectious diseases, it will be a reference not only for COVID-19, but also for other diseases that may occur in the future.


2020 ◽  
Vol 7 ◽  
Author(s):  
Seung Hoon Yoo ◽  
Hui Geng ◽  
Tin Lok Chiu ◽  
Siu Ki Yu ◽  
Dae Chul Cho ◽  
...  

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