Patient Health Monitoring in Dementia Using K-Nearest Neighbor Model

Authors

  • Murugesan G
  • Sasikar A

DOI:

https://doi.org/10.65000/hd0e7c94

Keywords:

Dementia, Patient Health Monitoring, k-Nearest Neighbor, Machine Learning, Health Risk Prediction, Personalized Care, Physiological Data

Abstract

Dementia is a progressive neurological condition that severely affects memory, behavior, and everyday functioning, necessitating ongoing surveillance of patients' health state.  Conventional healthcare methods often lack timely treatments owing to restricted real-time data analysis.  This paper presents a patient health monitoring system using the K-Nearest Neighbour (K-NN) classification model to identify and assess essential health metrics in dementia patients.  The system amalgamates sensor-derived physiological data, including heart rate, blood pressure, and activity levels, to categorize patient health situations into normal, warning, or critical categories.  The k-NN method is used for its simplicity, versatility, and efficacy in managing non-linear medical data.  Experimental findings indicate that k-NN provides dependable accuracy in forecasting health hazards, hence assisting carers and healthcare professionals in their decision-making processes.  This methodology enhances patient safety, individualized treatment, and proactive disease management in dementia monitoring.

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Published

30-05-2025

How to Cite

G, M., & Sasikar A. (2025). Patient Health Monitoring in Dementia Using K-Nearest Neighbor Model. International Journal of Modern Computation, Information and Communication Technology, 8(1), 11-17. https://doi.org/10.65000/hd0e7c94