Deep Learning in Cardiothoracic Ratio Calculation and Cardiomegaly Detection

Author:

Kufel Jakub1ORCID,Paszkiewicz Iga2ORCID,Kocot Szymon3ORCID,Lis Anna4ORCID,Dudek Piotr5,Czogalik Łukasz5ORCID,Janik Michał5,Bargieł-Łączek Katarzyna6,Bartnikowska Wiktoria6,Koźlik Maciej7ORCID,Cebula Maciej8ORCID,Gruszczyńska Katarzyna1ORCID,Nawrat Zbigniew910ORCID

Affiliation:

1. Department of Radiology and Nuclear Medicine, Faculty of Medical Sciences in Katowice, Medical University of Silesia, Medyków 14, 40-752 Katowice, Poland

2. Tytus Chalubinski’s Hospital in Zakopane, 34-500 Zakopane, Poland

3. Bright Coders’ Factory, Technologiczna 2, 45-837 Opole, Poland

4. Faculty of Medicine in Katowice, Medical University of Silesia, Medyków 18, 40-752 Katowice, Poland

5. Students’ Scientific Association of Computer Analysis and Artificial Intelligence, Department of Radiology and Nuclear Medicine, Medical University of Silesia, Medyków 14, 40-752 Katowice, Poland

6. Paediatric Radiology Students’ Scientific Association, Division of Diagnostic Imaging, Department of Radiology and Nuclear Medicine, Faculty of Medical Science in Katowice, Medical University of Silesia, 40-752 Katowice, Poland

7. Division of Cardiology and Structural Heart Disease, Medical University of Silesia, 40-635 Katowice, Poland

8. Individual Specialist Medical Practice Maciej Cebula, 40-239 Katowice, Poland

9. Foundation of Cardiac Surgery Development, 41-800 Zabrze, Poland

10. Department of Biophysics, Faculty of Medical Sciences in Zabrze, Medical University of Silesia, 41-808 Zabrze, Poland

Abstract

Objectives: The purpose of this study is to evaluate the performance of our deep learning algorithm in calculating cardiothoracic ratio (CTR) and thus in the assessment of cardiomegaly or pericardial effusion occurrences on chest radiography (CXR). Methods: From a database of 8000 CXRs, 13 folders with a comparable number of images were created. Then, 1020 images were chosen randomly, in proportion to the number of images in each folder. Afterward, CTR was calculated using RadiAnt Digital Imaging and Communications in Medicine (DICOM) Viewer software (2023.1). Next, heart and lung anatomical areas were marked in 3D Slicer. From these data, we trained an AI model which segmented heart and lung anatomy and determined the CTR value. Results: Our model achieved an Intersection over Union metric of 88.28% for the augmented training subset and 83.06% for the validation subset. F1-score for subsets were accordingly 90.22% and 90.67%. In the comparative analysis of artificial intelligence (AI) vs. humans, significantly lower transverse thoracic diameter (TTD) (p < 0.001), transverse cardiac diameter (TCD) (p < 0.001), and CTR (p < 0.001) values obtained using the neural network were observed. Conclusions: Results confirm that there is a significant correlation between the measurements made by human observers and the neural network. After validation in clinical conditions, our method may be used as a screening test or advisory tool when a specialist is not available, especially on Intensive Care Units (ICUs) or Emergency Departments (ERs) where time plays a key role.

Publisher

MDPI AG

Reference28 articles.

1. Murphy, K. (2019). How data will improve healthcare without adding staff or beds. The Global Innovation Index 2019, World Intellectual Property Organization.

2. NHS England (2022, October 31). Diagnostic Imaging Dataset Annual Statistical Release 2017/18. Available online: https://www.england.nhs.uk/statistics/wp-content/uploads/sites/2/2018/11/Annual-Statistical-Release-2017-18-PDF-1.6MB-1.pdf.

3. (2022, November 04). X-ray Diagnostics: Frequency and Radiation Exposure of the German Population. Available online: https://www.bfs.de/EN/topics/ion/medicine/diagnostics/x-rays/frequency-exposure.html.

4. Gaillard, F., Sharma, R., and Bell, D. (2024, July 16). Cardiothoracic ratio. Reference article, Radiopaedia.org. Available online: https://radiopaedia.org/articles/cardiothoracic-ratio?lang=us.

5. Cardiac size in the supine chestfilm;Smits;Eur. J. Radiol.,1992

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