Multivariate Modelling and Prediction of High-Frequency Sensor-Based Cerebral Physiologic Signals: Narrative Review of Machine Learning Methodologies.

Journal: Sensors (Basel, Switzerland)
PMID:

Abstract

Monitoring cerebral oxygenation and metabolism, using a combination of invasive and non-invasive sensors, is vital due to frequent disruptions in hemodynamic regulation across various diseases. These sensors generate continuous high-frequency data streams, including intracranial pressure (ICP) and cerebral perfusion pressure (CPP), providing real-time insights into cerebral function. Analyzing these signals is crucial for understanding complex brain processes, identifying subtle patterns, and detecting anomalies. Computational models play an essential role in linking sensor-derived signals to the underlying physiological state of the brain. Multivariate machine learning models have proven particularly effective in this domain, capturing intricate relationships among multiple variables simultaneously and enabling the accurate modeling of cerebral physiologic signals. These models facilitate the development of advanced diagnostic and prognostic tools, promote patient-specific interventions, and improve therapeutic outcomes. Additionally, machine learning models offer great flexibility, allowing different models to be combined synergistically to address complex challenges in sensor-based data analysis. Ensemble learning techniques, which aggregate predictions from diverse models, further enhance predictive accuracy and robustness. This review explores the use of multivariate machine learning models in cerebral physiology as a whole, with an emphasis on sensor-derived signals related to hemodynamics, cerebral oxygenation, metabolism, and other modalities such as electroencephalography (EEG) and functional near-infrared spectroscopy (fNIRS) where applicable. It will detail the operational principles, mathematical foundations, and clinical implications of these models, providing a deeper understanding of their significance in monitoring cerebral function.

Authors

  • Nuray Vakitbilir
    Biomedical Engineering, Price Faculty of Engineering, University of Manitoba, Winnipeg, Canada. Electronic address: vakitbir@myumanitoba.ca.
  • Abrar Islam
    Biomedical Engineering, Price Faculty of Engineering, University of Manitoba, Winnipeg, Canada.
  • Alwyn Gomez
    Section of Neurosurgery, Department of Surgery, Rady Faculty of Health Sciences, University of Manitoba, Winnipeg, Canada; Department of Human Anatomy and Cell Science, Rady Faculty of Health Sciences, University of Manitoba, Winnipeg, Canada.
  • Kevin Y Stein
    Biomedical Engineering, Price Faculty of Engineering, University of Manitoba, Winnipeg, Canada.
  • Logan Froese
    Biomedical Engineering, Price Faculty of Engineering, University of Manitoba, Winnipeg, Canada.
  • Tobias Bergmann
    Undergraduate Engineering, Price Faculty of Engineering, University of Manitoba, Winnipeg, Canada.
  • Amanjyot Singh Sainbhi
    Biomedical Engineering, Price Faculty of Engineering, University of Manitoba, Winnipeg, Canada.
  • Davis McClarty
    Undergraduate Medicine, College of Medicine, Rady Faculty of Health Sciences, Winnipeg, MB R3E 3P5, Canada.
  • Rahul Raj
    Department of Neurosurgery, Helsinki University Hospital and University of Helsinki, Topeliuksenkatu 5, PB 266, 00029 HUS, Helsinki, Finland. rahul.raj@hus.fi.
  • Frederick A Zeiler
    Division of Anaesthesia, Addenbrooke's Hospital, University of Cambridge, Cambridge, UK. umzeiler@myumanitoba.ca.