Smart Health Informatics Platform for Predictive Diagnosis
and Resource Optimization in Rural U.S. Communities
Affiliations
1
Chemistry, National University(Govt. Rajendra College), Faridpur sadar, Faridpur-7800,
Faridpur, N/A
Abstract
This study presents a smart predictive healthcare framework tailored to support individuals
in the United States living with chronic conditions, especially those receiving care at home.
The framework incorporates a deep learning model that analyzes large volumes of patient
data, including vital signs, physical activity, medication usage, and symptoms. These data
are collected through ambient assisted living technologies. The model is part of an
intelligent module that operates at the patient’s location to deliver accurate health status
predictions and personalized care recommendations. The framework was tested using data
from patients with chronic blood pressure conditions, collected every 15 minutes over one
year. The proposed model achieved a prediction accuracy of approximately 97.6% %
outperforming a standard baseline model by nearly 6%. Additionally, improvements in
identifying critical health events were observed, with the F score increasing by 9% for
hypertensive, 26% for hypotensive, and 10% for normotensive cases. These results
demonstrate the model’s effectiveness in detecting early warning signs and enhancing the
management of chronic diseases. The framework shows strong potential for improving
healthcare access and reducing emergency risks in rural and underserved communities
across the United States.
Keywords:
Smart healthcare framework, Chronic disease management, Deep learning
model, Remote patient monitoring, Vital signs prediction, Rural healthcare optimization