Continuous Physiological Signal Decomposition and Personalised Threshold Calibration: Machine Learning Approaches to Real-Time Chronic Condition Monitoring

Authors

  • Mark Greenfield Associate Professor of Cybersecurity, Edith Cowan University Author

Keywords:

continuous physiological signal decomposition, personalised threshold calibration, machine learning approaches to real-time chronic condition monitoring

Abstract

Machine learning is a scientific discipline combining concepts of computer science and statistics, which is particularly concerned with developing algorithms that evaluate complex data. Machine learning algorithms can be used to decrease complex and high-throughput data into simple communications and to model these communications for advanced decision-making.

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Published

28-02-2025

How to Cite

“Continuous Physiological Signal Decomposition and Personalised Threshold Calibration: Machine Learning Approaches to Real-Time Chronic Condition Monitoring”. Journal of Science & Technology, vol. 6, no. 1, Feb. 2025, pp. 35-44, https://www.thesciencebrigade.com/jst/article/view/701.

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