Indexing the Event Calculus with Kd-trees to Monitor Diabetes
Stefano Bromuri, Albert Brugues de la Torre, Fabien Duboisson, and Michael Schumacher

TL;DR
This paper introduces ekd, an extension of event calculus using kd-trees to efficiently index and query large streams of diabetic patient data, aiding doctors in monitoring and decision-making.
Contribution
It presents ekd, a novel event calculus extension that leverages kd-trees for scalable indexing of physiological time series data in diabetes monitoring.
Findings
ekd improves scalability over existing event calculus methods.
Indexing with kd-trees enhances query performance for large event streams.
The approach supports a graphical interface for medical rule representation.
Abstract
Personal Health Systems (PHS) are mobile solutions tailored to monitoring patients affected by chronic non communicable diseases. A patient affected by a chronic disease can generate large amounts of events. Type 1 Diabetic patients generate several glucose events per day, ranging from at least 6 events per day (under normal monitoring) to 288 per day when wearing a continuous glucose monitor (CGM) that samples the blood every 5 minutes for several days. This is a large number of events to monitor for medical doctors, in particular when considering that they may have to take decisions concerning adjusting the treatment, which may impact the life of the patients for a long time. Given the need to analyse such a large stream of data, doctors need a simple approach towards physiological time series that allows them to promptly transfer their knowledge into queries to identify interesting…
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Taxonomy
TopicsData Management and Algorithms · Advanced Database Systems and Queries · Logic, Reasoning, and Knowledge
