AI enabled RPM for Mental Health Facility
- URL: http://arxiv.org/abs/2301.08828v1
- Date: Fri, 20 Jan 2023 23:47:16 GMT
- Title: AI enabled RPM for Mental Health Facility
- Authors: Thanveer Shaik, Xiaohui Tao, Niall Higgins, Haoran Xie, Raj Gururajan,
Xujuan Zhou
- Abstract summary: This paper discusses an AI-enabled RPM system framework with a non-invasive digital technology RFID using its in-built NCS mechanism to retrieve vital signs and physical actions of patients.
Based on the retrieved time series data, future vital signs of patients for the upcoming 3 hours and classify their physical actions into 10 labelled physical activities.
This framework assists to avoid any unforeseen clinical disasters and take precautionary measures with medical intervention at right time.
- Score: 8.26802516741755
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Mental healthcare is one of the prominent parts of the healthcare industry
with alarming concerns related to patients depression, stress leading to
self-harm and threat to fellow patients and medical staff. To provide a
therapeutic environment for both patients and staff, aggressive or agitated
patients need to be monitored remotely and track their vital signs and physical
activities continuously. Remote patient monitoring (RPM) using non-invasive
technology could enable contactless monitoring of acutely ill patients in a
mental health facility. Enabling the RPM system with AI unlocks a predictive
environment in which future vital signs of the patients can be forecasted. This
paper discusses an AI-enabled RPM system framework with a non-invasive digital
technology RFID using its in-built NCS mechanism to retrieve vital signs and
physical actions of patients. Based on the retrieved time series data, future
vital signs of patients for the upcoming 3 hours and classify their physical
actions into 10 labelled physical activities. This framework assists to avoid
any unforeseen clinical disasters and take precautionary measures with medical
intervention at right time. A case study of a middle-aged PTSD patient treated
with the AI-enabled RPM system is demonstrated in this study.
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