Feb. 1, 2024, 12:45 p.m. | Jennifer Anne Bartell Sander Boisen Valentin Anders Krogh Henning Langberg Martin B{\o}gsted

cs.LG updates on arXiv.org arxiv.org

Recent advances in deep generative models have greatly expanded the potential to create realistic synthetic health datasets. These synthetic datasets aim to preserve the characteristics, patterns, and overall scientific conclusions derived from sensitive health datasets without disclosing patient identity or sensitive information. Thus, synthetic data can facilitate safe data sharing that supports a range of initiatives including the development of new predictive models, advanced health IT platforms, and general project ideation and hypothesis development. However, many questions and challenges remain, …

advances aim cs.lg data datasets data sharing deep generative models generative generative models health health data identity information patient patterns primer synthetic synthetic data

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