Differential privacy preserved federated learning for prognostic modeling in COVID‐19 patients using large multi‐institutional chest CT dataset

Author:

Shiri Isaac1,Salimi Yazdan1,Sirjani Nasim2,Razeghi Behrooz3,Bagherieh Sara4,Pakbin Masoumeh5,Mansouri Zahra1,Hajianfar Ghasem1,Avval Atlas Haddadi6,Askari Dariush7,Ghasemian Mohammadreza8,Sandoughdaran Saleh9,Sohrabi Ahmad10,Sadati Elham11,Livani Somayeh12,Iranpour Pooya13,Kolahi Shahriar14,Khosravi Bardia15,Bijari Salar11,Sayfollahi Sahar16,Atashzar Mohammad Reza17,Hasanian Mohammad18,Shahhamzeh Alireza19,Teimouri Arash13,Goharpey Neda20,Shirzad‐Aski Hesamaddin21,Karimi Jalal22,Radmard Amir Reza23,Rezaei‐Kalantari Kiara24,Oghli Mostafa Ghelich2,Oveisi Mehrdad25,Vafaei Sadr Alireza26,Voloshynovskiy Slava3,Zaidi Habib1272829

Affiliation:

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

2. Research and Development Department Med Fanavarn Plus Co Karaj Iran

3. Department of Computer Science University of Geneva Geneva Switzerland

4. School of Medicine Isfahan University of Medical Sciences Isfahan Iran

5. Imaging Department Qom University of Medical Sciences Qom Iran

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

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

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

9. Department of Clinical Oncology Royal Surrey County Hospital Guildford UK

10. Radin Makian Azma Mehr Ltd. Radinmehr Veterinary Laboratory Iran University of Medical Sciences 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. Medical Imaging Research Center Department of Radiology 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 Neurosurgery Faculty of Medical Sciences Iran University of Medical Sciences Tehran Iran

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

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

19. Clinical research development center Qom University of Medical Sciences Qom Iran

20. Department of radiation oncology Shohada‐e Tajrish Hospital Shahid Beheshti University of Medical Sciences Tehran Iran

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

22. Department of Infectious Disease School of Medicine Fasa University of Medical Sciences Fasa Iran

23. Department of Radiology Shariati Hospital Tehran University of Medical Sciences Tehran Iran

24. Rajaie Cardiovascular Medical & Research Center Iran University of Medical Science Tehran Iran

25. Department of Computer Science University of British Columbia Vancouver British Columbia Canada

26. Department of Public Health Sciences, College of Medicine Pennsylvania State University Hershey Pennsylvania USA

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

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

29. University Research and Innovation Center Óbuda University Budapest Hungary

Abstract

AbstractBackgroundNotwithstanding the encouraging results of previous studies reporting on the efficiency of deep learning (DL) in COVID‐19 prognostication, clinical adoption of the developed methodology still needs to be improved. To overcome this limitation, we set out to predict the prognosis of a large multi‐institutional cohort of patients with COVID‐19 using a DL‐based model.PurposeThis study aimed to evaluate the performance of deep privacy‐preserving federated learning (DPFL) in predicting COVID‐19 outcomes using chest CT images.MethodsAfter applying inclusion and exclusion criteria, 3055 patients from 19 centers, including 1599 alive and 1456 deceased, were enrolled in this study. Data from all centers were split (randomly with stratification respective to each center and class) into a training/validation set (70%/10%) and a hold‐out test set (20%). For the DL model, feature extraction was performed on 2D slices, and averaging was performed at the final layer to construct a 3D model for each scan. The DensNet model was used for feature extraction. The model was developed using centralized and FL approaches. For FL, we employed DPFL approaches. Membership inference attack was also evaluated in the FL strategy. For model evaluation, different metrics were reported in the hold‐out test sets. In addition, models trained in two scenarios, centralized and FL, were compared using the DeLong test for statistical differences.ResultsThe centralized model achieved an accuracy of 0.76, while the DPFL model had an accuracy of 0.75. Both the centralized and DPFL models achieved a specificity of 0.77. The centralized model achieved a sensitivity of 0.74, while the DPFL model had a sensitivity of 0.73. A mean AUC of 0.82 and 0.81 with 95% confidence intervals of (95% CI: 0.79–0.85) and (95% CI: 0.77–0.84) were achieved by the centralized model and the DPFL model, respectively. The DeLong test did not prove statistically significant differences between the two models (p‐value = 0.98). The AUC values for the inference attacks fluctuate between 0.49 and 0.51, with an average of 0.50 ± 0.003 and 95% CI for the mean AUC of 0.500 to 0.501.ConclusionThe performance of the proposed model was comparable to centralized models while operating on large and heterogeneous multi‐institutional datasets. In addition, the model was resistant to inference attacks, ensuring the privacy of shared data during the training process.

Publisher

Wiley

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