Urinary Tract Infection Detection in Digital Remote Monitoring: Strategies for Managing Participant-Specific Prediction Complexity
Kexin Fan, Alexander Capstick, Ramin Nilforooshan, Payam Barnaghi

TL;DR
This study enhances machine learning models for early urinary tract infection detection in people with dementia by improving accuracy and fairness using participant-specific data handling and multitask learning techniques.
Contribution
It introduces refined model designs, especially loss-dependent MLP, that better manage data variability and improve sex fairness in UTI prediction.
Findings
Validation precision increased from 48.92% to 72.60%.
Sensitivity improved from 27.44% to 70.52%.
Models demonstrated improved fairness across sexes.
Abstract
Urinary tract infections (UTIs) are a significant health concern, particularly for people living with dementia (PLWD), as they can lead to severe complications if not detected and treated early. This study builds on previous work that utilised machine learning (ML) to detect UTIs in PLWD by analysing in-home activity and physiological data collected through low-cost, passive sensors. The current research focuses on improving the performance of previous models, particularly by refining the Multilayer Perceptron (MLP), to better handle variations in home environments and improve sex fairness in predictions by making use of concepts from multitask learning. This study implemented three primary model designs: feature clustering, loss-dependent clustering, and participant ID embedding which were compared against a baseline MLP model. The results demonstrated that the loss-dependent MLP…
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Taxonomy
TopicsData-Driven Disease Surveillance
