open access publication

Article, Early Access, 2024

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

MEDICAL PHYSICS, ISSN 0094-2405, 0094-2405, 10.1002/mp.16964

Contributors

Shiri, Isaac [1] Salimi, Yazdan [1] Sirjani, Nasim [2] Razeghi, Behrooz [1] Bagherieh, Sara [3] Pakbin, Masoumeh [4] Mansouri, Zahra [1] Hajianfar, Ghasem [1] Avval, Atlas Haddadi [5] Askari, Dariush [6] Ghasemian, Mohammadreza [4] Sandoughdaran, Saleh [7] Sohrabi, Ahmad [8] Sadati, Elham [9] Livani, Somayeh [10] Iranpour, Pooya [11] Kolahi, Shahriar [12] Khosravi, Bardia [12] Bijari, Salar [9] Sayfollahi, Sahar [8] Atashzar, Mohammad Reza [13] Hasanian, Mohammad [14] Shahhamzeh, Alireza [4] Teimouri, Arash [11] Goharpey, Neda [6] Shirzad-Aski, Hesamaddin [10] Karimi, Jalal [13] Radmard, Amir Reza [12] Rezaei-Kalantari, Kiara [8] Oghli, Mostafa Ghelich [2] Oveisi, Mehrdad [15] Vafaei Sadr, Alireza [16] [17] [18] Voloshynovskiy, Slava [1] Zaidi, Habib (Corresponding author) [1] [19] [20] [21]

Affiliations

  1. [1] Geneva Univ Hosp, Div Nucl Med & Mol Imaging, CH-1211 Geneva, Switzerland
  2. [NORA names: Switzerland; Europe, Non-EU; OECD];
  3. [2] Med Fanavarn Plus Co, Res & Dev Dept, Karaj, Iran
  4. [NORA names: Iran; Asia, Middle East];
  5. [3] Isfahan Univ Med Sci, Sch Med, Esfahan, Iran
  6. [NORA names: Iran; Asia, Middle East];
  7. [4] Qom Univ Med Sci, Clin Res Dev Ctr, Qom, Iran
  8. [NORA names: Iran; Asia, Middle East];
  9. [5] Mashhad Univ Med Sci, Sch Med, Mashhad, Iran
  10. [NORA names: Iran; Asia, Middle East];

Abstract

BackgroundNotwithstanding 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.

Keywords

COVID-19, CT, deep learning, federated learning, privacy, prognosis

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