International audienceWe examine the feasibility of using synthetic medical data generated by GANs in the classroom, to teach data science in health infor-matics. We present an end-to-end methodology to retain instructional utility, while preserving privacy to a level, which meets regulatory requirements: (1) a GAN is trained by a certified medical-data security-aware agent, inside a secure environment; (2) the final GAN model is used outside of the secure environment by external users (instructors or researchers) to generate synthetic data. This second step facilitates data handling for external users, by avoiding de-identification, which may require special user training, be costly, and/or cause loss of data fidelity. We benchmark our pro...
With the rapid advancements in machine learning, the health care paradigm is shifting from treatment...
International audienceGenerating synthetic data represents an attractive solution for creating open ...
International audienceGenerating synthetic data represents an attractive solution for creating open ...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceWe develop metrics for measuring the quality of synthetic health data for both...
International audienceWe develop metrics for measuring the quality of synthetic health data for both...
International audienceWe develop metrics for measuring the quality of synthetic health data for both...
International audienceInstitutions collect massive learning traces but they may not disclose it for ...
International audienceInstitutions collect massive learning traces but they may not disclose it for ...
International audienceInstitutions collect massive learning traces but they may not disclose it for ...
Institutions collect massive learning traces but they may not disclose it for privacy issues. Synthe...
With the rapid advancements in machine learning, the health care paradigm is shifting from treatment...
International audienceGenerating synthetic data represents an attractive solution for creating open ...
International audienceGenerating synthetic data represents an attractive solution for creating open ...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceWe examine the feasibility of using synthetic medical data generated by GANs i...
International audienceWe develop metrics for measuring the quality of synthetic health data for both...
International audienceWe develop metrics for measuring the quality of synthetic health data for both...
International audienceWe develop metrics for measuring the quality of synthetic health data for both...
International audienceInstitutions collect massive learning traces but they may not disclose it for ...
International audienceInstitutions collect massive learning traces but they may not disclose it for ...
International audienceInstitutions collect massive learning traces but they may not disclose it for ...
Institutions collect massive learning traces but they may not disclose it for privacy issues. Synthe...
With the rapid advancements in machine learning, the health care paradigm is shifting from treatment...
International audienceGenerating synthetic data represents an attractive solution for creating open ...
International audienceGenerating synthetic data represents an attractive solution for creating open ...