A Large Medical Model based on Visual Physiological Monitoring for Public Health
- URL: http://arxiv.org/abs/2406.07558v1
- Date: Sun, 21 Apr 2024 04:37:24 GMT
- Title: A Large Medical Model based on Visual Physiological Monitoring for Public Health
- Authors: Bin Huang, Changchen Zhao, Zimeng Liu, Shenda Hong, Baochang Zhang, Wenjin Wang, Hui Liu,
- Abstract summary: We outline a prospective framework and vision for a public health large medical model (PHLMM) utilizing visual-based physiological monitoring (VBPM) technology.
The PHLMM can be considered as a "convenient and universal" framework for public health, advancing the United Nations' "Sustainable Development Goals 2030"
This paper provides an outlook on the crucial application prospects of PHLMM in response to public health challenges and its significant role in the field of AI for medicine (AI4medicine)
- Score: 31.398153756579685
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The widespread outbreak of the COVID-19 pandemic has sounded a warning about the globalization challenges in public health. In this context, the establishment of large-scale public health datasets, of medical models, and of decision-making systems with a human-centric approach holds strategic significance. Recently, groundbreaking advancements have emerged in AI methods for physiological signal monitoring and disease diagnosis based on camera sensors. These approaches, requiring no specialized medical equipment, offer convenient manners of collecting large-scale medical data in response to public health events. Not only do these methods facilitate the acquisition of unbiased datasets, but also enable the development of fair large medical models (LMMs). Therefore, we outline a prospective framework and heuristic vision for a public health large medical model (PHLMM) utilizing visual-based physiological monitoring (VBPM) technology. The PHLMM can be considered as a "convenient and universal" framework for public health, advancing the United Nations' "Sustainable Development Goals 2030", particularly in its promotion of Universal Health Coverage (UHC) in low- and middle-income countries. Furthermore, this paper provides an outlook on the crucial application prospects of PHLMM in response to public health challenges and its significant role in the field of AI for medicine (AI4medicine). In summary, PHLMM serves as a solution for constructing a large-scale medical database and LMM, eliminating the issue of dataset bias and unfairness in AI models. The outcomes will contribute to the establishment of an LMM framework for public health, acting as a crucial bridge for advancing AI4medicine.
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