Differentiation of COVID‐19 pneumonia from other lung diseases using CT radiomic features and machine learning: A large multicentric cohort study

Author:

Shiri Isaac1,Salimi Yazdan1,Saberi Abdollah1,Pakbin Masoumeh2,Hajianfar Ghasem1,Avval Atlas Haddadi3,Sanaat Amirhossein1,Akhavanallaf Azadeh1,Mostafaei Shayan45,Mansouri Zahra1,Askari Dariush6,Ghasemian Mohammadreza7,Sharifipour Ehsan8,Sandoughdaran Saleh9,Sohrabi Ahmad10,Sadati Elham11,Livani Somayeh12,Iranpour Pooya13,Kolahi Shahriar14,Khosravi Bardia15,Khateri Maziar16,Bijari Salar11,Atashzar Mohammad Reza17,Shayesteh Sajad P.18,Babaei Mohammad Reza19,Jenabi Elnaz20,Hasanian Mohammad21,Shahhamzeh Alireza22,Ghomi Seyed Yaser Foroghi22,Mozafari Abolfazl23,Shirzad‐Aski Hesamaddin24,Movaseghi Fatemeh23,Bozorgmehr Rama25,Goharpey Neda26,Abdollahi Hamid2728ORCID,Geramifar Parham20,Radmard Amir Reza29,Arabi Hossein1,Rezaei‐Kalantari Kiara30,Oveisi Mehrdad3132,Rahmim Arman272833,Zaidi Habib1343536ORCID

Affiliation:

1. Division of Nuclear Medicine and Molecular Imaging Geneva University Hospital Geneva Switzerland

2. Imaging Department Qom University of Medical Sciences Qom Iran

3. School of Medicine Mashhad University of Medical Sciences Mashhad Iran

4. Division of Clinical Geriatrics, Department of Neurobiology, Care Sciences and Society Karolinska Institute Stockholm Sweden

5. Department of Medical Epidemiology and Biostatistics Karolinska Institute Stockholm Sweden

6. Department of Radiology Technology Shahid Beheshti University of Medical Sciences Tehran Iran

7. Department of Radiology, Shahid Beheshti Hospital Qom University of Medical Sciences Qom Iran

8. Neuroscience Research Center Qom University of Medical Sciences Qom Iran

9. Clinical Oncology Department Royal Surrey Hospital Guildford United Kingdom

10. Radin Makian Azma Mehr Ltd. Radinmehr Veterinary Laboratory Gorgan Iran

11. Department of Medical Physics, Faculty of Medical Sciences Tarbiat Modares University Tehran Iran

12. Clinical Research Development Unit (CRDU), Sayad Shirazi Hospital Golestan University of Medical Sciences Gorgan Iran

13. Department of Radiology Medical Imaging Research Center, Shiraz University of Medical Sciences Shiraz Iran

14. Department of Radiology School of Medicine, Advanced Diagnostic and Interventional Radiology Research Center (ADIR), Imam Khomeini Hospital, Tehran University of Medical Sciences Tehran Iran

15. Digestive Diseases Research Center, Digestive Diseases Research Institute, Tehran University of Medical Sciences Tehran Iran

16. Department of Medical Radiation Engineering, Science and Research Branch Islamic Azad University Tehran Tehran Iran

17. Department of Immunology, School of Medicine Fasa University of Medical Sciences Fasa Iran

18. Department of Physiology, Pharmacology and Medical Physics Alborz University of Medical Sciences Karaj Iran

19. Department of Interventional Radiology Firouzgar Hospital, Iran University of Medical Sciences Tehran Iran

20. Research Centre for Nuclear Medicine Tehran University of Medical Sciences Tehran Iran

21. Department of Radiology Arak University of Medical Sciences Arak Iran

22. Clinical Research Development Center Qom University of Medical Sciences Qom Iran

23. Department of Medical Sciences, Qom Branch Islamic Azad University Qom Iran

24. Infectious Diseases Research Center Golestan University of Medical Sciences Gorgan Iran

25. Clinical Research Development Unit, Shohada‐e Tajrish Hospital Shahid Beheshti University of Medical Sciences Tehran Iran

26. Department of Radiation Oncology, Shohada‐e Tajrish Hospital Shahid Beheshti University of Medical Sciences Tehran Iran

27. Department of Radiology University of British Columbia Vancouver BC Canada

28. Department of Integrative Oncology BC Cancer Research Institute Vancouver BC Canada

29. Department of Radiology, Shariati Hospital Tehran University of Medical Sciences Tehran Iran

30. Rajaie Cardiovascular, Medical & Research Center Iran University of Medical Sciences Tehran Iran

31. Comprehensive Cancer Centre, School of Cancer & Pharmaceutical Sciences, Faculty of Life Sciences & Medicine, King's College London London UK

32. Department of Computer Science University of British Columbia Vancouver BC Canada

33. Departments of Physics and Biomedical Engineering University of British Columbia Vancouver BC Canada

34. Department of Nuclear Medicine and Molecular Imaging, University of Groningen University Medical Center Groningen Groningen Netherlands

35. Department of Nuclear Medicine University of Southern Denmark Odense Denmark

36. University Research and Innovation Center Óbuda University Budapest Hungary

Abstract

AbstractTo derive and validate an effective machine learning and radiomics‐based model to differentiate COVID‐19 pneumonia from other lung diseases using a large multi‐centric dataset. In this retrospective study, we collected 19 private and five public datasets of chest CT images, accumulating to 26 307 images (15 148 COVID‐19; 9657 other lung diseases including non‐COVID‐19 pneumonia, lung cancer, pulmonary embolism; 1502 normal cases). We tested 96 machine learning‐based models by cross‐combining four feature selectors (FSs) and eight dimensionality reduction techniques with eight classifiers. We trained and evaluated our models using three different strategies: #1, the whole dataset (15 148 COVID‐19 and 11 159 other); #2, a new dataset after excluding healthy individuals and COVID‐19 patients who did not have RT‐PCR results (12 419 COVID‐19 and 8278 other); and #3 only non‐COVID‐19 pneumonia patients and a random sample of COVID‐19 patients (3000 COVID‐19 and 2582 others) to provide balanced classes. The best models were chosen by one‐standard‐deviation rule in 10‐fold cross‐validation and evaluated on the hold out test sets for reporting. In strategy#1, Relief FS combined with random forest (RF) classifier resulted in the highest performance (accuracy = 0.96, AUC = 0.99, sensitivity = 0.98, specificity = 0.94, PPV = 0.96, and NPV = 0.96). In strategy#2, Recursive Feature Elimination (RFE) FS and RF classifier combination resulted in the highest performance (accuracy = 0.97, AUC = 0.99, sensitivity = 0.98, specificity = 0.95, PPV = 0.96, NPV = 0.98). Finally, in strategy #3, the ANOVA FS and RF classifier combination resulted in the highest performance (accuracy = 0.94, AUC =0.98, sensitivity = 0.96, specificity = 0.93, PPV = 0.93, NPV = 0.96). Lung radiomic features combined with machine learning algorithms can enable the effective diagnosis of COVID‐19 pneumonia in CT images without the use of additional tests.

Funder

Schweizerischer Nationalfonds zur Förderung der Wissenschaftlichen Forschung

Publisher

Wiley

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