Patient-Centric Cellular Networks Optimization using Big Data Analytics
Mohammed S. Hadi, Ahmed Q. Lawey, Taisir E. H. El-Gorashi, J. M. H, Elmirghani

TL;DR
This paper introduces a novel big data analytics system for optimizing LTE-A cellular networks tailored to outpatient health monitoring, enhancing data transmission for critical medical conditions with improved fairness and efficiency.
Contribution
It presents the first use of big data analytics for outpatient-centric cellular network optimization, integrating medical data analysis with resource allocation strategies.
Findings
Increased average SINR for outpatients by up to 40.5%.
Proposed approaches improve network fairness and reliability.
Optimized resource allocation enhances critical health data transmission.
Abstract
Big data analytics is one of the state-of-the-art tools to optimize networks and transform them from merely being a blind tube that conveys data, into a cognitive, conscious, and self-optimizing entity that can intelligently adapt according to the needs of its users. This, in fact, can be regarded as one of the highest forthcoming priorities of future networks. In this paper, we propose a system for Out-Patient (OP) centric Long Term Evolution-Advanced (LTE-A) network optimization. Big data harvested from the OPs' medical records, along with current readings from their body sensors are processed and analyzed to predict the likelihood of a life-threatening medical condition, for instance, an imminent stroke. This prediction is used to ensure that the OP is assigned an optimal LTE-A Physical Resource Blocks (PRBs) to transmit their critical data to their healthcare provider with minimal…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Wireless Body Area Networks · Artificial Intelligence in Healthcare
