Autonomous Mobile Clinics: Empowering Affordable Anywhere Anytime
Healthcare Access
- URL: http://arxiv.org/abs/2204.04841v3
- Date: Tue, 6 Sep 2022 04:20:06 GMT
- Title: Autonomous Mobile Clinics: Empowering Affordable Anywhere Anytime
Healthcare Access
- Authors: Shaoshan Liu, Yuzhang Huang, Leiyu Shi
- Abstract summary: An autonomous mobile clinic solves the healthcare access problem by bringing healthcare services to the patient by the order of the patient's fingertips.
In stage one, we focus on solving the inequity challenge in the existing healthcare system by combining autonomous mobility and telemedicine.
In stage two, we develop an AI doctor for primary care, which we foster from infancy to adulthood with clean healthcare data.
In stage three, after we have proven that the autonomous mobile clinic network can truly solve the target clinical use cases, we shall open up the platform for all medical verticals.
- Score: 1.3858051019755282
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We are facing a global healthcare crisis today as the healthcare cost is ever
climbing, but with the aging population, government fiscal revenue is ever
dropping. To create a more efficient and effective healthcare system, three
technical challenges immediately present themselves: healthcare access,
healthcare equity, and healthcare efficiency. An autonomous mobile clinic
solves the healthcare access problem by bringing healthcare services to the
patient by the order of the patient's fingertips. Nevertheless, to enable a
universal autonomous mobile clinic network, a three-stage technical roadmap
needs to be achieved: In stage one, we focus on solving the inequity challenge
in the existing healthcare system by combining autonomous mobility and
telemedicine. In stage two, we develop an AI doctor for primary care, which we
foster from infancy to adulthood with clean healthcare data. With the AI
doctor, we can solve the inefficiency problem. In stage three, after we have
proven that the autonomous mobile clinic network can truly solve the target
clinical use cases, we shall open up the platform for all medical verticals,
thus enabling universal healthcare through this whole new system.
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