möglich sobald bei der ZB eingereicht worden ist.
Securing collaborative medical aI by using differential privacy: Domain transfer for classification of chest radiographs.
Radiol. Artif. Intell. 6, DOI: 10.1148/ryai.230212 (2024)
Purpose: To investigate the integration of differential privacy (DP) and analyze its impact on model performance as compared with models trained without DP. Materials and Methods: Leveraging more than 590 000 chest radiographs from five institutions, including VinDr-CXR from Vietnam, ChestX-ray14 and CheXpert from the United States, UKA-CXR from Germany, and PadChest from Spain, the authors evaluated the efficacy of DP-enhanced domain transfer (DP-DT) in classifying cardiomegaly, pleural effusion, pneumonia, atelectasis, and healthy individuals. Diagnostic performance and sex-specific and age-specific demographic fairness of DP-DT and of non–DP-DT models were compared using the area under the receiver operating characteristic curve (AUC) as the main metric, as well as accuracy, sensitivity, and specificity as secondary metrics, and evaluated for statistical significance using paired Student t tests. Results: Even with high privacy levels (ε ≈ 1), DP-DT showed no evidence of differences compared with non–DP-DT in terms of a decrease in AUC of cross-institutional performance as compared with single-institutional performance (VinDr-CXR: 0.07 vs 0.07, P = .96; ChestX-ray14: 0.07 vs 0.06, P = .12; CheXpert: 0.07 vs 0.07, P = .18; UKA-CXR: 0.18 vs 0.18, P = .90; and PadChest: 0.07 vs 0.07, P = .35). Furthermore, AUC differences between DP-DT and non–DP-DT models were less than 1% for all sex subgroups (P > .33 for female and P > .22 for male, for all domains) and nearly all age subgroups (P > .16 for younger participants, P > .33 for adults, and P > .27 for older adults, for nearly all domains). Conclusion: Cross-institutional performance of artificial intelligence models was not affected by DP.
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Publikationstyp
Artikel: Journalartikel
Dokumenttyp
Wissenschaftlicher Artikel
Schlagwörter
Chest Radiograph ; Computer Applications–general ; Computer-aided Diagnosis ; Convolutional Neural Network (cnn) ; Deep Learning ; Diagnosis ; Differential Privacy ; Domain Transfer ; Forensics ; Image Postprocessing ; Informatics ; Neural Networks ; Privacy-preserving Ai ; Supervised Learning ; Thorax ; Transfer Learning
ISSN (print) / ISBN
2638-6100
e-ISSN
2638-6100
Zeitschrift
Radiology. Artificial intelligence
Quellenangaben
Band: 6,
Heft: 1
Verlag
Radiological Society of North America
Verlagsort
820 Jorie Blvd, Suite 200, Oak Brook, Illinois, United States
Nichtpatentliteratur
Publikationen
Begutachtungsstatus
Peer reviewed
Institut(e)
Institute for Machine Learning in Biomed Imaging (IML)
Förderungen
Bavarian State Ministry for Science and the Arts
BMBF
Radiological Cooperative Network (RACOON) under the German Federal Ministry of Education and Research (BMBF)
BMBF
Radiological Cooperative Network (RACOON) under the German Federal Ministry of Education and Research (BMBF)