Talent development for local healthcare DX
As the global push for healthcare digital transformation (DX) accelerates, the need for a sustainable healthcare system in Japan is becoming more evident. This need is heightened by Japan's aging population and the looming threat of future pandemics and disasters. Drawing lessons from past failures, this research aims to establish a resilient healthcare system capable of addressing these challenges. Central to our approach is the development of a decentralized data model with exit regulations, enabling the effective use of data and the integration of emerging technologies such as generative AI and the metaverse.
This policy study focuses on:
- Governance for transitioning to a decentralized data system and implementing exit regulations
- Local utilization of collected data
- Regional implementation of emerging technologies, incorporating perspectives on talent development
Collaborating with pioneering local governments (such as Tsukuba City, Chino City, Kibi Chuo Town, Kanagawa Prefecture) and industry-academia-government consortia, the study seeks to conduct policy research that includes talent development for healthcare DX. By fostering collaboration among multidisciplinary experts and citizens, the project aims to cultivate the workforce necessary to implement healthcare DX across both urban and rural areas. The study will use a hands-on approach to generate policy recommendations and disseminate information nationally and internationally, paving the way for a universally adaptable healthcare DX initiative.
Principal Investigator
-
藤田卓仙
- SENIOR FELLOW
- Takanori Fujita
- Takanori Fujita
Co-Investigators
-
窪田杏奈
- RESEARCH FELLOW
- Anna Kubota
- Anna Kubota
-
牧尉太
- SENIOR FELLOW
- Jota Maki
- Jota Maki
-
佐藤大介
- SENIOR FELLOW
- Daisuke Sato
- Daisuke Sato
-
須田万勢
- SENIOR FELLOW
- Masei Suda
- Masei Suda
-
渡邊亮
- SENIOR FELLOW
- Ryo Watanabe
- Ryo Watanabe
RECENT CONTENT
-
Three proposals for the use of generative AI in the medical field
Three proposals for the use of generative AI in the medical field