International audienceWe develop metrics for measuring the quality of synthetic health data for both education and research. We use novel and existing metrics to capture a synthetic dataset's resemblance, privacy, utility and footprint. Using these metrics, we develop an end-to-end workflow based on our generative adversarial network (GAN) method, HealthGAN, that creates privacy preserving synthetic health data. Our workflow meets privacy specifications of our data partner: (1) the HealthGAN is trained inside a secure environment; (2) the HealthGAN model is used outside of the secure environment by external users to generate synthetic data. This second step facilitates data handling for external users by avoiding de-identification, which ma...
Public health researchers face significant challenges when it comes to sharing their data with other...
Digital health applications can improve quality and effectiveness of healthcare, by offering a numbe...
These talks were presented for the Privacy Day Webinar 2022 sponsored by the American Statistical As...
International audienceWe develop metrics for measuring the quality of synthetic health data for both...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceGenerating synthetic data represents an attractive solution for creating open ...
With the rapid advancements in machine learning, the health care paradigm is shifting from treatment...
Synthetic health data have the potential to mitigate privacy concerns when sharing data to support b...
The growing development of artificial intelligence (AI), particularly neural networks, is transformi...
A large amount of personal health data that is highly valuable to the scientific community is still ...
Hospitals and General Practitioner (GP) surgeries within National Health Services (NHS), collect pat...
High-quality tabular data is a crucial requirement for developing data-driven applications, especial...
Background: Assurance of digital health interventions involves, amongst others, clinical validation...
Privacy concerns around sharing personally identifiable information are a major barrier to data shar...
International audienceInstitutions collect massive learning traces but they may not disclose it for ...
Public health researchers face significant challenges when it comes to sharing their data with other...
Digital health applications can improve quality and effectiveness of healthcare, by offering a numbe...
These talks were presented for the Privacy Day Webinar 2022 sponsored by the American Statistical As...
International audienceWe develop metrics for measuring the quality of synthetic health data for both...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceGenerating synthetic data represents an attractive solution for creating open ...
With the rapid advancements in machine learning, the health care paradigm is shifting from treatment...
Synthetic health data have the potential to mitigate privacy concerns when sharing data to support b...
The growing development of artificial intelligence (AI), particularly neural networks, is transformi...
A large amount of personal health data that is highly valuable to the scientific community is still ...
Hospitals and General Practitioner (GP) surgeries within National Health Services (NHS), collect pat...
High-quality tabular data is a crucial requirement for developing data-driven applications, especial...
Background: Assurance of digital health interventions involves, amongst others, clinical validation...
Privacy concerns around sharing personally identifiable information are a major barrier to data shar...
International audienceInstitutions collect massive learning traces but they may not disclose it for ...
Public health researchers face significant challenges when it comes to sharing their data with other...
Digital health applications can improve quality and effectiveness of healthcare, by offering a numbe...
These talks were presented for the Privacy Day Webinar 2022 sponsored by the American Statistical As...