Synthetic data generation: a privacy-preserving approach to accelerate rare disease research
Universidade Nova de Lisboa · American University of Science and Technology · +1 more institution
Abstract
Rare disease research faces significant challenges due to limited patient data, strict privacy regulations, and the need for diverse datasets to develop accurate AI-driven diagnostics and treatments. Synthetic data-artificially generated datasets that mimic patient data while preserving privacy-offer a promising solution to these issues. This article explores how synthetic data can bridge data gaps, enabling the training of AI models, simulating clinical trials, and facilitating cross-border collaborations in rare disease research. We examine case studies where synthetic data successfully replicated patient characteristics, and supported predictive modelling and ensured compliance with regulations like GDPR…
Citation impact
- FWCI
- 81.33
- Percentile
- 100%
- References
- 57
Authors
3Topics & keywords
- Internet privacy
- Computer science
- Patient privacy
- Computer security
- Data science
- Health care
- Political science