Federated learning and differential privacy for medical image analysis
University of Waterloo · MaRS · +3 more institutions
Abstract
The artificial intelligence revolution has been spurred forward by the availability of large-scale datasets. In contrast, the paucity of large-scale medical datasets hinders the application of machine learning in healthcare. The lack of publicly available multi-centric and diverse datasets mainly stems from confidentiality and privacy concerns around sharing medical data. To demonstrate a feasible path forward in medical image imaging, we conduct a case study of applying a differentially private federated learning framework for analysis of histopathology images, the largest and perhaps most complex medical images. We study the effects of IID and non-IID distributions along with the number of healthcare…
Citation impact
- FWCI
- 38.98
- Percentile
- 100%
- References
- 29
Authors
5- MAMohammed AdnanCorresponding
University of Waterloo, MaRS, Vector Institute, University of Guelph
- SKShivam Kalra
University of Waterloo, MaRS, Vector Institute
- JCJesse C. Cresswell
MaRS
- GWGraham W. Taylor
MaRS, Vector Institute, University of Guelph
- HRHamid R. Tizhoosh
University of Waterloo, MaRS, Vector Institute, Mayo Clinic in Florida
Topics & keywords
- Computer science
- Confidentiality
- Differential privacy
- Federated learning
- Machine learning
- Support vector machine
- Artificial intelligence
- Scale (ratio)
- Partnerships for the goals